Predicting what items will be selected by a target user in the future is an important function for recommendation systems. Matrix factorization techniques have been shown to achieve good performance on temporal rating-type data, but little is known about temporal item selection data. In this paper, we developed a unified model that combines Multi-task Non-negative Matrix Factorization and Linear Dynamical Systems to capture the evolution of user preferences. Specifically, user and item features are projected into latent factor space by factoring co-occurrence matrices into a common basis item-factor matrix and multiple factor-user matrices. Moreover, we represented both within and between relationships of multiple factor-user matrices using...
In the last decade, collaborative filtering approaches have shown their effectiveness in computing a...
In recent years, with the growing amount of data online, it is becoming more and more difficult to f...
As an important factor for improving recommendations, time information has been introduced to model ...
Predicting what items will be selected by a target user in the future is an important function for r...
In real-world recommender systems, some users are easily influenced by new products and whereas othe...
User preferences change over time and capturing such changes is essential for developing accurate re...
In real-world recommender systems, some users are easily influenced by new products and whereas othe...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
The collaborative filtering (CF) technique has been widely utilized in recommendation systems due to...
AbstractRecommendation Systems (RSs) are becoming tools of choice to select the online information r...
Abstract. Real-world Recommender Systems are often facing drifts in users ’ preferences and shifts i...
Collaborative filtering (CF) techniques recommend items to users based on their historical ratings. ...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
The rating matrix of a recommendation system contains a high percentage of data sparsity which lower...
In real-world recommender systems, user preferences are dynamic and typically change over time...
In the last decade, collaborative filtering approaches have shown their effectiveness in computing a...
In recent years, with the growing amount of data online, it is becoming more and more difficult to f...
As an important factor for improving recommendations, time information has been introduced to model ...
Predicting what items will be selected by a target user in the future is an important function for r...
In real-world recommender systems, some users are easily influenced by new products and whereas othe...
User preferences change over time and capturing such changes is essential for developing accurate re...
In real-world recommender systems, some users are easily influenced by new products and whereas othe...
Recommender systems collect various kinds of data to create their recommendations. Collaborative fil...
The collaborative filtering (CF) technique has been widely utilized in recommendation systems due to...
AbstractRecommendation Systems (RSs) are becoming tools of choice to select the online information r...
Abstract. Real-world Recommender Systems are often facing drifts in users ’ preferences and shifts i...
Collaborative filtering (CF) techniques recommend items to users based on their historical ratings. ...
Users may show a behavioral pattern in consuming the items. For example, one might assume that a use...
The rating matrix of a recommendation system contains a high percentage of data sparsity which lower...
In real-world recommender systems, user preferences are dynamic and typically change over time...
In the last decade, collaborative filtering approaches have shown their effectiveness in computing a...
In recent years, with the growing amount of data online, it is becoming more and more difficult to f...
As an important factor for improving recommendations, time information has been introduced to model ...