AI RESEARCH
Learning Context-Conditioned Predicate Semantics via Prototype Feedback
arXiv CS.AI
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ArXi:2605.29610v1 Announce Type: cross In scene graph generation, a central challenge is modeling polysemous predicates whose meanings shift across contexts. Prior approaches address this issue by decomposing predicates into multiple static prototypes or retrieving semantically similar exemplars. However, these strategies keep predicate representations static and cannot reorganize semantics to reflect image-specific evidence, leading to systematic confusions in ambiguous contexts. We propose AlignG, which learns context-conditioned predicate semantics via prototype feedback.