<?xml version="1.0" encoding="UTF-8" ?>
<volume id="W17">
  <paper id="2700">
    <title>Proceedings of the Events and Stories in the News Workshop</title>
    <editor>Tommaso Caselli</editor>
    <editor>Ben Miller</editor>
    <editor>Marieke van Erp</editor>
    <editor>Piek Vossen</editor>
    <editor>Martha Palmer</editor>
    <editor>Eduard Hovy</editor>
    <editor>Teruko Mitamura</editor>
    <editor>David Caswell</editor>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <url>http://www.aclweb.org/anthology/W17-27</url>
    <bibtype>book</bibtype>
    <bibkey>EventStory:2017</bibkey>
  </paper>

  <paper id="2701">
    <title>newsLens: building and visualizing long-ranging news stories</title>
    <author><first>Philippe</first><last>Laban</last></author>
    <author><first>Marti</first><last>Hearst</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>1&#8211;9</pages>
    <url>http://www.aclweb.org/anthology/W17-2701</url>
    <abstract>We propose a method to aggregate and organize a large, multi-source dataset of
	news articles into a collection of major stories, and automatically name and
	visualize these stories in a working system. The approach is able to run
	online, as new articles are added, processing 4 million news articles from 20
	news sources, and extracting 80000 major stories, some of which span several
	years. The visual interface consists of lanes of timelines, each annotated with
	information that is deemed important for the story, including extracted
	quotations. The working system allows a user to search and navigate 8 years of
	story information.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>laban-hearst:2017:EventStory</bibkey>
  </paper>

  <paper id="2702">
    <title>Detecting Changes in Twitter Streams using Temporal Clusters of Hashtags</title>
    <author><first>Yunli</first><last>Wang</last></author>
    <author><first>Cyril</first><last>Goutte</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>10&#8211;14</pages>
    <url>http://www.aclweb.org/anthology/W17-2702</url>
    <abstract>Detecting events from social media data has important applications in public
	security, political issues, and public health. Many studies have focused on
	detecting specific or unspecific events from Twitter streams. However, not much
	attention has been paid to detecting changes, and their impact, in online
	conversations related to an event. We propose methods for detecting such
	changes, using clustering of temporal profiles of hashtags, and three change
	point detection algorithms. The methods were tested on two Twitter datasets:
	one covering the 2014 Ottawa shooting event, and one covering the Sochi winter
	Olympics. We compare our approach to a baseline consisting of detecting change
	from raw counts in the conversation. We show that our method produces large
	gains in change detection accuracy on both datasets.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>wang-goutte:2017:EventStory</bibkey>
  </paper>

  <paper id="2703">
    <title>Event Detection Using Frame-Semantic Parser</title>
    <author><first>Evangelia</first><last>Spiliopoulou</last></author>
    <author><first>Eduard</first><last>Hovy</last></author>
    <author><first>Teruko</first><last>Mitamura</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>15&#8211;20</pages>
    <url>http://www.aclweb.org/anthology/W17-2703</url>
    <abstract>Recent methods for Event Detection focus on Deep Learning for automatic feature
	generation and feature ranking. However, most of those approaches fail to
	exploit rich semantic information, which results in relatively poor recall.
	This paper is a small &#38; focused contribution, where we introduce an Event
	Detection and classification system, based on deep semantic information
	retrieved from a frame-semantic parser. Our experiments show that our system
	achieves higher recall than state-of-the-art systems. Further, we claim that
	enhancing our system with deep learning techniques like feature ranking can
	achieve even better results, as it can benefit from both approaches.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>spiliopoulou-hovy-mitamura:2017:EventStory</bibkey>
  </paper>

  <paper id="2704">
    <title>Improving Shared Argument Identification in Japanese Event Knowledge Acquisition</title>
    <author><first>Yin Jou</first><last>Huang</last></author>
    <author><first>Sadao</first><last>Kurohashi</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>21&#8211;30</pages>
    <url>http://www.aclweb.org/anthology/W17-2704</url>
    <abstract>Event knowledge represents the knowledge of causal and temporal relations
	between events. Shared arguments of event knowledge encode patterns of role
	shifting in successive events. A two-stage framework was proposed for the task
	of Japanese event knowledge acquisition, 
	in which related event pairs are first extracted, and shared arguments are then
	identified to form the complete event knowledge. This paper focuses on the
	second stage of this framework, and proposes a method to improve the shared
	argument identification of related event pairs. We constructed a gold dataset
	for shared argument learning. By evaluating our system on this gold dataset, we
	found that our proposed model outperformed the baseline models by a large
	margin.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>huang-kurohashi:2017:EventStory</bibkey>
  </paper>

  <paper id="2705">
    <title>Tracing armed conflicts with diachronic word embedding models</title>
    <author><first>Andrey</first><last>Kutuzov</last></author>
    <author><first>Erik</first><last>Velldal</last></author>
    <author><first>Lilja</first><last>&#216;vrelid</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>31&#8211;36</pages>
    <url>http://www.aclweb.org/anthology/W17-2705</url>
    <attachment type="poster">W17-2705.Poster.pdf</attachment>
    <abstract>Recent studies have shown that word embedding models can be used to trace
	time-related (diachronic) semantic shifts in particular words. In this paper,
	we evaluate some of these approaches on the new task of predicting the dynamics
	of global armed conflicts on a year-to-year basis, using a dataset from the
	conflict research field as the gold standard and the Gigaword news corpus as
	the training data. The results show that much work still remains in extracting
	`cultural' semantic shifts from diachronic word embedding models. At the same
	time, we present a new task complete with an evaluation set and introduce the
	`anchor words' method which outperforms previous approaches on this set.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>kutuzov-velldal-ovrelid:2017:EventStory</bibkey>
  </paper>

  <paper id="2706">
    <title>The Circumstantial Event Ontology (CEO)</title>
    <author><first>Roxane</first><last>Segers</last></author>
    <author><first>Tommaso</first><last>Caselli</last></author>
    <author><first>Piek</first><last>Vossen</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>37&#8211;41</pages>
    <url>http://www.aclweb.org/anthology/W17-2706</url>
    <abstract>In this paper we describe the ongoing work on the Circumstantial Event Ontology
	(CEO), a newly developed ontology for calamity events that models semantic
	circumstantial relations between event classes. The circumstantial relations
	are designed manually, based on the shared properties of each event class. We
	discuss and contrast two types of event circumstantial relations: semantic
	circumstantial relations and episodic circumstantial relations. Further, we
	show the metamodel and the current contents of the ontology and outline the
	evaluation of the CEO.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>segers-caselli-vossen:2017:EventStory</bibkey>
  </paper>

  <paper id="2707">
    <title>Event Detection and Semantic Storytelling: Generating a Travelogue from a large Collection of Personal Letters</title>
    <author><first>Georg</first><last>Rehm</last></author>
    <author><first>Julian</first><last>Moreno Schneider</last></author>
    <author><first>peter</first><last>bourgonje</last></author>
    <author><first>Ankit</first><last>Srivastava</last></author>
    <author><first>Jan</first><last>Nehring</last></author>
    <author><first>Armin</first><last>Berger</last></author>
    <author><first>Luca</first><last>K&#246;nig</last></author>
    <author><first>S&#246;ren</first><last>R&#228;uchle</last></author>
    <author><first>Jens</first><last>Gerth</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>42&#8211;51</pages>
    <url>http://www.aclweb.org/anthology/W17-2707</url>
    <abstract>We present an approach at identifying a specific class of events, movement
	action events (MAEs), in a data set that consists of ca. 2,800 personal letters
	exchanged by the German architect Erich Mendelsohn and his wife, Luise. A
	backend system uses these and other semantic analysis results as input for an
	authoring environment that digital curators can use to produce new pieces of
	digital content. In our example case, the human expert will receive
	recommendations from the system with the goal of putting together a travelogue,
	i.e., a description of the trips and journeys undertaken by the couple. We
	describe the components and architecture and also apply the system to news
	data.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>rehm-EtAl:2017:EventStory</bibkey>
  </paper>

  <paper id="2708">
    <title>Inference of Fine-Grained Event Causality from Blogs and Films</title>
    <author><first>Zhichao</first><last>Hu</last></author>
    <author><first>Elahe</first><last>Rahimtoroghi</last></author>
    <author><first>Marilyn</first><last>Walker</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>52&#8211;58</pages>
    <url>http://www.aclweb.org/anthology/W17-2708</url>
    <abstract>Human understanding of narrative is mainly driven by reasoning about causal
	relations between events and thus recognizing them is a key capability for
	computational models of language understanding. Computational work in this area
	has approached this via two different routes: by focusing on acquiring a
	knowledge base of common causal relations between events, or by attempting to
	understand a particular story or macro-event, along
	with its storyline. In this position paper, we focus on knowledge acquisition
	approach and claim that newswire is a relatively poor source for learning
	fine-grained causal relations between everyday events. We describe experiments
	using an unsupervised method to learn causal relations between events in the
	narrative genres of first-person narratives and film
	scene descriptions. We show that our method learns fine-grained causal
	relations,
	judged by humans as likely to be causal over 80% of the time. We also
	demonstrate that the learned event pairs do not exist in publicly available
	event-pair datasets extracted from newswire.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>hu-rahimtoroghi-walker:2017:EventStory</bibkey>
  </paper>

  <paper id="2709">
    <title>On the Creation of a Security-Related Event Corpus</title>
    <author><first>Martin</first><last>Atkinson</last></author>
    <author><first>Jakub</first><last>Piskorski</last></author>
    <author><first>Hristo</first><last>Tanev</last></author>
    <author><first>Vanni</first><last>Zavarella</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>59&#8211;65</pages>
    <url>http://www.aclweb.org/anthology/W17-2709</url>
    <abstract>This paper reports on an effort of creating a corpus of structured information
	on security-related events automatically extracted from on-line news, part of
	which has been manually curated. The main motivation behind this effort is to
	provide material to the NLP community working on event extraction that could be
	used both for training and evaluation purposes.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>atkinson-EtAl:2017:EventStory</bibkey>
  </paper>

  <paper id="2710">
    <title>Inducing Event Types and Roles in Reverse: Using Function to Discover Theme</title>
    <author><first>Natalie</first><last>Ahn</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>66&#8211;76</pages>
    <url>http://www.aclweb.org/anthology/W17-2710</url>
    <abstract>With growing interest in automated event extraction, there is an increasing
	need to overcome the labor costs of hand-written event templates, entity lists,
	and annotated corpora. In the last few years, more inductive approaches have
	emerged, seeking to discover unknown event types and roles in raw text. The
	main recent efforts use probabilistic generative models, as in topic modeling,
	which are formally concise but do not always yield stable or easily
	interpretable results. We argue that event schema induction can benefit from
	greater structure in the process and in linguistic features that distinguish
	words' functions and themes. To maximize our use of limited data, we reverse
	the typical schema induction steps and introduce new similarity measures,
	building an intuitive process for inducing the structure of unknown events.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>ahn:2017:EventStory</bibkey>
  </paper>

  <paper id="2711">
    <title>The Event StoryLine Corpus: A New Benchmark for Causal and Temporal Relation Extraction</title>
    <author><first>Tommaso</first><last>Caselli</last></author>
    <author><first>Piek</first><last>Vossen</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>77&#8211;86</pages>
    <url>http://www.aclweb.org/anthology/W17-2711</url>
    <abstract>This paper reports on the Event StoryLine Corpus (ESC) v1.0, a new benchmark
	dataset for the temporal and causal relation detection. By developing this
	dataset, we also introduce a new task, the StoryLine Extraction from news data,
	which aims at extracting and classifying events relevant for stories, from
	across news documents spread in time and clustered around a single seminal
	event or topic. In addition to describing the dataset, we also report on three
	baselines systems whose results show the complexity of the task and suggest
	directions for the development of more robust systems.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>caselli-vossen:2017:EventStory</bibkey>
  </paper>

  <paper id="2712">
    <title>The Rich Event Ontology</title>
    <author><first>Susan</first><last>Brown</last></author>
    <author><first>Claire</first><last>Bonial</last></author>
    <author><first>Leo</first><last>Obrst</last></author>
    <author><first>Martha</first><last>Palmer</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>87&#8211;97</pages>
    <url>http://www.aclweb.org/anthology/W17-2712</url>
    <abstract>In this paper we describe a new lexical semantic resource, The Rich Event
	On-tology, which provides an independent conceptual backbone to unify existing
	semantic role labeling (SRL) schemas and augment them with event-to-event
	causal and temporal relations.        By unifying the FrameNet, VerbNet, Automatic
	Content Extraction, and Rich Entities, Relations and Events resources, the
	ontology serves as a shared hub for the disparate annotation schemas and
	therefore enables the combination of SRL training data into a larger, more
	diverse corpus.  By adding temporal and causal relational information not found
	in any of the independent resources, the ontology facilitates reasoning on and
	across documents, revealing relationships between events that come together in
	temporal and causal chains to build more complex scenarios.  We envision the
	open resource serving as a valuable tool for both moving from the ontology to
	text to query for event types and scenarios of interest, and for moving from
	text to the ontology to access interpretations of events using the combined
	semantic information housed there.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>brown-EtAl:2017:EventStory</bibkey>
  </paper>

  <paper id="2713">
    <title>Integrating Decompositional Event Structures into Storylines</title>
    <author><first>William</first><last>Croft</last></author>
    <author><first>Pavlina</first><last>Peskova</last></author>
    <author><first>Michael</first><last>Regan</last></author>
    <booktitle>Proceedings of the Events and Stories in the News Workshop</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, Canada</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>98&#8211;109</pages>
    <url>http://www.aclweb.org/anthology/W17-2713</url>
    <abstract>Storyline research links together events in stories and specifies shared
	participants in those stories. In these analyses, an atomic event is assumed to
	be a single clause headed by a single verb. However, many analyses of verbal
	semantics assume a decompositional analysis of events expressed in single
	clauses. We present a formalization of a decompositional analysis of events in
	which each participant in a clausal event has their own temporally extended
	subevent, and the subevents are related through causal and other interactions.
	This decomposition allows us to represent storylines as an evolving set of
	interactions between participants over time.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>croft-peskova-regan:2017:EventStory</bibkey>
  </paper>

</volume>

