AI RESEARCH
LaScA: Language-Conditioned Scalable Modelling of Affective Dynamics
arXiv CS.CL
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ArXi:2604.07193v1 Announce Type: new Predicting affect in unconstrained environments remains a fundamental challenge in human-centered AI. While deep neural embeddings dominate contemporary approaches, they often lack interpretability and limit expert-driven refinement. We propose a novel framework that uses Language Models (LMs) as semantic context conditioners over handcrafted affect descriptors to model changes in Valence and Arousal. Our approach begins with interpretable facial geometry and acoustic features derived from structured domain knowledge.