Learning from Sets of Items in Recommender Systems
Mohit Sharma, F.Maxwell Harper, and George Karypis

TL;DR
This paper explores how set-level ratings in recommender systems can enhance preference modeling, addressing privacy concerns and increasing the amount of usable preference data, with new collaborative filtering methods that account for user biases in set ratings.
Contribution
It introduces models that explicitly incorporate user tendencies to under- or over-rate sets, improving item rating predictions from set-level data.
Findings
Set ratings often reflect the average of item ratings
Users exhibit consistent under- or over-rating behaviors
Models can accurately recover individual item ratings from set ratings
Abstract
Most of the existing recommender systems use the ratings provided by users on individual items. An additional source of preference information is to use the ratings that users provide on sets of items. The advantages of using preferences on sets are two-fold. First, a rating provided on a set conveys some preference information about each of the set's items, which allows us to acquire a user's preferences for more items that the number of ratings that the user provided. Second, due to privacy concerns, users may not be willing to reveal their preferences on individual items explicitly but may be willing to provide a single rating to a set of items, since it provides some level of information hiding. This paper investigates two questions related to using set-level ratings in recommender systems. First, how users' item-level ratings relate to their set-level ratings. Second, how…
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Taxonomy
TopicsRecommender Systems and Techniques
