Regret Guarantees for Item-Item Collaborative Filtering

Year
2015
Type(s)
Author(s)
G. Bresler, D. Shah, L.F. Voloch
Source
arXiv:1507.05371, 2017
Url
https://arxiv.org/pdf/1507.05371.pdf

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.