Boosted ranking models: a unifying framework for ranking predictions

作者:Kevin Dela Rosa, Vangelis Metsis, Vassilis Athitsos

摘要

Ranking is an important functionality in a diverse array of applications, including web search, similarity-based multimedia retrieval, nearest neighbor classification, and recommendation systems. In this paper, we propose a new method, called Boosted Ranking Model (BRM), for learning how to rank from training data. An important feature of the proposed method is that it is domain-independent and can thus be applied to a wide range of ranking domains. The main contribution of the new method is that it reduces the problem of learning how to rank to the much more simple, and well-studied problem of constructing an optimized binary classifier from simple, weak classifiers. Using that reduction, our method constructs an optimized ranking model using multiple simple, easy-to-define ranking models as building blocks. The new method is a unifying framework that includes, as special cases, specific methods that we have proposed in earlier publications for specific ranking applications, such as nearest neighbor retrieval and classification. In this paper, we reformulate those earlier methods as special cases of the proposed BRM method, and we also illustrate a novel application of BRM, on the problem of making movie recommendations to individual users.

论文关键词:Ranking models, Learning, Boosting, Recommendation systems

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论文官网地址:https://doi.org/10.1007/s10115-011-0390-8