Enhancing Depressive Post Detection in Bangla: A Comparative Study of TF-IDF, BERT and FastText Embeddings

Saad Ahmed, Mahdi H Sazan, Miraz A B M Muntasir, Rahman, Saad Ahmed Sazan, Mahdi H. Miraz, M. M. Rahman
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Abstract

Due to massive adoption of social media, detection of users' depression through social media analytics bears significant importance, particularly for underrepresented languages, such as Bangla. This study introduces a well-grounded approach to identify depressive social media posts in Bangla, by employing advanced natural language processing techniques. The dataset used in this work, annotated by domain experts, includes both depressive and non-depressive posts, ensuring high-quality data for model training and evaluation. To address the prevalent issue of class imbalance, we utilised random oversampling for the minority class, thereby enhancing the model's ability to accurately detect depressive posts. We explored various numerical representation techniques, including Term Frequency-Inverse Document Frequency (TF-IDF), Bidirectional Encoder Representations from Transformers (BERT) embedding and FastText embedding, by integrating them with a deep learning-based Convolutional Neural Network-Bidirectional Long Short-Term Memory (CNN-BiLSTM) model. The results obtained through extensive experimentation, indicate that the BERT approach performed better the others, achieving a F1-score of 84%. This indicates that BERT, in combination with the CNN-BiLSTM architecture, effectively recognises the nuances of Bangla texts relevant to depressive contents. Comparative analysis with the existing state-of-the-art methods demonstrates that our approach with BERT embedding performs better than others in terms of evaluation metrics and the reliability of dataset annotations. Our research significantly contribution to the development of reliable tools for detecting depressive posts in the Bangla language. By highlighting the efficacy of different embedding techniques and deep learning models, this study paves the way for improved mental health monitoring through social media platforms.
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增强孟加拉语中的抑郁帖检测:TF-IDF、BERT 和 FastText 嵌入的比较研究
由于社交媒体的广泛应用,通过社交媒体分析检测用户的抑郁情绪具有重要意义,尤其是对于代表性不足的语言,如孟加拉语。本研究采用先进的自然语言处理技术,介绍了一种识别孟加拉语社交媒体抑郁帖子的可靠方法。这项工作中使用的数据集由领域专家注释,包括抑郁和非抑郁帖子,确保了用于模型训练和评估的高质量数据。为了解决普遍存在的类不平衡问题,我们对少数群体类进行了随机超采样,从而提高了模型准确检测抑郁帖子的能力。我们探索了各种数字表示技术,包括词频-反向文档频率(TF-IDF)、变换器双向编码器表示(BERT)嵌入和 FastText 嵌入,并将它们与基于深度学习的卷积神经网络-双向长短期记忆(CNN-BiLSTM)模型相结合。大量实验结果表明,BERT 方法的性能优于其他方法,F1 分数达到 84%。这表明,BERT 与 CNN-BiLSTM 架构相结合,能有效识别孟加拉语文本中与抑郁内容相关的细微差别。与现有最先进方法的比较分析表明,我们的 BERT 嵌入方法在评估指标和数据集注释的可靠性方面都优于其他方法。我们的研究为开发检测孟加拉语抑郁帖子的可靠工具做出了重大贡献。通过强调不同嵌入技术和深度学习模型的功效,本研究为通过社交媒体平台改进心理健康监测工作铺平了道路。
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