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A Machine Learning based Depression Analysis and Suicidal Ideation Detection System using Questionnaires and Twitter

机译:使用问卷和Twitter的基于机器学习的抑郁分析和自杀意念检测系统

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Depression as a disorder has been a great concern in our society and has been perpetually a hot topic for researchers in the world. Despite the massive quantity of analysis on understanding individual moods together with depression, anxiety, and stress supported activity logs collected by pervasive computing devices like smartphones, foretelling depressed moods continues to be an open question. In this paper, we have proposed a depression analysis and suicidal ideation detection system, for predicting the suicidal acts based on the level of depression. We collected real time data from students and parents by making them fill questionnaires similar to PHQ-9 (Parent health questionnaire) consisting of questions like What's your age? or Are you regular in school/college? and processed it into meaningful data with related features like age, sex, regularity in the school, etc. Then, classification machine algorithms are used to train and classify it in five stages of depression depending on severity - Minimal or none, mild, moderate, moderately severe and severe. Maximum accuracy i.e. 83.87 % was achieved by using XGBoost classifier in this dataset. Also, data was collected in the form of tweets and were classified into whether the person who tweeted is in depression or not using classification algorithms. Logistic Regression classifier gave the maximum accuracy i.e. 86.45 % for the same.
机译:抑郁症是一种困扰我们社会的重大问题,并且一直是世界研究人员关注的热点。尽管进行了大量分析以了解个人情绪以及由诸如智能手机之类的普适计算设备收集的抑郁,焦虑和压力支持活动日志,但预言抑郁情绪仍然是一个悬而未决的问题。在本文中,我们提出了一种抑郁症分析和自杀意念检测系统,用于根据抑郁症的程度预测自杀行为。我们通过让学生和父母填写类似于PHQ-9(父母健康问卷)的问卷来收集学生和父母的实时数据,其中包括诸如您几岁?或您经常在学校/学院上学吗?并将其处理为有意义的数据,并具有相关的特征,如年龄,性别,学校的规律性等。然后,根据严重程度,使用分类机算法对抑郁症进行五个阶段的训练和分类-最低或最低,轻度,中度,中度严重和严重。通过在此数据集中使用XGBoost分类器,可以实现最高准确度,即83.87%。同样,数据以推文的形式收集,并使用分类算法分类为发推文的人是否处于抑郁状态。 Logistic回归分类器给出了最高的准确度,即86.45%。

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