Title
Multi-Resolution Attention for Personalized Item Search
Abstract
ABSTRACTPersonalized item search has become an essential tool for online platforms---where users interact with a large corpus of items (e.g., click, purchase, like) via a search query---to provide their users with a more satisfactory search experience. The record (or history) of users' past interactions serves as a valuable asset to achieve personalization. While user history data can span over a long period of time, only a part of the history is relevant to a user's current search intent. Moreover, since historical interactions take place at aperiodic points in time, modeling their relevance to the current search query entangles complex temporal dependencies. We propose multi-resolution attention to address these challenges for personalized item search. Our approach captures higher-order temporal relations between user queries and their history across several temporal subspaces (i.e., resolutions), each corresponding to distinct temporal ranges with adaptive time boundaries that are also learned directly from data. We achieve this by coupling the conventional multi-head attention module with a differentiable soft-thresholding mechanism, which essentially operates as a masking function in the temporal domain. Comparisons with strong baselines on an open-source benchmark dataset confirm the efficacy of our approach.
Year
DOI
Venue
2022
10.1145/3488560.3498426
WSDM
Keywords
DocType
Citations 
item search, personalization, temporal attention, multi-resolution attention, recommender systems
Conference
0
PageRank 
References 
Authors
0.34
0
8
Name
Order
Citations
PageRank
Furkan Kocayusufoglu100.34
Tao Wu221.04
Anima Singh300.34
Georgios Roumpos441.14
Heng-Tze Cheng561226.54
Sagar Jain61235.63
Ed H. Chi74806371.21
Ambuj Singh800.34