Ingredient Substitute Recommendation Based on Collaborative Filtering and Recipe Context for Automatic Allergy-Safe Recipe Generation

L. Pacífico, Larissa F. S. Britto, Teresa B Ludermir
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引用次数: 3

Abstract

Recipe sharing websites have become even more popular in the past few decades, and such repositories are able to keep hundreds of thousands of cooking recipes at the same time. Many recipe websites are developed with the participation of their community of users, which are allowed to upload new recipes and to provide evaluations and comments on the available recipes. However, in such repositories, the amount of recipes that are safe for users with special needs, such as food restrictions or allergies, is much smaller than ordinary food recipes, what may restrict the access and usability provided by such websites to that public. In this work, we propose a new recipe recommendation and generation system, based on a data-driven approach for single ingredient substitution, in such a way that recipes containing forbidden ingredients, according to a category of user food restrictions, are adapted by replacing such ingredients by safe ingredients. The proposed ingredient substitute recommendation system is based on a filtering process that takes into consideration the original recipe context, the relationship among sets of ingredients and the user preferences, towards the generation of recipes that are safe, and at the same time contemplate both user needs and tastes. The proposed system is evaluated by means of a qualitative analysis, showing promising results.
基于协同过滤和配方上下文的自动过敏安全配方生成的成分替代推荐
在过去的几十年里,食谱分享网站变得更加流行,这样的存储库可以同时保存成千上万的烹饪食谱。许多食谱网站都是在用户社区的参与下开发的,用户可以上传新的食谱,并对现有的食谱进行评估和评论。然而,在这样的存储库中,对于有特殊需求(如食物限制或过敏)的用户来说安全的食谱数量比普通的食物食谱要少得多,这可能会限制此类网站向公众提供的访问和可用性。在这项工作中,我们提出了一种新的食谱推荐和生成系统,基于数据驱动的单一成分替代方法,通过这种方式,根据用户食品限制的类别,通过将含有禁用成分的食谱替换为安全成分来适应这些成分。所提出的配料替代品推荐系统基于一个过滤过程,该过程考虑了原始配方上下文、配料集之间的关系和用户偏好,以生成安全的配方,同时考虑了用户的需求和口味。采用定性分析的方法对所提出的系统进行了评价,显示出令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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