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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 CO-CONUT 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 stateof-the-art technique by an average of 5.8% 1 . Q. What do people use to absorb extra ink from a fountain pen?
Park et al. (Mon,) studied this question.