Transformer Based Approach for Depression Detection

Anagha Anil Khaparde, Rik Das, Rupal Bhargava
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引用次数: 0

Abstract

Mental health of a person plays equivalent significant role in ensuring their wellbeing as their physical health. A great deal of work and e ffort has gone into increasing awareness of this issue. One su ch effort is made by the discipline of computer science, whic h makes use of social media data to give more information in identifying these mental illnesses. People are increasingly usi ng internet platforms to voice our suicide ideas as technology advances quickly. The purpose of the study is to identify a person's indicators of depression based on their social media postings, where users express their feelings and emotions. The goal of this study is to develop three models-Naive Bayes, Pre-Trained Model BERT, and XLNET-and compare their performance in identifying depression from messages on Twitter. These models are pre-processed using the Tweet preprocessor and BERT embeddings, and then the pretrained models are fine-tuned. With an accuracy of 0.9942, it was found that Bert performed better than the other two models.
基于变压器的凹陷检测方法
一个人的心理健康与身体健康在确保其福祉方面具有同等重要的作用。为了提高人们对这个问题的认识,我们做了大量的工作和努力。计算机科学学科就做出了这样的努力,它利用社交媒体数据来提供更多信息,以识别这些精神疾病。随着科技的快速发展,人们越来越多地使用互联网平台来表达自己的自杀想法。这项研究的目的是根据用户在社交媒体上表达自己的感受和情绪的帖子来确定一个人的抑郁指标。本研究的目标是开发三种模型——朴素贝叶斯、预训练模型BERT和xlnet——并比较它们在从Twitter信息中识别抑郁症方面的表现。使用Tweet预处理器和BERT嵌入对这些模型进行预处理,然后对预训练的模型进行微调。准确率为0.9942,发现Bert的表现优于其他两个模型。
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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