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Semantic Feature Verification in FLAN-T5 (2304.05591v1)
Published 12 Apr 2023 in cs.CL, cs.AI, and cs.LG
Abstract: This study evaluates the potential of a LLM for aiding in generation of semantic feature norms - a critical tool for evaluating conceptual structure in cognitive science. Building from an existing human-generated dataset, we show that machine-verified norms capture aspects of conceptual structure beyond what is expressed in human norms alone, and better explain human judgments of semantic similarity amongst items that are distally related. The results suggest that LLMs can greatly enhance traditional methods of semantic feature norm verification, with implications for our understanding of conceptual representation in humans and machines.
- Siddharth Suresh (11 papers)
- Kushin Mukherjee (9 papers)
- Timothy T. Rogers (15 papers)