Recommendation bias towards objects has been found to have an impact on personalized recommendation, since objects present heterogeneous characteristics in some network-based recommender systems. In this article, based on a biased heat conduction recommendation algorithm (BHC) which considers the heterogeneity of the target objects, we propose a heterogeneous heat conduction algorithm (HHC), by further taking the heterogeneity of the source objects into account. Tested on three real datasets, the Netflix, RYM and MovieLens, the HHC algorithm is found to present better recommendation in both the accuracy and diversity than two benchmark algorithms, i.e., the original BHC and a hybrid algorithm of heat conduction and mass diffusion (HHM), whi...
The rapid expansion of Internet brings us overwhelming online information, which is impossible for a...
<p>Collaborative filtering approaches have produced some of the most accurate and personalized recom...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
In this paper, by taking into account effects of the user and object correlations on a heat conducti...
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
Finding a universal description of the algorithm optimization is one of the key challenges in person...
Recommender systems use the historical activities and personal profiles of users to uncover their pr...
Recently, in physical dynamics, mass-diffusion–based recommendation algorithms on bipartite network ...
Recommender systems are promising ways to filter the abundant information in modern society. Their a...
Recommender systems provide a promising way to address the information overload problem which is com...
The recommender system is a very promising way to address the problem of overabundant information fo...
Recommender systems use the records of users' activities and profiles of both users and products to...
Recommender systems apply machine learning methods to solve the task of providing appropriate sugges...
Recommender systems are of great significance in predicting the potential interesting items based on...
The rapid expansion of Internet brings us overwhelming online information, which is impossible for a...
<p>Collaborative filtering approaches have produced some of the most accurate and personalized recom...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...
In this paper, by taking into account effects of the user and object correlations on a heat conducti...
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
Accuracy and diversity are two important aspects to evaluate the performance of recommender systems....
Finding a universal description of the algorithm optimization is one of the key challenges in person...
Recommender systems use the historical activities and personal profiles of users to uncover their pr...
Recently, in physical dynamics, mass-diffusion–based recommendation algorithms on bipartite network ...
Recommender systems are promising ways to filter the abundant information in modern society. Their a...
Recommender systems provide a promising way to address the information overload problem which is com...
The recommender system is a very promising way to address the problem of overabundant information fo...
Recommender systems use the records of users' activities and profiles of both users and products to...
Recommender systems apply machine learning methods to solve the task of providing appropriate sugges...
Recommender systems are of great significance in predicting the potential interesting items based on...
The rapid expansion of Internet brings us overwhelming online information, which is impossible for a...
<p>Collaborative filtering approaches have produced some of the most accurate and personalized recom...
Cold start is the most frequent issue faced by recommender systems (RS). The reason for its happenin...