Mental State Detection From Tweets By Machine Learning

Nabiul Farhan Nabil, Ashadullah Galib, Takumi Sase
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Abstract

The world over, mental illness is a serious issue. Many people use the social media that may affect their mental health positively, but often result in negative sentiments. This research aims to determine an individual's mental state based on their social media behavior on Twitter. We analysed a dataset including 170000 real tweets by using natural language processing and machine learning techniques. Decision tree, support vector machine, and recurrent neural network (RNN) were used for classifying twitter users, to detect if they are in positive or negative mental state. These models were compared to determine which approach provides more accurate detection of a positive/negative mental state. Then, the RNN yielded the highest accuracy 0.76 among the models, with the precision, recall, and the F_1 score being 0.75, 0.74, and 0.75, respectively. The truncated singular value decomposition was also utilised to visualise the high-dimensional feature space of the data.
通过机器学习从推特中检测精神状态
在世界各地,精神疾病是一个严重的问题。许多人使用社交媒体可能会对他们的心理健康产生积极影响,但往往会导致负面情绪。这项研究旨在根据一个人在推特上的社交媒体行为来确定他们的精神状态。我们通过使用自然语言处理和机器学习技术分析了包含170000条真实推文的数据集。使用决策树、支持向量机和递归神经网络(RNN)对twitter用户进行分类,检测他们是处于积极还是消极的心理状态。对这些模型进行比较,以确定哪种方法能更准确地检测出积极/消极的精神状态。RNN的准确率最高,为0.76,准确率为0.75,召回率为0.74,F_1得分为0.75。截断奇异值分解也被用来可视化数据的高维特征空间。
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