Science of Machine Learning

Learning from a large number of feature combinations

- CFM: low-rank regression with global optimality guarantees -

Abstract

Convex Factorization Machines (CFM) are a high-accuracy regression model that can handle a large number of feature combinations. CFM is general-purpose and can be applied to a wide range of tasks: e.g., house price prediction, recommender systems and genome analysis. The proposed method can handle a large number of feature combinations by using a low-rank constraint. Moreover, it is guaranteed to obtain a global optimum. In future work, to further improve predictive accuracy, we plan to support higher-order feature combinations. Besides recommender systems, applications include predicting combinations of genes that are responsible for diseases, which would help find effective cures.

Photos

Poster


Please click the thumbnail image to open the full-size PDF file.

Presenters

Mathieu Blondel
Mathieu Blondel
Ueda Research Laboratory
Akinori Fujino
Akinori Fujino
Innovative Communication Laboratory
Yoichi Chikahara
Yoichi Chikahara
Innovative Communication Laboratory