2016
DOI: 10.1109/jbhi.2015.2459683
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Examining Accumulated Emotional Traits in Suicide Blogs With an Emotion Topic Model

Abstract: Suicide has been a major cause of death throughout the world. Recent studies have proved a reliable connection between the emotional traits and suicide. However, detection and prevention of suicide are mostly carried out in the clinical centers, which limit the effective treatments to a restricted group of people. To assist detecting suicide risks among the public, we propose a novel method by exploring the accumulated emotional information from people's daily writings (i.e., Blogs), and examining these emotio… Show more

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Cited by 68 publications
(34 citation statements)
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“…Cash et al [30], Shepherd et al [31], and Jashinsky et al [16] have conducted psychology-based data analysis for content that suggests suicidal tendencies in the MySpace and Twitter social networks. Ren et al explored accumulated emotional information from online suicide blogs [32]. O'Dea et al developed automatic suicide detection on Twitter by applying logistic regression and SVM on TF-IDF features [33].…”
Section: Complexitymentioning
confidence: 99%
“…Cash et al [30], Shepherd et al [31], and Jashinsky et al [16] have conducted psychology-based data analysis for content that suggests suicidal tendencies in the MySpace and Twitter social networks. Ren et al explored accumulated emotional information from online suicide blogs [32]. O'Dea et al developed automatic suicide detection on Twitter by applying logistic regression and SVM on TF-IDF features [33].…”
Section: Complexitymentioning
confidence: 99%
“…Moreover, the proposed approach has good expandability, so many other knowledge bases could be integrated and many other concepts could be referred to improve the effectiveness for TC task. It can also be used in other NLP tasks, such as our previous works on ‘affective computing’ .…”
Section: Resultsmentioning
confidence: 99%
“…Also, there are many other leading research works that focused on text sentiment analysis and its applications. [162][163][164][165][166][167][168][169][170] Although sentiment analysis is treated as a classi¯cation problem, sentiment analysis is actually a suitcase research problem that requires dealing with many NLP tasks. 171 Reference 172 proposed a novel tagging scheme to jointly extract entities and relations, which can be seen as the subtasks of sentiment analysis, by using several end-to-end models.…”
Section: Mrcmentioning
confidence: 99%