RankFromSets: Scalable set recommendation with optimal recall Journal Article


Authors: Altosaar, J.; Ranganath, R.; Tansey, W.
Article Title: RankFromSets: Scalable set recommendation with optimal recall
Abstract: We study a variant of user-item recommendation where each item has a set of attributes, such as tags on an image, user reactions to a post or foods in a meal. We focus on the latter example, with the goal of building a meal recommender for a diet tracking app. Meal recommendation is challenging: (i) each item (meal) is rarely logged by more than a handful of users, (ii) the database of attributes (foods) is large, and (iii) each item is tagged with only a handful of attributes. We propose RankFromSets (RFS), a flexible and scalable class of models for recommending items with attributes. RFS treats item attributes as set-valued side information and learns embeddings to discriminate items a user will consume from items a user is unlikely to consume. We develop theory connecting the RFS objective to optimal recall and show that the learnable class of models for RFS is a superset of several previously proposed models. We then develop a stochastic optimization method for RFS that uses negative sampling to scale to massive problems like meal recommendation. In experiments on a real dataset of 55k users logging 16M meals, the new method outperforms competing approaches while learning embeddings that reveal interpretable structure in user behavior. Code is available on GitHub (https://github.com/altosaar/rankfromsets).
Keywords: models; food recommendation; document recommendation; permutation invariant; content-based recommender systems
Journal Title: Stat
Volume: 10
Issue: 1
ISSN: 2049-1573
Publisher: Wiley Blackwell  
Date Published: 2021-12-01
Start Page: e363
Language: English
ACCESSION: WOS:000631049600001
DOI: 10.1002/sta4.363
PROVIDER: Clarivate Analytics Web of Science
PROVIDER: wos
Notes: Article -- Source: Wos
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  1. Wesley Tansey
    15 Tansey