Simulation of suicide tendency by using machine learning

Suicide is one of the most distinguished causes of death on the news worldwide. There are several factors and variables that can lead a person to commit this act, for example, stress, self-esteem, depression, among others. The causes and profiles of suicide cases are not revealed in detail by the competent institutions. We propose a simulation with a systematically generated dataset; such data reflect the adolescent population with suicidal tendency in Peru. We will evaluate three algorithms of supervised machine learning as a result of the algorithm C4.5 which is based on the trees to classify in a better way the suicidal tendency of adolescents. We finally propose a desktop tool that determines the suicidal tendency level of the adolescent.

[1]  Dakshata Panchal,et al.  Data mining approach for diagnose of anxiety disorder , 2015, International Conference on Computing, Communication & Automation.

[2]  Choong Seon Hong,et al.  Cloud based mental state monitoring system for suicide risk reconnaissance using wearable bio-sensors , 2014, ICUIMC.

[3]  Pete Burnap,et al.  Machine Classification and Analysis of Suicide-Related Communication on Twitter , 2015, HT.

[4]  Taghi M. Khoshgoftaar,et al.  Experimental perspectives on learning from imbalanced data , 2007, ICML '07.

[5]  Lucila Ohno-Machado,et al.  Natural language processing: an introduction , 2011, J. Am. Medical Informatics Assoc..

[6]  Suvarn Sharma,et al.  Data preprocessing algorithm for Web Structure Mining , 2016, 2016 Fifth International Conference on Eco-friendly Computing and Communication Systems (ICECCS).

[7]  Tjeerd W. Boonstra,et al.  The use of technology in Suicide Prevention , 2015, 2015 37th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC).

[8]  Wei Luo,et al.  An integrated framework for suicide risk prediction , 2013, KDD.

[9]  Jeffrey J. P. Tsai,et al.  Machine learning applications in software engineering , 2005 .