Graph Attention Network for Text Classification and Detection of Mental Disorder

Author:

Ahmed Usman1,Lin Jerry Chun-Wei1,Srivastava Gautam2

Affiliation:

1. Western Norway University of Applied Sciences, Norway

2. China Medical University, Taiwan and Lebanese American University, Lebanon and Brandon University, Canada

Abstract

A serious issue in today’s society is Depression which can have a devastating impact on a person’s ability to cope in daily life. Numerous studies have examined the use of data generated directly from users using social media to diagnose and detect Depression as a mental illness. Therefore, we decided to investigate the language used in individuals’ personal expressions to identify depressive symptoms via social media. Graph Attention Networks (GATs) are used in this study as a solution to the problems associated with text classification of depression. These GATs can be constructed using masked self-attention layers. Rather than requiring expensive matrix operations such as similarity or knowledge of network architecture, this study implicitly assigns weights to each node in a neighbourhood. This is possible because nodes and words can carry the properties and sentiments of their neighbours. Another aspect of the study that contributed to the expansion of the emotion lexicon was the use of hypernyms. As a result, our method performs better when applied to data from the Reddit subreddit Depression. Our experiments show that the emotion lexicon constructed by using the Graph Attention Network ROC achieves 0.91 while remaining simple and interpretable.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference44 articles.

1. Juan Aguilera , Delia Irazú Hernández Farías , Rosa María Ortega-Mendoza, and Manuel Montes-y Gómez. 2021 . Depression and anorexia detection in social media as a one-class classification problem. Applied Intelligence( 2021), 1–16. Juan Aguilera, Delia Irazú Hernández Farías, Rosa María Ortega-Mendoza, and Manuel Montes-y Gómez. 2021. Depression and anorexia detection in social media as a one-class classification problem. Applied Intelligence(2021), 1–16.

2. Usman Ahmed , Jerry Chun-Wei Lin , and Gautam Srivastava . 2021 . Fuzzy Explainable Attention-based Deep Active Learning on Mental-Health Data. In 2021 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE). IEEE, 1–6. Usman Ahmed, Jerry Chun-Wei Lin, and Gautam Srivastava. 2021. Fuzzy Explainable Attention-based Deep Active Learning on Mental-Health Data. In 2021 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE). IEEE, 1–6.

3. Usman Ahmed , Jerry Chun-Wei Lin, and Gautam Srivastava . 2022 . Social Media Multiaspect Detection by Using Unsupervised Deep Active Attention. IEEE Transactions on Computational Social Systems ( 2022). Usman Ahmed, Jerry Chun-Wei Lin, and Gautam Srivastava. 2022. Social Media Multiaspect Detection by Using Unsupervised Deep Active Attention. IEEE Transactions on Computational Social Systems (2022).

4. Attention-Based Deep Entropy Active Learning Using Lexical Algorithm for Mental Health Treatment

5. Detecting Depression in Social Media using Fine-Grained Emotions

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