Literature DB >> 29278258

Multi-class machine classification of suicide-related communication on Twitter.

Pete Burnap1, Gualtiero Colombo1, Rosie Amery2, Andrei Hodorog1, Jonathan Scourfield3.   

Abstract

The World Wide Web, and online social networks in particular, have increased connectivity between people such that information can spread to millions of people in a matter of minutes. This form of online collective contagion has provided many benefits to society, such as providing reassurance and emergency management in the immediate aftermath of natural disasters. However, it also poses a potential risk to vulnerable Web users who receive this information and could subsequently come to harm. One example of this would be the spread of suicidal ideation in online social networks, about which concerns have been raised. In this paper we report the results of a number of machine classifiers built with the aim of classifying text relating to suicide on Twitter. The classifier distinguishes between the more worrying content, such as suicidal ideation, and other suicide-related topics such as reporting of a suicide, memorial, campaigning and support. It also aims to identify flippant references to suicide. We built a set of baseline classifiers using lexical, structural, emotive and psychological features extracted from Twitter posts. We then improved on the baseline classifiers by building an ensemble classifier using the Rotation Forest algorithm and a Maximum Probability voting classification decision method, based on the outcome of base classifiers. This achieved an F-measure of 0.728 overall (for 7 classes, including suicidal ideation) and 0.69 for the suicidal ideation class. We summarise the results by reflecting on the most significant predictive principle components of the suicidal ideation class to provide insight into the language used on Twitter to express suicidal ideation. Finally, we perform a 12-month case study of suicide-related posts where we further evaluate the classification approach - showing a sustained classification performance and providing anonymous insights into the trends and demographic profile of Twitter users posting content of this type.

Entities:  

Keywords:  Artificial intelligence; Human safety; Suicidal ideation; Text analysis; Web-based interaction

Year:  2017        PMID: 29278258      PMCID: PMC5732584          DOI: 10.1016/j.osnem.2017.08.001

Source DB:  PubMed          Journal:  Online Soc Netw Media


  31 in total

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Journal:  Crisis       Date:  2001

2.  Suicide announcement on Facebook.

Authors:  Thomas D Ruder; Gary M Hatch; Garyfalia Ampanozi; Michael J Thali; Nadja Fischer
Journal:  Crisis       Date:  2011

Review 3.  Suicide and the internet.

Authors:  Lucy Biddle; Jenny Donovan; Keith Hawton; Navneet Kapur; David Gunnell
Journal:  BMJ       Date:  2008-04-12

4.  Googling suicide: surfing for suicide information on the Internet.

Authors:  Patricia R Recupero; Samara E Harms; Jeffrey M Noble
Journal:  J Clin Psychiatry       Date:  2008-06       Impact factor: 4.384

5.  Three hybrid classifiers for the detection of emotions in suicide notes.

Authors:  Maria Liakata; Jee-Hyub Kim; Shyamasree Saha; Janna Hastings; Dietrich Rebholz-Schuhmann
Journal:  Biomed Inform Insights       Date:  2012-01-30

6.  A hybrid model for automatic emotion recognition in suicide notes.

Authors:  Hui Yang; Alistair Willis; Anne de Roeck; Bashar Nuseibeh
Journal:  Biomed Inform Insights       Date:  2012-01-30

7.  A naïve bayes approach to classifying topics in suicide notes.

Authors:  Irena Spasić; Pete Burnap; Mark Greenwood; Michael Arribas-Ayllon
Journal:  Biomed Inform Insights       Date:  2012-01-30

8.  Sentiment Analysis of Suicide Notes: A Shared Task.

Authors:  John P Pestian; Pawel Matykiewicz; Michelle Linn-Gust; Brett South; Ozlem Uzuner; Jan Wiebe; K Bretonnel Cohen; John Hurdle; Christopher Brew
Journal:  Biomed Inform Insights       Date:  2012-01-30

9.  Who tweets? Deriving the demographic characteristics of age, occupation and social class from twitter user meta-data.

Authors:  Luke Sloan; Jeffrey Morgan; Pete Burnap; Matthew Williams
Journal:  PLoS One       Date:  2015-03-02       Impact factor: 3.240

10.  Validating Machine Learning Algorithms for Twitter Data Against Established Measures of Suicidality.

Authors:  Scott R Braithwaite; Christophe Giraud-Carrier; Josh West; Michael D Barnes; Carl Lee Hanson
Journal:  JMIR Ment Health       Date:  2016-05-16
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  18 in total

Review 1.  Smartphones, Sensors, and Machine Learning to Advance Real-Time Prediction and Interventions for Suicide Prevention: a Review of Current Progress and Next Steps.

Authors:  John Torous; Mark E Larsen; Colin Depp; Theodore D Cosco; Ian Barnett; Matthew K Nock; Joe Firth
Journal:  Curr Psychiatry Rep       Date:  2018-06-28       Impact factor: 5.285

2.  Short-term prediction of suicidal thoughts and behaviors in adolescents: Can recent developments in technology and computational science provide a breakthrough?

Authors:  Nicholas B Allen; Benjamin W Nelson; David Brent; Randy P Auerbach
Journal:  J Affect Disord       Date:  2019-03-06       Impact factor: 4.839

Review 3.  Distress, Suicidality, and Affective Disorders at the Time of Social Networks.

Authors:  Charles-Edouard Notredame; M Morgiève; F Morel; S Berrouiguet; J Azé; G Vaiva
Journal:  Curr Psychiatry Rep       Date:  2019-09-14       Impact factor: 5.285

Review 4.  Methods to Establish Race or Ethnicity of Twitter Users: Scoping Review.

Authors:  Su Golder; Robin Stevens; Karen O'Connor; Richard James; Graciela Gonzalez-Hernandez
Journal:  J Med Internet Res       Date:  2022-04-29       Impact factor: 7.076

5.  Extracting psychiatric stressors for suicide from social media using deep learning.

Authors:  Jingcheng Du; Yaoyun Zhang; Jianhong Luo; Yuxi Jia; Qiang Wei; Cui Tao; Hua Xu
Journal:  BMC Med Inform Decis Mak       Date:  2018-07-23       Impact factor: 2.796

6.  A machine learning approach predicts future risk to suicidal ideation from social media data.

Authors:  Arunima Roy; Katerina Nikolitch; Rachel McGinn; Safiya Jinah; William Klement; Zachary A Kaminsky
Journal:  NPJ Digit Med       Date:  2020-05-26

7.  Testing Suicide Risk Prediction Algorithms Using Phone Measurements With Patients in Acute Mental Health Settings: Feasibility Study.

Authors:  Alina Haines-Delmont; Gurdit Chahal; Ashley Jane Bruen; Abbie Wall; Christina Tara Khan; Ramesh Sadashiv; David Fearnley
Journal:  JMIR Mhealth Uhealth       Date:  2020-06-26       Impact factor: 4.773

8.  Leveraging the Web and Social Media to Promote Access to Care Among Suicidal Individuals.

Authors:  Charles-Edouard Notredame; Pierre Grandgenèvre; Nathalie Pauwels; Margot Morgiève; Marielle Wathelet; Guillaume Vaiva; Monique Séguin
Journal:  Front Psychol       Date:  2018-08-14

9.  Extracting health-related causality from twitter messages using natural language processing.

Authors:  Son Doan; Elly W Yang; Sameer S Tilak; Peter W Li; Daniel S Zisook; Manabu Torii
Journal:  BMC Med Inform Decis Mak       Date:  2019-04-04       Impact factor: 2.796

10.  A Social Media Study on the Effects of Psychiatric Medication Use.

Authors:  Koustuv Saha; Benjamin Sugar; John Torous; Bruno Abrahao; Emre Kıcıman; Munmun De Choudhury
Journal:  Proc Int AAAI Conf Weblogs Soc Media       Date:  2019-06-07
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