Detecting Emotional Trends in mHealth Conversations Using Deep Learning Sentiment Analysis

Dr. Sarah Kiran

Abstract


This research develops a deep learning-based sentiment analysis model to detect emotional trends in mHealth conversations. By identifying shifts in emotional tone through NLP techniques, the system helps healthcare providers track patients' mental health progress.

References


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