Collaborative filtering plays the key role in recent recommender systems. It uses a user-item preference matrix rated either explicitly (i.e., explicit rating) or implicitly (i.e., implicit feedback). Despite the explicit rating captures the preferences better, it often results in a severely sparse matrix. The paper presents a novel iterative semi-explicit rating method that extrapolates unrated elements in a semi-supervised manner. Extrapolation is simply an aggregation of neighbor ratings, and iterative extrapolations result in a dense preference matrix. Preliminary simulation results show that the recommendation using the semi-explicit rating data Outperforms that of using the pure explicit data only. (C) 2008 Elsevier Ltd. All rights re...
We develop a novel framework, named as l-injection, to address the sparsity problem of recommender s...
Recommender systems use ratings from users on items such as movies and music for the purpose of pred...
Collaborative filtering techniques work by estimating a user’s potential preferences on unconsumed i...
In online recommender systems, we use computerized algorithms to present articles targeted at the pr...
Recommender systems help users find information by recommending content that a user might not know a...
There are two primary ways of collecting preferences of users towards items. In the first method, us...
Past work on the evaluation of recommender systems indicates that collaborative filtering algorithms...
Recommender systems are by far one of the most successful applications of big data and machine learn...
Collaborative filtering (CF) methods are popular for recommender systems. In this paper we focus on ...
In this paper, we develop a reliably weighted collaborative filtering system that first tries to pre...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Recommendation systems are emerging as an important business application as the demand for personali...
Ratings by users on various items such as hotels and movies have become easily available on the Web....
This paper describes an approach for improving the accuracy of memory-based collaborative filtering,...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
We develop a novel framework, named as l-injection, to address the sparsity problem of recommender s...
Recommender systems use ratings from users on items such as movies and music for the purpose of pred...
Collaborative filtering techniques work by estimating a user’s potential preferences on unconsumed i...
In online recommender systems, we use computerized algorithms to present articles targeted at the pr...
Recommender systems help users find information by recommending content that a user might not know a...
There are two primary ways of collecting preferences of users towards items. In the first method, us...
Past work on the evaluation of recommender systems indicates that collaborative filtering algorithms...
Recommender systems are by far one of the most successful applications of big data and machine learn...
Collaborative filtering (CF) methods are popular for recommender systems. In this paper we focus on ...
In this paper, we develop a reliably weighted collaborative filtering system that first tries to pre...
In recent years, recommender systems have become widely utilized by businesses across industries. Gi...
Recommendation systems are emerging as an important business application as the demand for personali...
Ratings by users on various items such as hotels and movies have become easily available on the Web....
This paper describes an approach for improving the accuracy of memory-based collaborative filtering,...
This paper investigates the significance of numeric user ratings in recommender systems by consideri...
We develop a novel framework, named as l-injection, to address the sparsity problem of recommender s...
Recommender systems use ratings from users on items such as movies and music for the purpose of pred...
Collaborative filtering techniques work by estimating a user’s potential preferences on unconsumed i...