Saprativa Bhattacharjee


2025

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ReDepress: A Cognitive Framework for Detecting Depression Relapse from Social Media
Aakash Kumar Agarwal | Saprativa Bhattacharjee | Mauli Rastogi | Jemima S. Jacob | Biplab Banerjee | Rashmi Gupta | Pushpak Bhattacharyya
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

Almost 50% depression patients face the risk of going into relapse. The risk increases to 80% after the second episode of depression. Although, depression detection from social media has attained considerable attention, depression relapse detection has remained largely unexplored due to the lack of curated datasets and the difficulty of distinguishing relapse and non-relapse users. In this work, we present ReDepress, the first clinically validated social media dataset focused on relapse, comprising 204 Reddit users annotated by mental health professionals. Unlike prior approaches, our framework draws on cognitive theories of depression, incorporating constructs such as attention bias, interpretation bias, memory bias and rumination into both annotation and modeling. Through statistical analyses and machine learning experiments, we demonstrate that cognitive markers significantly differentiate relapse and non-relapse groups, and that models enriched with these features achieve competitive performance, with transformer-based temporal models attaining an F1 of 0.86. Our findings validate psychological theories in real-world textual data and underscore the potential of cognitive-informed computational methods for early relapse detection, paving the way for scalable, low-cost interventions in mental healthcare.

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“My life is miserable, have to sign 500 autographs everyday”: Exposing Humblebragging, the Brags in Disguise
Sharath Naganna | Saprativa Bhattacharjee | Biplab Banerjee | Pushpak Bhattacharyya
Findings of the Association for Computational Linguistics: ACL 2025

Humblebragging is a phenomenon in which individuals present self-promotional statements under the guise of modesty or complaints. For example, a statement like, “Ugh, I can’t believe I got promoted to lead the entire team. So stressful!”, subtly highlights an achievement while pretending to be complaining. Detecting humblebragging is important for machines to better understand the nuances of human language, especially in tasks like sentiment analysis and intent recognition. However, this topic has not yet been studied in computational linguistics. For the first time, we introduce the task of automatically detecting humblebragging in text. We formalize the task by proposing a 4-tuple definition of humblebragging and evaluate machine learning, deep learning, and large language models (LLMs) on this task, comparing their performance with humans. We also create and release a dataset called HB-24, containing 3,340 humblebrags generated using GPT-4o. Our experiments show that detecting humblebragging is non-trivial, even for humans. Our best model achieves an F1-score of 0.88. This work lays the foundation for further exploration of this nuanced linguistic phenomenon and its integration into broader natural language understanding systems.

2022

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A Multi-Task Learning Approach for Summarization of Dialogues
Saprativa Bhattacharjee | Kartik Shinde | Tirthankar Ghosal | Asif Ekbal
Proceedings of the 15th International Conference on Natural Language Generation: Generation Challenges

We describe our multi-task learning based ap- proach for summarization of real-life dialogues as part of the DialogSum Challenge shared task at INLG 2022. Our approach intends to im- prove the main task of abstractive summariza- tion of dialogues through the auxiliary tasks of extractive summarization, novelty detection and language modeling. We conduct extensive experimentation with different combinations of tasks and compare the results. In addition, we also incorporate the topic information provided with the dataset to perform topic-aware sum- marization. We report the results of automatic evaluation of the generated summaries in terms of ROUGE and BERTScore.

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Novelty Detection in Community Question Answering Forums
Tirthankar Ghosal | Vignesh Edithal | Tanik Saikh | Saprativa Bhattacharjee | Asif Ekbal | Pushpak Bhattacharyya
Proceedings of the 36th Pacific Asia Conference on Language, Information and Computation