Author:
Tian Yijun,Zhang Chuxu,Metoyer Ronald,Chawla Nitesh V.
Abstract
Recipe recommendation systems play an important role in helping people find recipes that are of their interest and fit their eating habits. Unlike what has been developed for recommending recipes using content-based or collaborative filtering approaches, the relational information among users, recipes, and food items is less explored. In this paper, we leverage the relational information into recipe recommendation and propose a graph learning approach to solve it. In particular, we proposeHGAT, a novel hierarchical graph attention network for recipe recommendation. The proposed model can capture user history behavior, recipe content, and relational information through several neural network modules, including type-specific transformation, node-level attention, and relation-level attention. We further introduce a ranking-based objective function to optimize the model. Thorough experiments demonstrate thatHGAToutperforms numerous baseline methods.
Funder
National Institute of Food and Agriculture
Subject
Artificial Intelligence,Information Systems,Computer Science (miscellaneous)
Reference54 articles.
1. Analyzing user modeling on twitter for personalized news recommendations,;Abel,2011
2. Personality based recipe recommendation using recipe network graphs,;Adaji,2018
3. A generic coordinate descent framework for learning from implicit feedback,;Bayer,2017
4. Normalized (pointwise) mutual information in collocation extraction,;Bouma,2009
5. A cooking recipe multi-label classification approach for food restriction identification,;Britto,2020
Cited by
14 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献