LGIRMLJul 10, 2014

Bandits Warm-up Cold Recommender Systems

arXiv:1407.2806v113 citations
Originality Incremental advance
AI Analysis

This work addresses the cold start problem for recommender systems, bridging matrix factorization and contextual bandits, but it is incremental as it builds on existing methods.

The paper tackles the cold start problem in recommendation systems without contextual information by proposing an online setting inspired by bandit frameworks, linking contextual bandits to matrix factorization to create a new algorithm that effectively addresses exploration/exploitation, with experimental evidence showing effectiveness on public datasets.

We address the cold start problem in recommendation systems assuming no contextual information is available neither about users, nor items. We consider the case in which we only have access to a set of ratings of items by users. Most of the existing works consider a batch setting, and use cross-validation to tune parameters. The classical method consists in minimizing the root mean square error over a training subset of the ratings which provides a factorization of the matrix of ratings, interpreted as a latent representation of items and users. Our contribution in this paper is 5-fold. First, we explicit the issues raised by this kind of batch setting for users or items with very few ratings. Then, we propose an online setting closer to the actual use of recommender systems; this setting is inspired by the bandit framework. The proposed methodology can be used to turn any recommender system dataset (such as Netflix, MovieLens,...) into a sequential dataset. Then, we explicit a strong and insightful link between contextual bandit algorithms and matrix factorization; this leads us to a new algorithm that tackles the exploration/exploitation dilemma associated to the cold start problem in a strikingly new perspective. Finally, experimental evidence confirm that our algorithm is effective in dealing with the cold start problem on publicly available datasets. Overall, the goal of this paper is to bridge the gap between recommender systems based on matrix factorizations and those based on contextual bandits.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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