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poster
Coconut: Contextualized Commonsense Unified Transformers for Graph-Based Commonsense Augmentation of Language Models
keywords:
commonsense augmentation
commonsense knowledge graphs
commonsense knowledge generation
In this paper, we introduce COCONUT to effectively guide the contextualization of structured commonsense knowledge based on large language models. COCONUT employs a contextualized knowledge prompting scheme to gather high-quality contextualization examples from a large language model. These examples are subsequently distilled into small language models to enhance their contextualization capability. Extensive evaluations show that COCONUT considerably improves commonsense reasoning performance across diverse benchmarks, models, and settings, exhibiting its flexibility and universality in generating contextualized commonsense knowledge. Notably, COCONUT consistently outperforms the state-of-the-art technique by an average of 5.8%.