Comparative Study of Anxiety Symptom’s Predictions From Discord Chat Messages using Automl

Anishka Duvvuri, Navya Kovvuri, Sneka Kumar, Rebecca Victor, Tanush Kaushik
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Abstract

Anxiety is a chronic illness especially during the Covid and post-pandemic era. It’s important to diagnose anxiety in its early stages. Traditional Machine learning (ML) methods have been developmental intense procedures to detect mental health issues, but Automated machine learning (AutoML) is a method whereby the novice user can build a model to detect a phenomenon such as Generalized Anxiety Disorder (GAD) fairly easily. In this study we evaluate a popular AutoML technique with recent chat engine (Discord) conversation dataset using anxiety hashtags. This multi-symptom AutoML Random Forest predictive model is at least 75+% accurate with the most prevalent symptom, namely restlessness. This could be a very useful first step in diagnosing GAD by medical professionals and their less skilled hospital’s IT area using pre diagnostic textual conversations. But it lacks high quality in predicting GAD in most symptoms as found by a low 50% precision on most symptoms (except 5). The AutoML technology is quicker for IT professionals and gives a decent performance, but it can be improved upon by more sophisticated ANN methods like Convolution neural networks that plug AutoML’s symptom’s deficiencies with at least 80+% precision and 0.4+% in F1 score, namely in detecting poorly predicted symptoms of concentration and irritability.
使用Automl对不和谐聊天信息预测焦虑症状的比较研究
焦虑是一种慢性病,尤其是在新冠疫情和大流行后时代。在早期阶段诊断焦虑是很重要的。传统的机器学习(ML)方法已经发展为检测心理健康问题的密集程序,但自动机器学习(AutoML)是一种方法,新手用户可以建立一个模型来相当容易地检测广泛性焦虑障碍(GAD)等现象。在本研究中,我们使用焦虑标签评估了最近聊天引擎(Discord)对话数据集的流行AutoML技术。这种多症状AutoML随机森林预测模型对于最普遍的症状,即躁动,至少有75%以上的准确率。这可能是医学专业人员和他们技术较差的医院IT领域使用诊断前文本对话诊断广泛性焦虑症的非常有用的第一步。但它在预测大多数症状的广泛性焦虑症方面缺乏高质量,因为大多数症状的准确率低于50%(除了5)。AutoML技术对it专业人员来说更快,表现也不错,但它可以通过更复杂的人工神经网络方法得到改进,比如卷积神经网络,它可以以至少80% +%的准确率和0.4+%的F1分数来弥补AutoML症状的不足,即检测注意力集中和易怒等预测不佳的症状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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