Collaborative filtering is a popular method for personalizing product recommendations. Maximum Margin Matrix Factorization (MMMF) has been proposed as one successful learning approach to this task and has been recently extended to structured ranking losses. In this paper we discuss a number of extensions to MMMF by introducing offset terms, item dependent regularization and a graph kernel on the recommender graph. We show equivalence between graph kernels and the recent MMMF extensions by Mnih and Salakhutdinov (Advances in Neural Information Processing Systems 20, 2008). Experimental evaluation of the introduced extensions show improved performance over the original MMMF formulation
We present a Matrix Factorization(MF) based approach for the Netflix Prize competition. Currently MF...
Collaborative filtering is an important topic in data mining and has been widely used in recommendat...
Collaborative filtering is one of the most popular techniques in designing recommendation systems, a...
Collaborative filtering is a popular method for personalizing product recommendations. Maximum Margi...
Collaborative filtering is a popular method for personalizing product recommendations. Maximum Margi...
We present a novel approach to collaborative prediction, using low-norm instead of low-rank factori...
Abstract. Item recommendation from implicit, positive only feedback is an emerging setup in collabor...
In this paper, we consider collaborative filtering as a ranking problem. We present a method which u...
In this paper, we consider collaborative filtering as a ranking problem. We present a method which u...
Matrix factorization models, as one of the most powerful Collaborative Filtering approaches, have gr...
In this paper, we consider collaborative filtering as a ranking problem. We present a method which u...
Matrix-Factorization (MF) is an accurate and scalable approach for collaborative filtering (CF)-base...
Maximum Margin Matrix Factorization (MMMF) was recently suggested (Srebro et al., 2005) as a convex,...
Code recommender systems ease the use and learning of software frameworks and libraries by recommend...
Matrix Factorization (MF) is one of the most successful Collaborative Filtering (CF) techniques used...
We present a Matrix Factorization(MF) based approach for the Netflix Prize competition. Currently MF...
Collaborative filtering is an important topic in data mining and has been widely used in recommendat...
Collaborative filtering is one of the most popular techniques in designing recommendation systems, a...
Collaborative filtering is a popular method for personalizing product recommendations. Maximum Margi...
Collaborative filtering is a popular method for personalizing product recommendations. Maximum Margi...
We present a novel approach to collaborative prediction, using low-norm instead of low-rank factori...
Abstract. Item recommendation from implicit, positive only feedback is an emerging setup in collabor...
In this paper, we consider collaborative filtering as a ranking problem. We present a method which u...
In this paper, we consider collaborative filtering as a ranking problem. We present a method which u...
Matrix factorization models, as one of the most powerful Collaborative Filtering approaches, have gr...
In this paper, we consider collaborative filtering as a ranking problem. We present a method which u...
Matrix-Factorization (MF) is an accurate and scalable approach for collaborative filtering (CF)-base...
Maximum Margin Matrix Factorization (MMMF) was recently suggested (Srebro et al., 2005) as a convex,...
Code recommender systems ease the use and learning of software frameworks and libraries by recommend...
Matrix Factorization (MF) is one of the most successful Collaborative Filtering (CF) techniques used...
We present a Matrix Factorization(MF) based approach for the Netflix Prize competition. Currently MF...
Collaborative filtering is an important topic in data mining and has been widely used in recommendat...
Collaborative filtering is one of the most popular techniques in designing recommendation systems, a...