CookingSense: A Culinary Knowledgebase with Multidisciplinary Assertions
Choi, Donghee, Gim, Mogan, Park, Donghyeon, Sung, Mujeen, Kim, Hyunjae, Kang, Jaewoo, Choi, Jihun
–arXiv.org Artificial Intelligence
This paper introduces CookingSense, a descriptive collection of knowledge assertions in the culinary domain extracted from various sources, including web data, scientific papers, and recipes, from which knowledge covering a broad range of aspects is acquired. CookingSense is constructed through a series of dictionary-based filtering and language model-based semantic filtering techniques, which results in a rich knowledgebase of multidisciplinary food-related assertions. Additionally, we present FoodBench, a novel benchmark to evaluate culinary decision support systems. From evaluations with FoodBench, we empirically prove that CookingSense improves the performance of retrieval augmented language models.
arXiv.org Artificial Intelligence
May-1-2024
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