Recommender systems are an important kind of learning systems, which can be achieved by latent-factor (LF)-based collaborative filtering (CF) with high efficiency and scalability. LF-based CF models rely on an optimization process with respect to some desired latent features; however, most of them employ first-order optimization algorithms, e.g., gradient decent schemes, to conduct their optimization task, thereby failing in discovering patterns reflected by higher order information. This work proposes to build a new LF-based CF model via second-order optimization to achieve higher accuracy. We first investigate a Hessian-free optimization framework, and employ its principle to avoid direct usage of the Hessian matrix by computing its produ...
In this age of information overload and plethora of choices, people increasingly rely on automatic r...
Collaborative filtering (CF)-based recommenders are achieved by matrix factorization (MF) to obtain ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Nonnegative matrix factorization (NMF)-based models possess fine representativeness of a target matr...
Recommender system has become an effective tool for information filtering, which usually provides th...
Recently, matrix factorization has produced state-of-the-art results in recommender systems. However...
Collaborative Filtering (CF) is one of the most successful learning techniques in building real-worl...
Matrix factorization models, as one of the most powerful Collaborative Filtering approaches, have gr...
Recommendation systems are emerging as an important business application as the demand for personali...
Collaborative filtering (CF) is a widely used approach in recommender systems to solve many real-wor...
Matrix-Factorization (MF) is an accurate and scalable approach for collaborative filtering (CF)-base...
Collaborative filtering (CF) methods are popular for recommender systems. In this paper we focus on ...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
A recommender system (RS) is highly efficient in filtering people's desired information from high-di...
International audienceLatent factor models have been used widely in collaborative filtering based re...
In this age of information overload and plethora of choices, people increasingly rely on automatic r...
Collaborative filtering (CF)-based recommenders are achieved by matrix factorization (MF) to obtain ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...
Nonnegative matrix factorization (NMF)-based models possess fine representativeness of a target matr...
Recommender system has become an effective tool for information filtering, which usually provides th...
Recently, matrix factorization has produced state-of-the-art results in recommender systems. However...
Collaborative Filtering (CF) is one of the most successful learning techniques in building real-worl...
Matrix factorization models, as one of the most powerful Collaborative Filtering approaches, have gr...
Recommendation systems are emerging as an important business application as the demand for personali...
Collaborative filtering (CF) is a widely used approach in recommender systems to solve many real-wor...
Matrix-Factorization (MF) is an accurate and scalable approach for collaborative filtering (CF)-base...
Collaborative filtering (CF) methods are popular for recommender systems. In this paper we focus on ...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
A recommender system (RS) is highly efficient in filtering people's desired information from high-di...
International audienceLatent factor models have been used widely in collaborative filtering based re...
In this age of information overload and plethora of choices, people increasingly rely on automatic r...
Collaborative filtering (CF)-based recommenders are achieved by matrix factorization (MF) to obtain ...
Thesis: S.M., Massachusetts Institute of Technology, Department of Electrical Engineering and Comput...