Determining intensity of mental state of an unsound individual through text using ML
Abstract
This research investigates the application of machine learning to detect and classify
the intensity of various mental health conditions through text analysis. By analyzing
user-generated statements, the study aims to identify patterns that correspond
to different mental health states, such as Anxiety, Depression, Bipolar Disorder,
and Suicidal tendencies. Through rigorous text preprocessing and feature extraction
methods, meaningful insights are drawn from the data. The performance of
the proposed approach is evaluated through standard metrics, demonstrating its
potential to support mental health professionals by automating the initial stages of
mental health screening. The findings highlight key challenges, such as language
complexity and emotional context, and offer directions for future work to enhance
the system’s accuracy and adaptability. This research provides a foundation for developing
scalable, automated tools that could be integrated into mental health care
and online support platforms.