Polynomial Networks and Factorization Machines: New Insights and Efficient Training Algorithms
Blondel, Mathieu, Ishihata, Masakazu, Fujino, Akinori, Ueda, Naonori
Polynomial networks and factorization machines are two recently-proposed models that can efficiently use feature interactions in classification and regression tasks. In this paper, we revisit both models from a unified perspective. Based on this new view, we study the properties of both models and propose new efficient training algorithms. Key to our approach is to cast parameter learning as a low-rank symmetric tensor estimation problem, which we solve by multi-convex optimization. We demonstrate our approach on regression and recommender system tasks.
artificial intelligence, optimization problem, polynomial network and factorization machine, (15 more...)
Jul-29-2016