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Nutrition Guided Recipe Search via Pre-trained Recipe Embeddings

机译:营养引导配方通过预先培训的食谱嵌入式搜索

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The use of machine learning to recommend foods that are both healthy and tasty is an open problem. Fundamentally, it is challenging to balance health goals with preferences in taste, while offering users a large diversity of options. Representing recipes via embedding vectors trained on large-scale food datasets can capture the implicit semantics of a recipe. We utilize pre-trained embeddings to perform recipe search and compare our search results with a keyword based search. We compare the health score, nutritional content and recipe titles returned using both search approaches. Our exploratory experiments show that recipe search via embeddings can return more diverse recipe titles in contrast to keyword based search.
机译:使用机器学习推荐健康和美味的食物是一个公开的问题。 从根本上说,在味道的偏好中平衡健康目标有挑战性,同时为用户提供了大量的选择。 通过嵌入矢量代表在大规模食品数据集上培训的传感器可以捕获配方的隐式语义。 我们利用预先训练的嵌入式来执行配方搜索并使用基于关键字的搜索进行搜索结果进行比较。 我们使用这两种搜索方法进行比较返回的健康评分,营养内容和配方标题。 我们的探索实验表明,通过嵌入式的配方搜索可以与基于关键字的搜索相比,返回更多样化的配方标题。

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