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<volume id="W17">
  <paper id="3100">
    <title>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</title>
    <editor>Kristy Hollingshead</editor>
    <editor>Molly E. Ireland</editor>
    <editor>Kate Loveys</editor>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <url>http://www.aclweb.org/anthology/W17-31</url>
    <bibtype>book</bibtype>
    <bibkey>CLPsych:2017</bibkey>
  </paper>

  <paper id="3101">
    <title>A Cross-modal Review of Indicators for Depression Detection Systems</title>
    <author><first>Michelle</first><last>Morales</last></author>
    <author><first>Stefan</first><last>Scherer</last></author>
    <author><first>Rivka</first><last>Levitan</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>1&#8211;12</pages>
    <url>http://www.aclweb.org/anthology/W17-3101</url>
    <abstract>Automatic detection of depression has attracted increasing attention from
	researchers in psychology, computer science, linguistics, and related
	disciplines. As a result, promising depression detection systems have been
	reported. This paper surveys these efforts by presenting the first cross-modal
	review of depression detection systems and discusses best practices and most
	promising approaches to this task.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>morales-scherer-levitan:2017:CLPsych</bibkey>
  </paper>

  <paper id="3102">
    <title>In your wildest dreams: the language and psychological features of dreams</title>
    <author><first>Kate</first><last>Niederhoffer</last></author>
    <author><first>Jonathan</first><last>Schler</last></author>
    <author><first>Patrick</first><last>Crutchley</last></author>
    <author><first>Kate</first><last>Loveys</last></author>
    <author><first>Glen</first><last>Coppersmith</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>13&#8211;25</pages>
    <url>http://www.aclweb.org/anthology/W17-3102</url>
    <abstract>In this paper, we provide the first quantified exploration of the structure of
	the language of dreams, their linguistic style and emotional content. We
	present a collection of digital dream logs as a viable corpus for the growing
	study of mental health through the lens of language, complementary to the work
	done examining more traditional social media. This paper is largely
	exploratory in nature to lay the groundwork for subsequent research in mental
	health, rather than optimizing a particular text classification task.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>niederhoffer-EtAl:2017:CLPsych</bibkey>
  </paper>

  <paper id="3103">
    <title>A Corpus Analysis of Social Connections and Social Isolation in Adolescents Suffering from Depressive Disorders</title>
    <author><first>Jia-Wen</first><last>Guo</last></author>
    <author><first>Danielle L</first><last>Mowery</last></author>
    <author><first>Djin</first><last>Lai</last></author>
    <author><first>Katherine</first><last>Sward</last></author>
    <author><first>Mike</first><last>Conway</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>26&#8211;31</pages>
    <url>http://www.aclweb.org/anthology/W17-3103</url>
    <abstract>Social connection and social isolation are associated with depressive symptoms,
	particularly in adolescents and young adults, but how these concepts are
	documented in clinical notes is unknown. This pilot study aimed to identify the
	topics relevant to social connection and isolation by analyzing 145 clinical
	notes from patients with depression diagnosis. We found that providers,
	including physicians, nurses, social workers, and psychologists, document
	descriptions of both social connection and social isolation.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>guo-EtAl:2017:CLPsych</bibkey>
  </paper>

  <paper id="3104">
    <title>Monitoring Tweets for Depression to Detect At-risk Users</title>
    <author><first>Zunaira</first><last>Jamil</last></author>
    <author><first>Diana</first><last>Inkpen</last></author>
    <author><first>Prasadith</first><last>Buddhitha</last></author>
    <author><first>Kenton</first><last>White</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>32&#8211;40</pages>
    <url>http://www.aclweb.org/anthology/W17-3104</url>
    <abstract>We propose an automated system that can identify at-risk users from their
	public social media activity, more specifically, from Twitter. The data that we
	collected is from the #BellLetsTalk campaign, which is a wide-reaching,
	multi-year program designed to break the silence around mental illness and
	support mental health across Canada. To achieve our goal, we trained a
	user-level classifier that can detect at-risk users that achieves a reasonable
	precision and recall. We also trained a tweet-level classifier that predicts if
	a tweet indicates depression. This task was much more difficult due to the
	imbalanced data. In the dataset that we labeled, we came across 5% depression
	tweets and 95% non-depression tweets. To handle this class imbalance, we used
	undersampling methods. The resulting classifier had high recall, but low
	precision. Therefore, we only use this classifier to compute the estimated
	percentage of depressed tweets and to add this value as a feature for the
	user-level classifier.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>jamil-EtAl:2017:CLPsych</bibkey>
  </paper>

  <paper id="3105">
    <title>Investigating Patient Attitudes Towards the use of Social Media Data to Augment Depression Diagnosis and Treatment: a Qualitative Study</title>
    <author><first>Jude</first><last>Mikal</last></author>
    <author><first>Samantha</first><last>Hurst</last></author>
    <author><first>Mike</first><last>Conway</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>41&#8211;47</pages>
    <url>http://www.aclweb.org/anthology/W17-3105</url>
    <abstract>In this paper, we use qualitative research methods to investigate the attitudes
	of social media users towards the (opt-in) integration of social media data
	with routine mental health care and diagnosis. Our investigation was based on
	secondary analysis of a series of five focus groups with Twitter users,
	including three groups consisting of participants with a self-reported history
	of depression, and two groups consisting of participants without a self
	reported history of depression. Our results indicate that, overall, research
	participants were enthusiastic about the possibility of using social media (in
	conjunction with automated Natural Language Processing algorithms) for mood
	tracking under the supervision of a mental health practitioner. However, for at
	least some participants, there was skepticism related to how well social media
	represents the mental health of users, and hence its usefulness in the clinical
	context.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>mikal-hurst-conway:2017:CLPsych</bibkey>
  </paper>

  <paper id="3106">
    <title>Natural-language Interactive Narratives in Imaginal Exposure Therapy for Obsessive-Compulsive Disorder</title>
    <author><first>Melissa</first><last>Roemmele</last></author>
    <author><first>Paola</first><last>Mardo</last></author>
    <author><first>Andrew</first><last>Gordon</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>48&#8211;57</pages>
    <url>http://www.aclweb.org/anthology/W17-3106</url>
    <abstract>Obsessive-compulsive disorder (OCD) is an anxiety-based disorder that affects
	around 2.5% of the population. A common treatment for OCD is exposure therapy,
	where the patient repeatedly confronts a feared experience, which has the
	long-term effect of decreasing their anxiety. Some exposures consist of reading
	and writing stories about an imagined anxiety-provoking scenario. In this
	paper, we present a technology that enables patients to interactively
	contribute to exposure stories by supplying natural language input (typed or
	spoken) that advances a scenario. This interactivity could potentially increase
	the patient's sense of immersion in an exposure and contribute to its success.
	We introduce the NLP task behind processing inputs to predict new events in the
	scenario, and describe our initial approach. We then illustrate the future
	possibility of this work with an example of an exposure scenario authored with
	our application.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>roemmele-mardo-gordon:2017:CLPsych</bibkey>
  </paper>

  <paper id="3107">
    <title>Detecting Anxiety through Reddit</title>
    <author><first>Judy Hanwen</first><last>Shen</last></author>
    <author><first>Frank</first><last>Rudzicz</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>58&#8211;65</pages>
    <url>http://www.aclweb.org/anthology/W17-3107</url>
    <abstract>Previous investigations into detecting mental illnesses through social media
	have predominately focused on detecting depression through Twitter corpora. In
	this paper, we study anxiety disorders through personal narratives collected
	through the popular social media website, Reddit. We build a substantial data
	set of typical and anxiety-related posts, and we apply N-gram language
	modeling, vector embeddings, topic analysis, and emotional norms to generate
	features that accurately classify posts related to binary levels of anxiety. We
	achieve an accuracy of 91% with vector-space word embeddings, and an accuracy
	of 98% when combined with lexicon-based features.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>shen-rudzicz:2017:CLPsych</bibkey>
  </paper>

  <paper id="3108">
    <title>Detecting and Explaining Crisis</title>
    <author><first>Rohan</first><last>Kshirsagar</last></author>
    <author><first>Robert</first><last>Morris</last></author>
    <author><first>Samuel</first><last>Bowman</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>66&#8211;73</pages>
    <url>http://www.aclweb.org/anthology/W17-3108</url>
    <abstract>Individuals on social media may reveal themselves to be in various states of
	crisis (e.g. suicide, self-harm, abuse, or eating disorders). Detecting crisis
	from social media text automatically and accurately can have profound
	consequences. However, detecting a general state of crisis without explaining
	why has limited applications. An explanation in this context is a coherent,
	concise subset of the text that rationalizes the crisis detection. We explore
	several methods to detect and explain crisis using a combination of neural and
	non-neural techniques. We evaluate these techniques on a unique data set
	obtained from Koko, an anonymous emotional support network available through
	various messaging applications. We annotate a small subset of the samples
	labeled with crisis with corresponding explanations. Our best technique
	significantly outperforms the baseline for detection and explanation.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>kshirsagar-morris-bowman:2017:CLPsych</bibkey>
  </paper>

  <paper id="3109">
    <title>A Dictionary-Based Comparison of Autobiographies by People and Murderous Monsters</title>
    <author><first>Micah</first><last>Iserman</last></author>
    <author><first>Molly</first><last>Ireland</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>74&#8211;84</pages>
    <url>http://www.aclweb.org/anthology/W17-3109</url>
    <abstract>People typically assume that killers are mentally ill or fundamentally
	different from the rest of humanity. Similarly, people often associate mental
	health conditions (such as schizophrenia or autism) with violence and otherness
	- treatable perhaps, but not empathically understandable. We take a dictionary
	approach to explore word use in a set of autobiographies, comparing the
	narratives of 2 killers (Adolf Hitler and Elliot Rodger) and 39 non-killers.
	Although results suggest several dimensions that differentiate these
	autobiographies - such as sentiment, temporal orientation, and references to
	death - they appear to reflect subject matter rather than psychology per se.
	Additionally, the Rodger text shows roughly typical developmental arcs in its
	use of words relating to friends, family, sex, and affect. From these data, we
	discuss the challenges of understanding killers and people in general.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>iserman-ireland:2017:CLPsych</bibkey>
  </paper>

  <paper id="3110">
    <title>Small but Mighty: Affective Micropatterns for Quantifying Mental Health from Social Media Language</title>
    <author><first>Kate</first><last>Loveys</last></author>
    <author><first>Patrick</first><last>Crutchley</last></author>
    <author><first>Emily</first><last>Wyatt</last></author>
    <author><first>Glen</first><last>Coppersmith</last></author>
    <booktitle>Proceedings of the Fourth Workshop on Computational Linguistics and Clinical Psychology &#8211;- From Linguistic Signal to Clinical Reality</booktitle>
    <month>August</month>
    <year>2017</year>
    <address>Vancouver, BC</address>
    <publisher>Association for Computational Linguistics</publisher>
    <pages>85&#8211;95</pages>
    <url>http://www.aclweb.org/anthology/W17-3110</url>
    <abstract>Many psychological phenomena occur in small time windows, measured in minutes
	or hours. However, most computational linguistic techniques look at data on the
	order of weeks, months, or years. We explore micropatterns in sequences of
	messages occurring over a short time window for their prevalence and power for
	quantifying psychological phenomena, specifically, patterns in affect. We
	examine affective micropatterns in social media posts from users with anxiety,
	eating disorders, panic attacks, schizophrenia, suicidality, and matched
	controls.</abstract>
    <bibtype>inproceedings</bibtype>
    <bibkey>loveys-EtAl:2017:CLPsych</bibkey>
  </paper>

</volume>

