Collaborative filtering with low regret

Year
2016
Type(s)
Author(s)
G. Bresler, D. Shah, L.F. Voloch
Source
Proceedings of the 2016 ACM SIGMETRICS International Conference on Measurement and Modeling of Computer Science, pp. 207-220
Url
https://dl.acm.org/citation.cfm?id=2901469

There is much empirical evidence that item-item collaborative filtering works well in practice. Motivated to understand this, we provide a framework to design and analyze various recommendation algorithms. The setup amounts to online binary matrix completion, where at each time a random user requests a recommendation and the algorithm chooses an entry to reveal in the user’s row. The goal is to minimize regret, or equivalently to maximize the number of +1 entries revealed at any time. We analyze an item-item collaborative filtering algorithm that can achieve fundamentally better performance compared to user-user collaborative filtering. The algorithm achieves good “cold-start” performance (appropriately defined) by quickly making good recommendations to new users about whom there is little information.