AIPSYCH: A Mobile Application-based Artificial Psychiatrist for Predicting Mental Illness and Recovery Suggestions among Students

F. Hossen, Sajedul Talukder, Refatul Fahad
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Abstract

COVID-19’s outbreak affected and compelled people from all walks of life to self-quarantine in their houses in order to prevent the virus from spreading. As a result of adhering to the exceedingly strict guideline, many people developed mental illnesses. Because the educational institution was closed at the time, students remained at home and practiced self-quarantine. As a result, it is necessary to identify the students who developed mental illnesses at that time. To develop AiPsych, a mobile application-based artificial psychiatrist, we train supervised and deep learning algorithms to predict the mental illness of students during the COVID-19 situation. Our experiment reveals that supervised learning outperforms deep learning, with a 97% accuracy of the Support Vector Machine (SVM) for mental illness prediction. Random Forest (RF) achieves the best accuracy of 91% for the recovery suggestion prediction. Our android application can be used by parents, educational institutes, or the government to get the predicted result of a student’s mental illness status and take proper measures to overcome the situation.
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AIPSYCH:一个基于移动应用程序的人工精神病学家,用于预测学生的心理疾病和康复建议
COVID-19的爆发影响并迫使各行各业的人们在家中进行自我隔离,以防止病毒传播。由于坚持极其严格的指导方针,许多人患上了精神疾病。由于当时学校关闭,学生们一直呆在家里进行自我隔离。因此,有必要确定当时出现精神疾病的学生。为了开发基于移动应用程序的人工精神科医生AiPsych,我们训练监督学习和深度学习算法来预测新冠肺炎疫情期间学生的精神疾病。我们的实验表明,监督学习优于深度学习,支持向量机(SVM)预测精神疾病的准确率为97%。随机森林(Random Forest, RF)对恢复建议的预测准确率最高,达到91%。我们的android应用程序可以被家长、教育机构或政府使用,以获得学生精神疾病状态的预测结果,并采取适当的措施来克服这种情况。
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