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DiffuCOMET: Contextual Commonsense Knowledge Diffusion

Authors :
Gao, Silin
Ismayilzada, Mete
Zhao, Mengjie
Wakaki, Hiromi
Mitsufuji, Yuki
Bosselut, Antoine
Publication Year :
2024

Abstract

Inferring contextually-relevant and diverse commonsense to understand narratives remains challenging for knowledge models. In this work, we develop a series of knowledge models, DiffuCOMET, that leverage diffusion to learn to reconstruct the implicit semantic connections between narrative contexts and relevant commonsense knowledge. Across multiple diffusion steps, our method progressively refines a representation of commonsense facts that is anchored to a narrative, producing contextually-relevant and diverse commonsense inferences for an input context. To evaluate DiffuCOMET, we introduce new metrics for commonsense inference that more closely measure knowledge diversity and contextual relevance. Our results on two different benchmarks, ComFact and WebNLG+, show that knowledge generated by DiffuCOMET achieves a better trade-off between commonsense diversity, contextual relevance and alignment to known gold references, compared to baseline knowledge models.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.17011
Document Type :
Working Paper