Recommender systems apply machine learning techniques for filtering unseen information and can predict whether a user would like a given item. In this paper, we propose a new algorithm that we call the Kernel-Mapping Recommender (KMR), which uses a novel structure learning technique. This paper makes the following contributions: we show how (1) user-based and item-based versions of the KMR algorithm can be built; (2) user-based and item-based versions can be combined; (3) more information—features, genre, etc.—can be employed using kernels and how this affects the final results; and (4) to make reliable recommendations under sparse, cold-start, and long tail scenarios. By extensive experimental results on five different datasets, we show th...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
Recommender systems apply data analysis techniques to the problem of helping users find the items th...
Recommender Systems are learning systems that make use of data representing multi-user preferences o...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
The purpose of recommender systems is to filter information unseen by a user to predict whether a us...
The task of recommender systems is to recommend items that fit the user's preferences. Recommender s...
Recommender systems apply machine learning methods to solve the task of providing appropriate sugges...
This timely book presents Applications in Recommender Systems which are making recommendations using...
User Reviews in the form of ratings giving an opportunity to judge the user interest on the availabl...
Nowadays, recommendation systems are used successfully to provide items (example: movies, music, boo...
Recommender systems have the ability to filter unseen information for predicting whether a particula...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
The increasing availability of implicit feedback datasets has raised the interest in developing effe...
This thesis addresses the new item problem in recommender systems, which pertains to the challenges ...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
Recommender systems apply data analysis techniques to the problem of helping users find the items th...
Recommender Systems are learning systems that make use of data representing multi-user preferences o...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
The purpose of recommender systems is to filter information unseen by a user to predict whether a us...
The task of recommender systems is to recommend items that fit the user's preferences. Recommender s...
Recommender systems apply machine learning methods to solve the task of providing appropriate sugges...
This timely book presents Applications in Recommender Systems which are making recommendations using...
User Reviews in the form of ratings giving an opportunity to judge the user interest on the availabl...
Nowadays, recommendation systems are used successfully to provide items (example: movies, music, boo...
Recommender systems have the ability to filter unseen information for predicting whether a particula...
In our daily life, time is of the essence. People do not have time to browse through hundreds of tho...
The increasing availability of implicit feedback datasets has raised the interest in developing effe...
This thesis addresses the new item problem in recommender systems, which pertains to the challenges ...
Recommender systems apply machine learning techniques for filtering unseen information and can predi...
Traditional approaches to recommender systems have often focused on the collaborative filtering prob...
Recommender systems apply data analysis techniques to the problem of helping users find the items th...
Recommender Systems are learning systems that make use of data representing multi-user preferences o...