Reliable Multi-Class Mental Health Prediction Using a WiSARD Discriminator Model on Imbalanced Data

ML-based mental disorder prediction plays an increasingly important role in early screening, clinical decision support, and personalized mental healthcare. However, reliable multi-class classification remains challenging due to high dimensionality, class imbalance, and subtle psychological features. This study describes an interpretable, RAM-based WiSARD classifier for the multi-disorder mental health prediction problem and compares its performance to established models. A retrospective…

via https://pubmed.ncbi.nlm.nih.gov/41782170/?utm_source=Other&utm_medium=rss&utm_campaign=None&utm_content=1HYeX0emtvYgH07Wkz0a8n9otrdMd-JIklc_uo0I5vh1u9WMEy&fc=None&ff=20260307010804&v=2.19.0.post6+133c1fe


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