Affiliation:
1. Delhi Technological University Department of Computer Science and Engineering, , Shahbad Daulatpur, Main Bawana Road, Delhi 10042, India
Abstract
Abstract
Due to the absence of early facilities, a large population is dealing with stress, anxiety, and depression issues, which may have disastrous consequences, including suicide. Past studies revealed a direct relationship between the high engagement with social media and the increasing depression rate. This research initially creates a dataset with text, emoticons and image data, and then preprocessing is performed using diverse techniques. The proposed model in the research consists of three parts: first is textual bidirectional encoder representations from transformers (BERT), which is trained on only text data and also emoticons are converted into a textual form for easy processing; second is convolutional neural network (CNN), which is trained only on image data; and the third is the combination of best-performing models, i.e. hybrid of BERT and CNN (BERT-CNN), to work on both the text and images with enhanced accuracy. The results show the best accuracy with BERT, i.e. 97% for text data; for image data, CNN has attained the highest accuracy of 89%. Finally, the hybrid approach is compared with other combinations and previous studies; it achieved the best accuracy of 99% in the categorization of users into depressive and non-depressive based on multimodal data.
Publisher
Oxford University Press (OUP)
Reference57 articles.
1. Depression detection from social network data using machine learning techniques;Islam;Health Inf. Sci. Syst.,2018
2. Machine learning-based approach for depression detection in Twitter using content and activity features;IEICE Transactions on Information and Systems
3. Every hour, one student commits suicide in India,2022
4. Social media and suicide: a public health perspective;Luxton;Am. J. Public Health,2012
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