Deep Learning Algorithm for Suicide Sentiment Prediction

The increasing use of social media provides unprecedented access to the behaviors, thoughts, feelings and intentions of individuals. We are interested, in this paper, in the detection of notes that express bad feelings that might lead to committing suicide. Our goal is to present an automated detection and prediction system capable of recognizing severe depression through analyzing sentiments and feelings expressed on social networks, blogs, emails and even textual notes. In this work, we have set up a chain of treatments to extract characteristics from notes reflecting the emotional state. We can summarize these treatments in two phases: a pretreatment phase based on the Arabic stemming algorithms, and a phase of construction of feature vectors specific to each word of the corpus based on Term Frequency-Inverse Document Frequency method. Then, we applied a model based on Convolutional Neural Networks to predict the nature of feelings behind the note. The Convolutional Neural Network algorithm is one of many famous algorithms of deep learning field. It is originally created for image processing applications. But recently, it is more and more used in text mining and sentiment analysis field. The originality of the approach is, in one hand, to consider both the nature of the words that individuals used to express themselves. And in the other hand, to use the advantages of the Convolutional Neural Network to automatically extract the most significant and reliable features. A preliminary experiment allowed us to evaluate our approach on real cases of online suicidal notes.

[1]  Pete Burnap,et al.  Analysing the connectivity and communication of suicidal users on twitter , 2016, Comput. Commun..

[2]  Lisa Ballesteros,et al.  Improving stemming for Arabic information retrieval: light stemming and co-occurrence analysis , 2002, SIGIR '02.

[3]  R. Simons,et al.  Sex differences in the causes of adolescent suicide ideation , 1985, Journal of youth and adolescence.

[4]  David Gonzalez-Marron,et al.  Exploiting Data of the Twitter Social Network Using Sentiment Analysis , 2017 .

[5]  Jeffrey J. Glenn,et al.  Examining potential iatrogenic effects of viewing suicide and self-injury stimuli. , 2016, Psychological assessment.

[6]  Pete Burnap,et al.  Multi-class machine classification of suicide-related communication on Twitter , 2017, Online Soc. Networks Media.

[7]  Nina Dethlefs,et al.  Automatic Identification of Suicide Notes from Linguistic and Sentiment Features , 2016, LaTeCH@ACL.

[8]  D. Lester,et al.  Twitter postings and suicide: An analysis of the postings of a fatal suicide in the 24 hours prior to death , 2015 .

[9]  P. Burnap,et al.  A Naïve Bayes Approach to Classifying Topics in Suicide Notes , 2012, Biomedical informatics insights.

[10]  A. Chatard,et al.  When self-destructive thoughts flash through the mind: Failure to meet standards affects the accessibility of suicide-related thoughts. , 2011, Journal of personality and social psychology.

[11]  Gerard Salton,et al.  Term-Weighting Approaches in Automatic Text Retrieval , 1988, Inf. Process. Manag..

[12]  H. Sueki,et al.  The association of suicide-related Twitter use with suicidal behaviour: a cross-sectional study of young internet users in Japan. , 2015, Journal of affective disorders.

[13]  L. Flashman,et al.  Predicting the Risk of Suicide by Analyzing the Text of Clinical Notes , 2014, PloS one.

[14]  Fawaz A. Al Zaghoul,et al.  Arabic Text Classification Based on Features Reduction Using Artificial Neural Networks , 2013, 2013 UKSim 15th International Conference on Computer Modelling and Simulation.

[15]  Md. Habibul Alam,et al.  Sentiment analysis for Bangla sentences using convolutional neural network , 2017, 2017 20th International Conference of Computer and Information Technology (ICCIT).

[16]  Mohammed Erritali,et al.  A Method Proposed for Estimating Depressed Feeling Tendencies of Social Media Users Utilizing Their Data , 2016, HIS.

[17]  Kasturi Dewi Varathan,et al.  Suicide detection system based on Twitter , 2014, 2014 Science and Information Conference.

[18]  Geoffrey E. Hinton,et al.  ImageNet classification with deep convolutional neural networks , 2012, Commun. ACM.

[19]  Yoshua Bengio,et al.  Gradient-based learning applied to document recognition , 1998, Proc. IEEE.

[20]  Thomas Wetter,et al.  Screening Internet forum participants for depression symptoms by assembling and enhancing multiple NLP methods , 2015, Comput. Methods Programs Biomed..

[21]  Jaspreet Singh,et al.  Morphological evaluation and sentiment analysis of Punjabi text using deep learning classification , 2018, J. King Saud Univ. Comput. Inf. Sci..