© 1989-2012 IEEE. Matrix factorization has been widely applied to various applications. With the fast development of storage and internet technologies, we have been witnessing a rapid increase of data. In this paper, we propose new algorithms for matrix factorization with the emphasis on efficiency. In addition, most existing methods of matrix factorization only consider a general smooth least square loss. Differently, many real-world applications have distinctive characteristics. As a result, different losses should be used accordingly. Therefore, it is beneficial to design new matrix factorization algorithms that are able to deal with both smooth and non-smooth losses. To this end, one needs to analyze the characteristics of target data a...
The novel algorithm proposed in this thesis will improve the non-negative matrix factorization. It w...
This thesis is a comprehensive study of matrix factorization methods used in recommender systems. We...
Recommender systems are algorithms that suggest content or products to users on the internet. These ...
In this age of information overload and plethora of choices, people increasingly rely on automatic r...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
Low rank matrix factorization is an important step in many high dimensional machine learning algorit...
Abstract. Matrix factorization, when the matrix has missing values, has become one of the leading te...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
Recently, convex solutions to low-rank matrix factorization problems have received increasing attent...
Alternating minimization is a technique for solving non-convex optimization problems by alternating ...
Matrix factorization is a common task underlying several machine learning applications such as recom...
One of the most popular methods in recommender systems are matrix factorization (MF) models. In this...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
Recommender systems aim to personalize the experience of user by suggesting items to the user based ...
Matrix-Factorization (MF) is an accurate and scalable approach for collaborative filtering (CF)-base...
The novel algorithm proposed in this thesis will improve the non-negative matrix factorization. It w...
This thesis is a comprehensive study of matrix factorization methods used in recommender systems. We...
Recommender systems are algorithms that suggest content or products to users on the internet. These ...
In this age of information overload and plethora of choices, people increasingly rely on automatic r...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
Low rank matrix factorization is an important step in many high dimensional machine learning algorit...
Abstract. Matrix factorization, when the matrix has missing values, has become one of the leading te...
Matrix factorization (or low-rank matrix completion) with missing data is a key computation in many ...
Recently, convex solutions to low-rank matrix factorization problems have received increasing attent...
Alternating minimization is a technique for solving non-convex optimization problems by alternating ...
Matrix factorization is a common task underlying several machine learning applications such as recom...
One of the most popular methods in recommender systems are matrix factorization (MF) models. In this...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
Recommender systems aim to personalize the experience of user by suggesting items to the user based ...
Matrix-Factorization (MF) is an accurate and scalable approach for collaborative filtering (CF)-base...
The novel algorithm proposed in this thesis will improve the non-negative matrix factorization. It w...
This thesis is a comprehensive study of matrix factorization methods used in recommender systems. We...
Recommender systems are algorithms that suggest content or products to users on the internet. These ...