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<volume id="W17">
  <paper id="5200">
    <title>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</title>
    <editor>Alexandra Balahur</editor>
    <editor>Saif M. Mohammad</editor>
    <editor>Erik van der Goot</editor>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <url>http://www.aclweb.org/anthology/W17-52</url>
    <bibtype>book</bibtype>
    <bibkey>WASSA2017:2017</bibkey>
  </paper>

  <paper id="5201">
    <title>Detecting Sarcasm Using Different Forms Of Incongruity</title>
    <author><first>Aditya</first><last>Joshi</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>1</pages>
    <url>http://www.aclweb.org/anthology/W17-5201</url>
    <abstract>Sarcasm is a form of verbal irony that is intended to express contempt or
	ridicule. Often quoted as a challenge to sentiment analysis, sarcasm involves
	use of words of positive or no polarity to convey negative sentiment.
	Incongruity has been observed to be at the heart of sarcasm understanding in
	humans. Our work in sarcasm detection identifies different forms of incongruity
	and employs different machine learning techniques to capture them. This talk
	will describe the approach, datasets and challenges in sarcasm detection using
	different forms of incongruity. 
	We identify two forms of incongruity: incongruity which can be understood based
	on the target text and common background knowledge, and incongruity which can
	be understood based on the target text and additional, specific context. The
	former involves use of sentiment-based features, word embeddings, and topic
	models. The latter involves creation of author's historical context based on
	their historical data, and creation of conversational context for sarcasm
	detection of dialogue.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>joshi:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5202">
    <title>Assessing State-of-the-Art Sentiment Models on State-of-the-Art Sentiment Datasets</title>
    <author><first>Jeremy</first><last>Barnes</last></author>
    <author><first>Roman</first><last>Klinger</last></author>
    <author><first>Sabine</first><last>Schulte im Walde</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>2&#8211;12</pages>
    <url>http://www.aclweb.org/anthology/W17-5202</url>
    <abstract>There has been a good amount of progress in sentiment analysis over
	  the past 10 years, including the proposal of new methods and the
	  creation of benchmark datasets. In some papers, however, there is a
	  tendency to compare models only on one or two datasets, either
	  because of time restraints or because the model is tailored to a
	  specific task. Accordingly, it is hard to understand how well a
	  certain model generalizes across different tasks and datasets. In
	  this paper, we contribute to this situation by comparing several
	  models on six different benchmarks, which belong to different
	  domains and additionally have different levels of granularity
	  (binary, 3-class, 4-class and 5-class). We show that Bi-LSTMs
	  perform well across datasets and that both LSTMs and Bi-LSTMs are
	  particularly good at fine-grained sentiment tasks (ė, with more
	  than two classes). Incorporating sentiment information
	  into word embeddings during training gives good results for datasets
	  that are lexically similar to the training data. With our
	  experiments, we contribute to a better understanding of the
	  performance of different model architectures on different data
	  sets. Consequently, we detect
	  novel state-of-the-art results on the ėxtitSenTube datasets.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>barnes-klinger-schulteimwalde:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5203">
    <title>Annotation, Modelling and Analysis of Fine-Grained Emotions on a Stance and Sentiment Detection Corpus</title>
    <author><first>Hendrik</first><last>Schuff</last></author>
    <author><first>Jeremy</first><last>Barnes</last></author>
    <author><first>Julian</first><last>Mohme</last></author>
    <author><first>Sebastian</first><last>Pad&#243;</last></author>
    <author><first>Roman</first><last>Klinger</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>13&#8211;23</pages>
    <url>http://www.aclweb.org/anthology/W17-5203</url>
    <abstract>There is a rich variety of data sets for sentiment analysis
	  (viz.,~polarity and subjectivity classification). For the more
	  challenging task of detecting discrete emotions following the
	  definitions of Ekman and Plutchik, however, there are much fewer
	  data sets, and notably no resources for the social media
	  domain. This paper contributes to closing this gap by extending the
	  ėxtit{SemEval 2016 stance and sentiment dataset} with emotion
	  annotation. We (a) analyse annotation reliability and annotation
	  merging; (b) investigate the relation between emotion annotation and
	  the other annotation layers (stance, sentiment); (c) report
	  modelling results as a baseline for future work.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>schuff-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5204">
    <title>Ranking Right-Wing Extremist Social Media Profiles by Similarity to Democratic and Extremist Groups</title>
    <author><first>Matthias</first><last>Hartung</last></author>
    <author><first>Roman</first><last>Klinger</last></author>
    <author><first>Franziska</first><last>Schmidtke</last></author>
    <author><first>Lars</first><last>Vogel</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>24&#8211;33</pages>
    <url>http://www.aclweb.org/anthology/W17-5204</url>
    <abstract>Social media are used by an increasing number of political actors. A
	small subset of these is interested in pursuing extremist motives
	such as mobilization, recruiting or radicalization activities. In
	order to counteract these trends, online providers and state
	institutions reinforce their monitoring efforts, mostly relying on
	manual workflows. We propose a machine learning approach
	to support manual attempts towards identifying right-wing extremist
	content in German Twitter profiles. Based on a fine-grained
	conceptualization of right-wing extremism, we frame the task as
	ranking each individual profile on a continuum spanning different
	degrees of right-wing extremism, based on a nearest neighbour
	approach. A quantitative evaluation reveals that our ranking model
	yields robust performance (up to 0.81 F$_1$ score) when being used
	for predicting discrete class labels. At the same time, the model 
	provides plausible continuous ranking scores for a small
	sample of borderline cases at the division of right-wing extremism 
	and New Right political movements.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>hartung-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5205">
    <title>WASSA-2017 Shared Task on Emotion Intensity</title>
    <author><first>Saif</first><last>Mohammad</last></author>
    <author><first>Felipe</first><last>Bravo-Marquez</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>34&#8211;49</pages>
    <url>http://www.aclweb.org/anthology/W17-5205</url>
    <abstract>We present the first shared task on detecting the intensity of emotion felt by
	the speaker of a tweet. We create the first datasets of tweets annotated for
	anger, fear, joy, and sadness intensities using a technique called best&#8211;worst
	scaling (BWS). We show that the annotations lead to reliable fine-grained
	intensity scores (rankings of tweets by intensity). The data was partitioned
	into training, development, and test sets for the competition. Twenty-two
	teams participated in the shared task, with the best system obtaining a Pearson
	correlation of 0.747 with the gold intensity scores. We summarize the machine
	learning setups, resources, and tools used by the participating teams, with a
	focus on the techniques and resources that are particularly useful for the
	task. The emotion intensity dataset and the shared task are helping improve our
	understanding of how we convey more or less intense emotions through language.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>mohammad-bravomarquez:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5206">
    <title>IMS at EmoInt-2017: Emotion Intensity Prediction with Affective Norms, Automatically Extended Resources and Deep Learning</title>
    <author><first>Maximilian</first><last>K&#246;per</last></author>
    <author><first>Evgeny</first><last>Kim</last></author>
    <author><first>Roman</first><last>Klinger</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>50&#8211;57</pages>
    <url>http://www.aclweb.org/anthology/W17-5206</url>
    <abstract>Our submission to the WASSA-2017 shared task on the prediction of emotion
	intensity in tweets is a supervised learning method with extended lexicons of
	affective norms. We combine three main information sources in a random forrest
	regressor, namely (1), manually created resources, (2) automatically extended
	lexicons, and (3) the output of a neural network (CNN-LSTM) for sentence
	regression. All three feature sets perform similarly well in isolation (≈ .67
	macro average Pearson correlation). The combination achieves .72 on the
	official test set (ranked 2nd out of 22 participants). Our analysis reveals
	that performance is increased by providing cross-emotional intensity
	predictions. The
	automatic extension of lexicon features benefit from domain specific
	embeddings.
	Complementary ratings for affective norms increase the impact of lexicon
	features. Our resources (ratings for 1.6 million twitter specific words) and
	our implementation is publicly available at
	http://www.ims.uni-stuttgart.de/data/imsėmoint.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>koper-kim-klinger:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5207">
    <title>Prayas at EmoInt 2017: An Ensemble of Deep Neural Architectures for Emotion Intensity Prediction in Tweets</title>
    <author><first>Pranav</first><last>Goel</last></author>
    <author><first>Devang</first><last>Kulshreshtha</last></author>
    <author><first>Prayas</first><last>Jain</last></author>
    <author><first>Kaushal Kumar</first><last>Shukla</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>58&#8211;65</pages>
    <url>http://www.aclweb.org/anthology/W17-5207</url>
    <abstract>The paper describes the best performing system for EmoInt - a shared task to
	predict the intensity of emotions in tweets. Intensity is a real valued score,
	between 0 and 1. The emotions are classified as - anger, fear, joy and sadness.
	We apply three different deep neural network based models, which approach the
	problem from essentially different directions. Our final performance quantified
	by an average pearson correlation score of 74.7 and an average spearman
	correlation score of 73.5 is obtained using an ensemble of the three models. We
	outperform the baseline model of the shared task by 9.9% and 9.4% pearson and
	spearman correlation scores respectively.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>jain-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5208">
    <title>Latest News in Computational Argumentation: Surfing on the Deep Learning Wave, Scuba Diving in the Abyss of Fundamental Questions</title>
    <author><first>Iryna</first><last>Gurevych</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>66</pages>
    <url>http://www.aclweb.org/anthology/W17-5208</url>
    <abstract>Mining arguments from natural language texts, parsing argumentative structures,
	and assessing argument quality are among the recent challeng-es tackled in
	computational argumentation. While advanced deep learning models provide
	state-of-the-art performance in many of these tasks, much attention is also
	paid to the underly-ing fundamental questions. How are arguments expressed in
	natural language across genres and domains? What is the essence of an
	argument's claim? Can we reliably annotate convincingness of an argument? How
	can we approach logic and common-sense reasoning in argumentation? This talk
	highlights some recent advances in computa-tional argumentation and shows why
	researchers must be both "surfers" and "scuba divers".</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>gurevych:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5209">
    <title>Towards Syntactic Iberian Polarity Classification</title>
    <author><first>David</first><last>Vilares</last></author>
    <author><first>Marcos</first><last>Garcia</last></author>
    <author><first>Miguel A.</first><last>Alonso</last></author>
    <author><first>Carlos</first><last>G&#243;mez-Rodr&#237;guez</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>67&#8211;73</pages>
    <url>http://www.aclweb.org/anthology/W17-5209</url>
    <abstract>Lexicon-based methods using syntactic rules for polarity classification rely on
	parsers that are dependent on the language and on  treebank guidelines. Thus,
	rules are also dependent and require adaptation, especially in multilingual
	scenarios. We tackle this challenge in the context of the Iberian Peninsula,
	releasing the first symbolic syntax-based Iberian system with rules shared
	across five official languages: Basque, Catalan, Galician, Portuguese and
	Spanish. The model is made available.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>vilares-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5210">
    <title>Toward Stance Classification Based on Claim Microstructures</title>
    <author><first>Filip</first><last>Boltuzic</last></author>
    <author><first>Jan</first><last>&#x160;najder</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>74&#8211;80</pages>
    <url>http://www.aclweb.org/anthology/W17-5210</url>
    <abstract>Claims are the building blocks of arguments and the reasons underpinning
	opinions, thus analyzing claims is important for both argumentation mining and
	opinion mining. We propose a framework for representing claims as
	microstructures, which express the beliefs, judgments, and policies about the
	relations between domain-specific concepts. In a proof-of-concept study, we
	manually build microstructures for over 800 claims extracted from an online
	debate. We test the so-obtained microstructures on the task of claim stance
	classification, achieving considerable improvements over text-based baselines.
	Author{1}Affiliation</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>boltuzic-vsnajder:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5211">
    <title>Linguistic Reflexes of Well-Being and Happiness in Echo</title>
    <author><first>Jiaqi</first><last>Wu</last></author>
    <author><first>Marilyn</first><last>Walker</last></author>
    <author><first>Pranav</first><last>Anand</last></author>
    <author><first>Steve</first><last>Whittaker</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>81&#8211;91</pages>
    <url>http://www.aclweb.org/anthology/W17-5211</url>
    <abstract>Different theories posit different sources for feelings of well-being and
	happiness.  Appraisal theory grounds our emotional responses in our goals and
	desires and their fulfillment, or lack of fulfillment. Self-Determination
	theory posits that the basis for well-being rests on our assessments of our
	competence, autonomy and social connection. And surveys that measure happiness
	empirically note that people require their basic needs to be met for food and
	shelter, but beyond that tend to be happiest when socializing, eating or having
	sex. We analyze a corpus of private micro-blogs from a well-being application
	called Echo, where users label each written post about daily events with a
	happiness score between 1 and 9.  Our goal is to ground the linguistic
	descriptions of events that users experience in theories of well-being and
	happiness, and then examine the extent to which different theoretical accounts
	can explain the variance in the happiness scores.  We show that recurrent event
	types, such as obligation and
	incompetence, which affect people's feelings of well-being are not captured in
	current lexical or semantic resources.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>wu-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5212">
    <title>Forecasting Consumer Spending from Purchase Intentions Expressed on Social Media</title>
    <author><first>Viktor</first><last>Pekar</last></author>
    <author><first>Jane</first><last>Binner</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>92&#8211;101</pages>
    <url>http://www.aclweb.org/anthology/W17-5212</url>
    <abstract>Consumer spending is an important macroeconomic indicator that is used by
	policy-makers to judge the health of an economy. In this paper we present a
	novel method for predicting future consumer spending from social media data. In
	contrast to previous work that largely relied on sentiment analysis, the
	proposed method models consumer spending from purchase intentions found on
	social media. Our experiments with time series analysis models and
	machine-learning regression models reveal utility of this data for making
	short-term forecasts of consumer spending: for three- and seven-day horizons,
	prediction variables derived from social media help to improve forecast
	accuracy by 11% to 18% for all the three models, in comparison to models that
	used only autoregressive predictors.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>pekar-binner:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5213">
    <title>Mining fine-grained opinions on closed captions of YouTube videos with an attention-RNN</title>
    <author><first>Edison</first><last>Marrese-Taylor</last></author>
    <author><first>Jorge</first><last>Balazs</last></author>
    <author><first>Yutaka</first><last>Matsuo</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>102&#8211;111</pages>
    <url>http://www.aclweb.org/anthology/W17-5213</url>
    <abstract>Video reviews are the natural evolution of written product reviews. In this
	paper we target this phenomenon and introduce the first dataset created from
	closed captions of YouTube product review videos as well as a new attention-RNN
	model for aspect extraction and joint aspect extraction and sentiment
	classification. Our model provides state-of-the-art performance on aspect
	extraction without requiring the usage of hand-crafted features on the SemEval
	ABSA corpus, while it outperforms the baseline on the joint task. In our
	dataset, the attention-RNN model outperforms the baseline for both tasks, but
	we observe important performance drops for all models in comparison to SemEval.
	These results, as well as further experiments on domain adaptation for aspect
	extraction, suggest that differences between speech and written text, which
	have been discussed extensively in the literature, also extend to the domain of
	product reviews, where they are relevant for fine-grained opinion mining.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>marresetaylor-balazs-matsuo:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5214">
    <title>Understanding human values and their emotional effect</title>
    <author><first>Alexandra</first><last>Balahur</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>112</pages>
    <url>http://www.aclweb.org/anthology/W17-5214</url>
    <abstract>Emotions can be triggered by various factors. According to the Appraisal
	Theories (De Rivera, 1977; Frijda, 1986; Ortony et al., 1988; Johnson-Laird and
	Oatley, 1989) emotions are elicited and differentiated on the basis of the
	cognitive evaluation of the personal significance of a situation, object or
	event based on "appraisal criteria" (intrinsic characteristics of objects
	and events, significance of events to individual needs and goals,
	individual’s ability to cope with the consequences of the event,
	compatibility of event with social or personal standards, norms and values).
	These differences in values can trigger reactions such as anger, disgust
	(contempt), sadness, etc., because these behaviors are evaluated by the public
	as being incompatible with their social/personal standards, norms or values. 
	Such arguments are frequently present both in mainstream media, as well as
	social media, building a society-wide view, attitude and emotional reaction
	towards refugees/immigrants. In this demo, I will talk about experiments to
	annotate and detect factual arguments that are linked to human
	needs/motivations from text and in consequence trigger emotion in the media
	audience and propose a new task for next year's WASSA.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>balahur:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5215">
    <title>Did you ever read about Frogs drinking Coffee? Investigating the Compositionality of Multi-Emoji Expressions</title>
    <author><first>Rebeca</first><last>Padilla L&#243;pez</last></author>
    <author><first>Fabienne</first><last>Cap</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>113&#8211;117</pages>
    <url>http://www.aclweb.org/anthology/W17-5215</url>
    <abstract>In this work, we present a first attempt to investigate multi-emoji expressions
	and whether they behave similarly to multiword expressions in terms of
	non-compositionality. We focus on the combination of the frog and the hot
	beverage emoji, but also show some preliminary results for other
	non-compositional emoji combinations. We use off-the-shelf sentiment analysers
	as well as manual classifications to approach the compositionality of these
	emoji combinations.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>padillalopez-cap:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5216">
    <title>Investigating Redundancy in Emoji Use: Study on a Twitter Based Corpus</title>
    <author><first>Giulia</first><last>Donato</last></author>
    <author><first>Patrizia</first><last>Paggio</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>118&#8211;126</pages>
    <url>http://www.aclweb.org/anthology/W17-5216</url>
    <abstract>In this paper we present an annotated corpus created with the aim of analyzing
	the
	informative behaviour of emoji &#8211; an issue of importance for sentiment
	analysis and
	natural language processing. The corpus consists of 2475 tweets all containing
	at
	least one emoji, which has been annotated using one of the three possible
	classes: Redundant, Non Redundant, and Non Redundant + POS. We explain how the
	corpus
	was collected, describe the annotation procedure and the interface developed
	for the task. We provide an analysis of the corpus, considering also possible
	predictive features, discuss the problematic aspects of the annotation, and
	suggest future improvements.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>donato-paggio:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5217">
    <title>Modeling Temporal Progression of Emotional Status in Mental Health Forum: A Recurrent Neural Net Approach</title>
    <author><first>Kishaloy</first><last>Halder</last></author>
    <author><first>Lahari</first><last>Poddar</last></author>
    <author><first>Min-Yen</first><last>Kan</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>127&#8211;135</pages>
    <url>http://www.aclweb.org/anthology/W17-5217</url>
    <abstract>Patients turn to Online Health Communities not only for information on specific
	conditions but also for emotional support. Previous research has indicated that
	the progression of emotional status can be studied through the linguistic
	patterns of an individual's posts.  We analyze a real-world dataset from the
	Mental Health section of HealthBoards.com. Estimated from the word usages in
	their posts, we find that the emotional progress across patients vary widely.
	We study the problem of predicting a patient's emotional status in the future
	from her past posts and we propose a Recurrent Neural Network (RNN) based
	architecture to address it.  We find that the future emotional status can be
	predicted with reasonable accuracy given her historical posts and participation
	features. Our evaluation results demonstrate the efficacy of our proposed
	architecture, by outperforming state-of-the-art approaches with over 0.13
	reduction in Mean Absolute Error.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>halder-poddar-kan:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5218">
    <title>Towards an integrated pipeline for aspect-based sentiment analysis in various domains</title>
    <author><first>Orphee</first><last>De Clercq</last></author>
    <author><first>Els</first><last>Lefever</last></author>
    <author><first>Gilles</first><last>Jacobs</last></author>
    <author><first>Tijl</first><last>Carpels</last></author>
    <author><first>Veronique</first><last>Hoste</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>136&#8211;142</pages>
    <url>http://www.aclweb.org/anthology/W17-5218</url>
    <abstract>This paper presents an integrated ABSA pipeline for Dutch that has been
	developed and tested on qualitative user feedback coming from three domains:
	retail, banking and human resources. The two latter domains provide
	service-oriented data, which has not been investigated before in ABSA. By
	performing in-domain and cross-domain experiments the validity of our approach
	was investigated. We show promising results for the three ABSA subtasks, aspect
	term extraction, aspect category classification and aspect polarity
	classification.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>declercq-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5219">
    <title>Building a SentiWordNet for Odia</title>
    <author><first>Gaurav</first><last>Mohanty</last></author>
    <author><first>Abishek</first><last>Kannan</last></author>
    <author><first>Radhika</first><last>Mamidi</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>143&#8211;148</pages>
    <url>http://www.aclweb.org/anthology/W17-5219</url>
    <abstract>As a discipline of Natural Language Processing, Sentiment Analysis is used to
	extract and analyze subjective information present in natural language data.
	The task of Sentiment Analysis has acquired wide commercial uses including
	social media monitoring tasks, survey responses, review systems, etc. Languages
	like English have several resources which aid in the task of Sentiment
	Analysis. SentiWordNet and Subjectivity WordList are examples of such tools and
	resources. With more data being available in native vernacular,
	language-specific SentiWordNet(s) have become essential. For resource poor
	languages, creating such SentiWordNet(s) is a difficult task to achieve. One
	solution is to use available resources in English and translate the final
	source lexicon to target lexicon via machine translation. Machine translation
	systems for the English-Odia language pair have not yet been developed. In this
	paper, we discuss a method to create a SentiWordNet for Odia, which is
	resource-poor, by only using resources which are currently available for Indian
	languages. The lexicon created, would serve as a tool for Sentiment Analysis
	related task specific to Odia data.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>mohanty-kannan-mamidi:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5220">
    <title>Lexicon Integrated CNN Models with Attention for Sentiment Analysis</title>
    <author><first>Bonggun</first><last>Shin</last></author>
    <author><first>Timothy</first><last>Lee</last></author>
    <author><first>Jinho D.</first><last>Choi</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>149&#8211;158</pages>
    <url>http://www.aclweb.org/anthology/W17-5220</url>
    <abstract>With the advent of word embeddings, lexicons are no longer fully utilized for
	sentiment analysis although they still provide important features in the
	traditional setting. This paper introduces a novel approach to sentiment
	analysis that integrates lexicon embeddings and an attention mechanism into
	Convolutional Neural Networks. Our approach performs separate convolutions for
	word and lexicon embeddings and provides a global view of the document using
	attention. Our models are experimented on both the SemEval'16 Task 4 dataset
	and the Stanford Sentiment Treebank and show comparative or better results
	against the existing state-of-the-art systems. Our analysis shows that lexicon
	embeddings allow building high-performing models with much smaller word
	embeddings, and the attention mechanism effectively dims out noisy words for
	sentiment analysis.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>shin-lee-choi:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5221">
    <title>Explaining Recurrent Neural Network Predictions in Sentiment Analysis</title>
    <author><first>Leila</first><last>Arras</last></author>
    <author><first>Gr&#233;goire</first><last>Montavon</last></author>
    <author><first>Klaus-Robert</first><last>M&#252;ller</last></author>
    <author><first>Wojciech</first><last>Samek</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>159&#8211;168</pages>
    <url>http://www.aclweb.org/anthology/W17-5221</url>
    <abstract>Recently, a technique called Layer-wise
	Relevance Propagation (LRP) was shown
	to deliver insightful explanations in the
	form of input space relevances for un-
	derstanding feed-forward neural network
	classification decisions. In the present
	work, we extend the usage of LRP to
	recurrent neural networks. We propose
	a specific propagation rule applicable to
	multiplicative connections as they arise
	in recurrent network architectures such
	as LSTMs and GRUs. We apply our
	technique to a word-based bi-directional
	LSTM model on a five-class sentiment
	prediction task, and evaluate the result-
	ing LRP relevances both qualitatively and
	quantitatively, obtaining better results than
	a gradient-based related method which
	was used in previous work.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>arras-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5222">
    <title>GradAscent at EmoInt-2017: Character and Word Level Recurrent Neural Network Models for Tweet Emotion Intensity Detection</title>
    <author><first>Egor</first><last>Lakomkin</last></author>
    <author><first>Chandrakant</first><last>Bothe</last></author>
    <author><first>Stefan</first><last>Wermter</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>169&#8211;174</pages>
    <url>http://www.aclweb.org/anthology/W17-5222</url>
    <abstract>The WASSA 2017 EmoInt shared task has
	the goal to predict emotion intensity values
	of tweet messages. Given the text of
	a tweet and its emotion category (anger,
	joy, fear, and sadness), the participants
	were asked to build a system that assigns
	emotion intensity values. Emotion intensity
	estimation is a challenging problem
	given the short length of the tweets, the
	noisy structure of the text and the lack
	of annotated data. To solve this problem,
	we developed an ensemble of two neural
	models, processing input on the character.
	and word-level with a lexicon-driven
	system. The correlation scores across all
	four emotions are averaged to determine
	the bottom-line competition metric, and
	our system ranks place forth in full intensity
	range and third in 0.5-1 range of intensity
	among 23 systems at the time of
	writing (June 2017).</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>lakomkin-bothe-wermter:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5223">
    <title>NUIG at EmoInt-2017: BiLSTM and SVR Ensemble to Detect Emotion Intensity</title>
    <author><first>Vladimir</first><last>Andryushechkin</last></author>
    <author><first>Ian</first><last>Wood</last></author>
    <author><first>James</first><last>O' Neill</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>175&#8211;179</pages>
    <url>http://www.aclweb.org/anthology/W17-5223</url>
    <abstract>This paper describes the entry NUIG in the WASSA 2017 (8th Workshop on
	Computational Approaches to Subjectivity, Sentiment &#38; Social Media Analysis)
	shared task on emotion recognition.
	The NUIG system used an SVR (SVM regression) and BLSTM ensemble, utilizing
	primarily n-grams (for SVR features) and tweet word embeddings (for BLSTM
	features). Experiments were carried out on several other candidate features,
	some of which were added to the SVR model. 
	Parameter selection for the SVR model was run as a grid search whilst
	parameters for the BLSTM model were selected through a non-exhaustive ad-hoc
	search.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>andryushechkin-wood-oneill:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5224">
    <title>Unsupervised Aspect Term Extraction with B-LSTM &#38; CRF using Automatically Labelled Datasets</title>
    <author><first>Athanasios</first><last>Giannakopoulos</last></author>
    <author><first>Claudiu</first><last>Musat</last></author>
    <author><first>Andreea</first><last>Hossmann</last></author>
    <author><first>Michael</first><last>Baeriswyl</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>180&#8211;188</pages>
    <url>http://www.aclweb.org/anthology/W17-5224</url>
    <abstract>Aspect Term Extraction (ATE) identifies opinionated aspect terms in texts and
	is one of the tasks in the SemEval Aspect Based Sentiment Analysis (ABSA)
	contest. The small amount of available datasets for supervised ATE and the
	costly human annotation for aspect term labelling give rise to the need for
	unsupervised ATE. In this paper, we introduce an architecture that achieves
	top-ranking performance for supervised ATE. Moreover, it can be used
	efficiently as feature extractor and classifier for unsupervised ATE. Our
	second contribution is a method to automatically construct datasets for ATE. We
	train a classifier on our automatically labelled datasets and evaluate it on
	the human annotated SemEval ABSA test sets. Compared to a strong rule-based
	baseline, we obtain a dramatically higher F-score and attain precision values
	above 80%. Our unsupervised method beats the supervised ABSA baseline from
	SemEval, while preserving high precision scores.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>giannakopoulos-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5225">
    <title>PLN-PUCRS at EmoInt-2017: Psycholinguistic features for emotion intensity prediction in tweets</title>
    <author><first>Henrique</first><last>Santos</last></author>
    <author><first>Renata</first><last>Vieira</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>189&#8211;192</pages>
    <url>http://www.aclweb.org/anthology/W17-5225</url>
    <abstract>Linguistic Inquiry and Word Count (LIWC) is a rich dictionary that map words
	into several psychological categories such as Affective, Social, Cognitive,
	Perceptual and Biological processes. In this work, we have used LIWC
	psycholinguistic categories to train regression models and predict emotion
	intensity in tweets for the EmoInt-2017 task. Results show that LIWC features
	may boost emotion intensity prediction on the basis of a low dimension set.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>santos-vieira:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5226">
    <title>Textmining at EmoInt-2017: A Deep Learning Approach to Sentiment Intensity Scoring of English Tweets</title>
    <author><first>Hardik</first><last>Meisheri</last></author>
    <author><first>Rupsa</first><last>Saha</last></author>
    <author><first>Priyanka</first><last>Sinha</last></author>
    <author><first>Lipika</first><last>Dey</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>193&#8211;199</pages>
    <url>http://www.aclweb.org/anthology/W17-5226</url>
    <abstract>This paper describes our approach to the Emotion Intensity shared task. A
	parallel
	architecture of Convolutional Neural Network (CNN) and Long short term memory
	networks (LSTM) alongwith two sets of features are extracted which aid the
	network
	in judging emotion intensity. Experiments on different models and various
	features
	sets are described and analysis on results has also been presented.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>meisheri-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5227">
    <title>YNU-HPCC at EmoInt-2017: Using a CNN-LSTM Model for Sentiment Intensity Prediction</title>
    <author><first>You</first><last>Zhang</last></author>
    <author><first>Hang</first><last>Yuan</last></author>
    <author><first>Jin</first><last>Wang</last></author>
    <author><first>Xuejie</first><last>Zhang</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>200&#8211;204</pages>
    <url>http://www.aclweb.org/anthology/W17-5227</url>
    <abstract>In this paper, we present a system that uses a convolutional neural network
	with long short-term memory (CNN-LSTM) model to complete the task. The CNN-LSTM
	model has two combined parts: CNN extracts local n-gram features within tweets
	and LSTM composes the features to capture long-distance dependency across
	tweets. Additionally, we used other three models (CNN, LSTM, BiLSTM) as
	baseline algorithms. Our introduced model showed good performance in the
	experimental results.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>zhang-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5228">
    <title>Seernet at EmoInt-2017: Tweet Emotion Intensity Estimator</title>
    <author><first>Venkatesh</first><last>Duppada</last></author>
    <author><first>Sushant</first><last>Hiray</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>205&#8211;211</pages>
    <url>http://www.aclweb.org/anthology/W17-5228</url>
    <attachment type="poster">W17-5228.Poster.pdf</attachment>
    <abstract>The paper describes experiments on estimating emotion intensity in tweets
	using a generalized regressor system. The system combines various independent
	feature extractors, trains them on general regressors and finally combines
	the best performing models to create an ensemble. The pro- posed system stood
	3rd out of 22 systems in leaderboard of WASSA-2017 Shared Task on Emotion
	Intensity.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>duppada-hiray:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5229">
    <title>IITP at EmoInt-2017: Measuring Intensity of Emotions using Sentence Embeddings and Optimized Features</title>
    <author><first>Md Shad</first><last>Akhtar</last></author>
    <author><first>Palaash</first><last>Sawant</last></author>
    <author><first>Asif</first><last>Ekbal</last></author>
    <author><first>Jyoti</first><last>Pawar</last></author>
    <author><first>Pushpak</first><last>Bhattacharyya</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>212&#8211;218</pages>
    <url>http://www.aclweb.org/anthology/W17-5229</url>
    <abstract>This paper describes the system that we submitted as part of our participation
	in the shared task on Emotion Intensity (EmoInt-2017). We propose a Long short
	term memory (LSTM) based architecture cascaded with Support Vector Regressor
	(SVR) for intensity prediction. We also employ Particle Swarm Optimization
	(PSO) based feature selection algorithm for obtaining an optimized feature set
	for training and evaluation. System evaluation shows interesting results on the
	four emotion datasets i.e. anger, fear, joy and sadness. In comparison to the
	other participating teams our system was ranked 5th in the competition.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>akhtar-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5230">
    <title>NSEmo at EmoInt-2017: An Ensemble to Predict Emotion Intensity in Tweets</title>
    <author><first>Sreekanth</first><last>Madisetty</last></author>
    <author><first>Maunendra Sankar</first><last>Desarkar</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>219&#8211;224</pages>
    <url>http://www.aclweb.org/anthology/W17-5230</url>
    <abstract>In this paper, we describe a method to predict emotion intensity in tweets. 
	Our approach is an ensemble of three regression methods. The first method uses
	content-based features (hashtags, emoticons, elongated words, etc.). The second
	method considers word n-grams and character n-grams for training. The final
	method uses lexicons, word embeddings, word n-grams, character n-grams for
	training the model. An ensemble of these three methods gives better performance
	than individual methods. We applied our method on WASSA emotion dataset.
	Achieved results are as follows: average Pearson correlation is 0.706, average
	Spearman correlation is 0.696, average Pearson correlation for gold scores in
	range 0.5 to 1 is 0.539, and average Spearman correlation for gold scores in
	range 0.5 to 1 is 0.514.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>madisetty-desarkar:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5231">
    <title>Tecnolengua Lingmotif at EmoInt-2017: A lexicon-based approach</title>
    <author><first>Antonio</first><last>Moreno-Ortiz</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>225&#8211;232</pages>
    <url>http://www.aclweb.org/anthology/W17-5231</url>
    <abstract>In this paper we describe Tecnolengua Group's participation in the shared task
	on emotion intensity at WASSA 2017. We used the Lingmotif tool and a new,
	complementary tool, Lingmotif Learn, which we developed for this occasion. We
	based our intensity predictions for the four test datasets entirely on
	Lingmotif's TSS (text sentiment score) feature. We also developed mechanisms
	for dealing with the idiosyncrasies of Twitter text. Results were comparatively
	poor, but the experience meant a good opportunity for us to identify issues in
	our score calculation for short texts, a genre for which the Lingmotif tool was
	not originally designed.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>morenoortiz:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5232">
    <title>EmoAtt at EmoInt-2017: Inner attention sentence embedding for Emotion Intensity</title>
    <author><first>Edison</first><last>Marrese-Taylor</last></author>
    <author><first>Yutaka</first><last>Matsuo</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>233&#8211;237</pages>
    <url>http://www.aclweb.org/anthology/W17-5232</url>
    <abstract>In this paper we describe a deep learning system that has been designed and
	built for the WASSA 2017 Emotion Intensity Shared Task. We introduce a
	representation learning approach based on inner attention on top of an RNN.
	Results show that our model offers good capabilities and is able to
	successfully identify emotion-bearing words to predict intensity without
	leveraging on lexicons, obtaining the 13t place among 22 shared task
	competitors.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>marresetaylor-matsuo:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5233">
    <title>YZU-NLP at EmoInt-2017: Determining Emotion Intensity Using a Bi-directional LSTM-CNN Model</title>
    <author><first>Yuanye</first><last>He</last></author>
    <author><first>Liang-Chih</first><last>Yu</last></author>
    <author><first>K. Robert</first><last>Lai</last></author>
    <author><first>Weiyi</first><last>Liu</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>238&#8211;242</pages>
    <url>http://www.aclweb.org/anthology/W17-5233</url>
    <abstract>The EmoInt-2017 task aims to determine a continuous numerical value
	representing the intensity to which an emotion is expressed in a tweet.
	Compared to classification tasks that identify 1 among n emotions for a tweet,
	the present task can provide more fine-grained (real-valued) sentiment
	analysis. This paper presents a system that uses a bi-directional LSTM-CNN
	model to complete the competition task. Combining bi-directional LSTM and CNN,
	the prediction process considers both global information in a tweet and local
	important information. The proposed method ranked sixth among twenty-one teams
	in terms of Pearson Correlation Coefficient.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>he-EtAl:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5234">
    <title>DMGroup at EmoInt-2017: Emotion Intensity Using Ensemble Method</title>
    <author><first>Song</first><last>Jiang</last></author>
    <author><first>Xiaotian</first><last>Han</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>243&#8211;248</pages>
    <url>http://www.aclweb.org/anthology/W17-5234</url>
    <abstract>In this paper, we present a novel ensemble learning architecture for emotion
	intensity analysis, particularly a novel framework of ensemble method. The
	ensemble method has two stages and each stage includes several single machine
	learning models. In stage1, we employ both linear and nonlinear regression
	models to obtain a more diverse emotion intensity representation. In stage2, we
	use two regression models including linear regression and XGBoost. The result
	of stage1 serves as the input of stage2, so the two different type models
	(linear and non-linear) in stage2 can describe the input in two opposite
	aspects. We also added a method for analyzing and splitting multi-words
	hashtags and appending them to the emotion intensity corpus before feeding it
	to our model. Our model achieves 0.571 Pearson-measure for the average of four
	emotions.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>jiang-han:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5235">
    <title>UWat-Emote at EmoInt-2017: Emotion Intensity Detection using Affect Clues, Sentiment Polarity and Word Embeddings</title>
    <author><first>Vineet</first><last>John</last></author>
    <author><first>Olga</first><last>Vechtomova</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>249&#8211;254</pages>
    <url>http://www.aclweb.org/anthology/W17-5235</url>
    <abstract>This paper describes the UWaterloo affect prediction system developed for
	EmoInt-2017. We delve into our feature selection approach for affect intensity,
	affect presence, sentiment intensity and sentiment presence lexica alongside
	pre-trained word embeddings, which are utilized to extract emotion intensity
	signals from tweets in an ensemble learning approach. The system employs
	emotion specific model training, and utilizes distinct models for each of the
	emotion corpora in isolation. Our system utilizes gradient boosted regression
	as the primary learning technique to predict the final emotion intensities.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>john-vechtomova:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5236">
    <title>LIPN-UAM at EmoInt-2017:Combination of Lexicon-based features and Sentence-level Vector Representations for Emotion Intensity Determination</title>
    <author><first>Davide</first><last>Buscaldi</last></author>
    <author><first>Belem</first><last>Priego</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>255&#8211;258</pages>
    <url>http://www.aclweb.org/anthology/W17-5236</url>
    <abstract>This paper presents the combined LIPN-UAM participation in the WASSA 2017
	Shared Task on Emotion Intensity. In particular, the paper provides some
	highlights on the Tweetaneuse system that was presented to the shared task. We
	combined lexicon-based features with sentence-level vector representations to
	implement a random forest regressor.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>buscaldi-priego:2017:WASSA2017</bibkey>
  </paper>

  <paper id="5237">
    <title>deepCybErNet at EmoInt-2017: Deep Emotion Intensities in Tweets</title>
    <author><first>Vinayakumar</first><last>R</last></author>
    <author><first>premjith</first><last>b</last></author>
    <author><first>sachin kumar</first><last>s</last></author>
    <author><first>soman</first><last>kp</last></author>
    <author><first>Prabaharan</first><last>Poornachandran</last></author>
    <booktitle>Proceedings of the 8th Workshop on Computational Approaches to Subjectivity, Sentiment and Social Media Analysis</booktitle>
    <month>September</month>
    <year>2017</year>
    <address>Copenhagen, Denmark</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>259&#8211;263</pages>
    <url>http://www.aclweb.org/anthology/W17-5237</url>
    <abstract>This working note presents the methodology used in deepCybErNet submission to
	the shared task on Emotion Intensities in Tweets (EmoInt) WASSA-2017. The goal
	of the task is to predict a real valued score in the range [0-1] for a
	particular tweet with an emotion type. To do this, we used Bag-of-Words and
	embedding based on recurrent network architecture. We have developed two
	systems and experiments are conducted on the Emotion Intensity shared Task 1
	data base at WASSA- 2017. A system which uses word embedding based on recurrent
	network architecture has achieved highest 5 fold cross-validation accuracy.
	This has used embedding with recurrent network to extract optimal features at
	tweet level and logistic regression for prediction. These methods are highly
	language independent and experimental results shows that the proposed methods
	are apt for predicting a real valued score in than range [0-1] for a given
	tweet with its emotion type.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>r-EtAl:2017:WASSA2017</bibkey>
  </paper>

</volume>

