The existing recommendation algorithms often rely heavily on the original score information in the user rating matrix. However, the user's rating of items does not fully reflect the user's real interest. Therefore, the key to improve the existing recommendation system algorithm effectively is to eliminate the influence of these unfavorable factors and the accuracy of the recommendation algorithm can be improved by correcting the original user rating information reasonably. This paper makes a comprehensive theoretical analysis and method design from three aspects: the quality of the item, the memory function of the user and the influence of the social friends trusted by the user on the user's rating. Based on these methods, this paper finall...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
Recommender Systems (RS) have emerged as an important response to the so-called information overload...
Relationships between users in social networks have been widely used to improve recommender systems....
Collaborative filtering is one of the most frequently used techniques in personalized recommendation...
Recommended system is beneficial to e-commerce sites, which provides customers with product informat...
Recommended system is beneficial to e-commerce sites, which provides customers with product informat...
Effective recommendation is indispensable to customized or personalized services. Collaborative filt...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
Abstract—Recommender systems are often used to provide useful recommendations for users. They use ...
AbstractTo recommend products to users according to their interests, research on recommended systems...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
Abstract The interaction and sharing of data based on network users make network information overexp...
Empirical thesis.Bibliography: pages 53-60.1. Introduction -- 2. Literature studies and related work...
The e-commerce recommendation system mainly includes content recommendation technology, collaborativ...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
Recommender Systems (RS) have emerged as an important response to the so-called information overload...
Relationships between users in social networks have been widely used to improve recommender systems....
Collaborative filtering is one of the most frequently used techniques in personalized recommendation...
Recommended system is beneficial to e-commerce sites, which provides customers with product informat...
Recommended system is beneficial to e-commerce sites, which provides customers with product informat...
Effective recommendation is indispensable to customized or personalized services. Collaborative filt...
Many trust-aware recommendation systems have emerged to overcome the problem of data sparsity, which...
Abstract—Recommender systems are often used to provide useful recommendations for users. They use ...
AbstractTo recommend products to users according to their interests, research on recommended systems...
Collaborative filtering is regarded as one of the most promising approaches in recommender systems. ...
Abstract The interaction and sharing of data based on network users make network information overexp...
Empirical thesis.Bibliography: pages 53-60.1. Introduction -- 2. Literature studies and related work...
The e-commerce recommendation system mainly includes content recommendation technology, collaborativ...
Background. In this article, we look at the key advances in collaborative filtering recommender syst...
AbstractIn this era of web, we have a huge amount of information overload over internet. To extract ...
Recommender Systems (RS) have emerged as an important response to the so-called information overload...
Relationships between users in social networks have been widely used to improve recommender systems....