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ID 118923
Author
Dou, Rongyu Tokushima University
Keywords
Neuro-Symbolic AI
Depression detection
Social media analysis
Early intervention
Sentiment analysis
Content Type
Journal Article
Description
This paper introduces TAM-SenticNet, a Neuro-Symbolic AI framework uniquely designed for early depression detection through social media content analysis. Merging neural networks for feature extraction and sentiment analysis with advanced symbolic reasoning, TAM-SenticNet overcomes the limitations of traditional diagnostic tools, particularly in real-time responsiveness and interpretability. The symbolic reasoning, powered by SenticNet, provides a deep, structured understanding of emotional expressions, greatly enhancing model explainability and logical inference. Empirical evaluations reveal that TAM-SenticNet excels beyond existing models in performance metrics, achieving a Precision of 0.665, Recall of 0.881, and F1-score of 0.758, coupled with superior latency metrics, including ERDE5 and ERDE50 at 0.025, LatencyTP at 1.0, and Flatency at 0.675. These achievements highlight TAM-SenticNet’s cutting-edge approach to early depression detection, making it a pioneering tool in the application of AI for mental health informatics.
Journal Title
Computers and Electrical Engineering
ISSN
18790755
00457906
NCID
AA00613548
AA11527073
Publisher
Elsevier
Volume
114
Start Page
109071
Published Date
2024-01-20
Remark
論文本文は2026-01-20以降公開予定
Rights
© 2024. This manuscript version is made available under the CC-BY-NC-ND 4.0 license https://creativecommons.org/licenses/by-nc-nd/4.0/
EDB ID
DOI (Published Version)
URL ( Publisher's Version )
language
eng
TextVersion
その他
departments
Science and Technology