An Ensemble-Based Machine Learning Model for Emotion and Mental Health Detection

Annapurna Jonnalagadda, Manan Rajvir, Shovan Singh, S. Chandramouliswaran, Joshua George, Firuz Kamalov
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引用次数: 1

Abstract

Recent studies have highlighted several mental health problems in India, caused by factors such as lack of trained counsellors and a stigma associated with discussing mental health. These challenges have raised an increasing need for alternate methods that can be used to detect a person’s emotion and monitor their mental health. Existing research in this field explores several approaches ranging from studying body language to analysing micro-expressions to detect a person’s emotions. However, these solutions often rely on techniques that invade people’s privacy and thus face challenges with mass adoption. The goal is to build a solution that can detect people’s emotions, in a non-invasive manner. This research proposes a journaling web application wherein the users enter their daily reflections. The application extracts the user’s typing patterns (keystroke data) and primary phone usage data. It uses this data to train an ensemble machine learning model, which can then detect the user’s emotions. The proposed solution has various applications in today’s world. People can use it to keep track of their emotions and study their emotional health. Also, any individual family can use this application to detect early signs of anxiety or depression amongst the members.
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基于集成的情绪和心理健康检测机器学习模型
最近的研究强调了印度的一些心理健康问题,这些问题是由缺乏训练有素的咨询师以及与讨论心理健康相关的耻辱等因素造成的。这些挑战促使人们越来越需要可用于检测一个人的情绪和监测其心理健康的替代方法。该领域的现有研究探索了几种方法,从研究肢体语言到分析微表情来检测一个人的情绪。然而,这些解决方案往往依赖于侵犯人们隐私的技术,因此面临大规模采用的挑战。我们的目标是建立一种解决方案,以一种非侵入性的方式检测人们的情绪。本研究提出了一个日志web应用程序,其中用户输入他们的日常思考。该应用程序提取用户的打字模式(击键数据)和主要电话使用数据。它使用这些数据来训练一个集成机器学习模型,然后可以检测用户的情绪。提出的解决方案在当今世界有各种各样的应用。人们可以用它来记录自己的情绪,研究自己的情绪健康。此外,任何个人家庭都可以使用这个应用程序来检测成员之间焦虑或抑郁的早期迹象。
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