Authors
Shuo Chang, F Maxwell Harper, Loren Terveen
Publication date
2015/2/28
Conference
Proceedings of the 18th ACM Conference on Computer Supported Cooperative Work & Social Computing
Pages
1258-1269
Publisher
ACM
Description
To achieve high quality initial personalization, recommender systems must provide an efficient and effective process for new users to express their preferences. We propose that this goal is best served not by the classical method where users begin by expressing preferences for individual items - this process is an inefficient way to convert a user's effort into improved personalization. Rather, we propose that new users can begin by expressing their preferences for groups of items. We test this idea by designing and evaluating an interactive process where users express preferences across groups of items that are automatically generated by clustering algorithms. We contribute a strategy for recommending items based on these preferences that is generalizable to any collaborative filtering-based system. We evaluate our process with both offline simulation methods and an online user experiment. We find that, as …
Total citations
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Scholar articles
S Chang, FM Harper, L Terveen - Proceedings of the 18th ACM Conference on Computer …, 2015
S Chang, FM Harper, L Terveen - CSCW 2015: Proceedings of the 18th ACM Conference …, 2015