Bundle recommendation systems aim to recommend a bundle of items for a user to consider as a whole. They have become a norm in modern life and have been applied to many real-world settings, such as product bundle recommendation, music playlist recommendation and travel package recommendation. However, compared to studies of bundle recommendation approaches in areas such as online shopping and digital music services, research on meal recommendations for restaurants in the hospitality industry has made limited progress, due largely to the lack of high-quality benchmark datasets. A publicly available dataset specialising in meal recommendation research for the research community is in urgent demand. In this paper, we introduce a meal recommendation dataset (MealRec) that aims to facilitate future research. MealRec is constructed from the user review records of Allrecipe.com, covering 1,500+ users, 7,200+ recipes and 3,800+ meals. Each recipe is described with rich information, such as ingredients, instructions, pictures, category and tags, etc; and each meal is three-course, consisting of an appetizer, a main dish and a dessert. Furthermore, we propose a category-constrained meal recommendation model that is evaluated through comparative experiments with several state-of-the-art bundle recommendation methods on MealRec. Experimental results confirm the superiority of our model and demonstrate that MealRec is a promising testbed for meal recommendation related research. The MealRec dataset and the source code of our proposed model are available at https://github.com/WUT-IDEA/MealRec for access and reproducibility.
翻译:捆绑建议系统旨在建议一系列项目,供用户整体考虑,它们已成为现代生活的一个规范,并已应用于许多现实世界环境,例如产品捆绑建议、音乐播放列表建议和旅行包建议;然而,与在线购物和数字音乐服务等领域的捆绑建议方法研究相比,招待业餐厅膳食建议研究进展有限,这主要是因为缺乏高质量的基准数据集;迫切需要为研究界提供公开的食品建议研究专用数据集;在本文件中,我们引入了食品建议数据集(MealRec),目的是便利未来的研究。MealRec是从Allrecipe.com的用户审查记录中构建的,涵盖1 500+用户、7 200+食谱和3 800+膳食。每种食谱都有丰富的信息描述,如原料、指示、图片、类别和标签等;每餐谱有三种模式,包括烹饪、主要餐盘和甜点。此外,我们提出一个经过分类的膳食建议模式建议模型模型,旨在便利未来的研究。我们通过比较性试验方法,用一个具有前景的实验结果来评估我们的食品实验结果。