使用机器学习方法预测肯尼亚个人心理健康状况

Yara E. Alharahsheh, Malak Abdullah
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引用次数: 4

摘要

心理健康疾病影响着世界各地的知名人士。据世卫组织称,全球有2.64亿人受到抑郁症这一精神健康疾病的影响。缺乏有关该疾病的资源导致难以诊断和提供有效治疗,这最终增加了病例数量。抑郁症影响到一些缺乏疾病知识和资源的国家,例如精神科医生、精神科护士、心理心理学家。在肯尼亚,近50%的人口患有多种抑郁症。本文旨在找到一种鲁棒可靠的监督机器学习分类器,该分类器可以给出最佳的性能评估,以预测个人是否可能患有抑郁症。这项研究是基于肯尼亚布萨拉中心的一项数据调查。我们评估了不同的机器学习方法,SVM、Random Forest、Ada Boosting和Voting-Ensemble模型分别以0.78和85%的准确率获得了最高的f1分和准确率。
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Predicting Individuals Mental Health Status in Kenya using Machine Learning Methods
Mental Health diseases affect prominent individuals worldwide. According to WHO, 264 million people globally are affected by one mental health disease, depression. The lack of resources about the disease causes the difficulty of diagnosis and producing an efficient treatment, which eventually increases the number of cases. Depression affects several countries with a lack of knowledge about the disease and lack of resources, such as psychiatrists, psychiatric nurses, mental psychologists. In Kenya, almost 50% of its population suffers from many depression cases. This paper aims to find a robust reliable supervised Machine Learning classifier that gives the best performance evaluation for predicting if an individual is likely suffering from depression or not. The study is based on a data survey made by Busara Center in Kenya. We evaluate different machine learning methods, SVM, Random Forest, Ada Boosting, and Voting-Ensemble models scored the highest f1-score and accuracy with 0.78 and 85%, respectively.
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