Explainable AI for Mental Disorder Detection via Social Media: A survey and outlook
Mental health constitutes a complex and pervasive global challenge, affecting millions of lives and often leading to severe consequences. In this paper, we conduct a thorough survey to explore the intersection of data science, artificial intelligence, and mental healthcare, focusing on the recent de...
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Zusammenfassung: | Mental health constitutes a complex and pervasive global challenge, affecting
millions of lives and often leading to severe consequences. In this paper, we
conduct a thorough survey to explore the intersection of data science,
artificial intelligence, and mental healthcare, focusing on the recent
developments of mental disorder detection through online social media (OSM). A
significant portion of the population actively engages in OSM platforms,
creating a vast repository of personal data that holds immense potential for
mental health analytics. The paper navigates through traditional diagnostic
methods, state-of-the-art data- and AI-driven research studies, and the
emergence of explainable AI (XAI) models for mental healthcare. We review
state-of-the-art machine learning methods, particularly those based on modern
deep learning, while emphasising the need for explainability in healthcare AI
models. The experimental design section provides insights into prevalent
practices, including available datasets and evaluation approaches. We also
identify key issues and challenges in the field and propose promising future
research directions. As mental health decisions demand transparency,
interpretability, and ethical considerations, this paper contributes to the
ongoing discourse on advancing XAI in mental healthcare through social media.
The comprehensive overview presented here aims to guide researchers,
practitioners, and policymakers in developing the area of mental disorder
detection. |
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DOI: | 10.48550/arxiv.2406.05984 |