An ensemble deep learning technique for detecting suicidal ideation from posts in social media platforms
Shini Renjith, Annie Abraham, Surya B.Jyothi, Lekshmi Chandran, Jincy, Thomson

TL;DR
This paper introduces a combined LSTM-Attention-CNN deep learning model to detect suicidal ideation from social media posts, achieving high accuracy and F1-score, thus aiding early intervention.
Contribution
It proposes a novel ensemble deep learning framework that integrates LSTM, attention mechanisms, and CNNs for improved detection of suicidal thoughts in social media data.
Findings
Achieved 90.3% accuracy in detecting suicidal ideation.
F1-score of 92.6%, outperforming baseline models.
Demonstrated effectiveness of combined deep learning models for mental health analysis.
Abstract
Suicidal ideation detection from social media is an evolving research with great challenges. Many of the people who have the tendency to suicide share their thoughts and opinions through social media platforms. As part of many researches it is observed that the publicly available posts from social media contain valuable criteria to effectively detect individuals with suicidal thoughts. The most difficult part to prevent suicide is to detect and understand the complex risk factors and warning signs that may lead to suicide. This can be achieved by identifying the sudden changes in a user behavior automatically. Natural language processing techniques can be used to collect behavioral and textual features from social media interactions and these features can be passed to a specially designed framework to detect anomalies in human interactions that are indicators of suicidal intentions. We…
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Taxonomy
MethodsTanh Activation · Sigmoid Activation · Long Short-Term Memory
