Advancing Depression Detection on Social Media Platforms Through Fine-Tuned Large Language Models (2409.14794v1)
Abstract: This study investigates the use of LLMs for improved depression detection from users social media data. Through the use of fine-tuned GPT 3.5 Turbo 1106 and LLaMA2-7B models and a sizable dataset from earlier studies, we were able to identify depressed content in social media posts with a high accuracy of nearly 96.0 percent. The comparative analysis of the obtained results with the relevant studies in the literature shows that the proposed fine-tuned LLMs achieved enhanced performance compared to existing state of the-art systems. This demonstrates the robustness of LLM-based fine-tuned systems to be used as potential depression detection systems. The study describes the approach in depth, including the parameters used and the fine-tuning procedure, and it addresses the important implications of our results for the early diagnosis of depression on several social media platforms.
- Shahid Munir Shah (8 papers)
- Syeda Anshrah Gillani (3 papers)
- Mirza Samad Ahmed Baig (3 papers)
- Muhammad Aamer Saleem (1 paper)
- Muhammad Hamzah Siddiqui (2 papers)