AI RESEARCH
Words that make SENSE: Sensorimotor Norms in Learned Lexical Token Representations
arXiv CS.CL
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ArXi:2602.00469v2 Announce Type: replace While word embeddings derive meaning from co-occurrence patterns, human language understanding is grounded in sensory and motor experience. We present $\text{SENSE}$ $(\textbf{S}\text{ensorimotor }$ $\textbf{E}\text{mbedding }$ $\textbf{N}\text{orm }$ $\textbf{S}\text{coring }$ $\textbf{E}\text{ngine})$, a learned projection model that predicts Lancaster sensorimotor norms from word lexical embeddings.