Koushik L


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2024

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Detecting Suicide Risk Patterns using Hierarchical Attention Networks with Large Language Models
Koushik L | Vishruth M | Anand Kumar M
Proceedings of the 9th Workshop on Computational Linguistics and Clinical Psychology (CLPsych 2024)

Suicide has become a major public health and social concern in the world . This Paper looks into a method through use of LLMs (Large Lan- guage Model) to extract the likely reason for a person to attempt suicide , through analysis of their social media text posts detailing about the event , using this data we can extract the rea- son for the cause such mental state which can provide support for suicide prevention. This submission presents our approach for CLPsych Shared Task 2024. Our model uses Hierarchi- cal Attention Networks (HAN) and Llama2 for finding supporting evidence about an individ- ual’s suicide risk level.

2023

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Interns@LT-EDI : Detecting Signs of Depression from Social Media Text
Koushik L | Hariharan R. L | Anand Kumar M
Proceedings of the Third Workshop on Language Technology for Equality, Diversity and Inclusion

This submission presents our approach for depression detection in social media text. The methodology includes data collection, preprocessing - SMOTE, feature extraction/selection - TF-IDF and Glove, model development- SVM, CNN and Bi-LSTM, training, evaluation, optimisation, and validation. The proposed methodology aims to contribute to the accurate detection of depression.