This paper proposes a reinforcement learning based tag recommendation algorithm to deal with the data sparseness that affects the performance stability of collaborative filtering algorithms. Our algorithm integrates user tags into traditional collaborative filtering algorithms and attaching importance to user interest shift in the process of user interest learning process. Empirical Cases of comparing with traditional collaborative filtering algorithms indicate that our recommend algorithm exhibits better performance competition. © 2011 Springer-Verlag Berlin Heidelberg.This paper proposes a reinforcement learning based tag recommendation algorithm to deal with the data sparseness that affects the performance stability of collaborative...
Abstract—Recommender systems have become an important research area both in industry and academia ov...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
The first part of this thesis concludes with an overall summary of the publications so far on the re...
In this work we present a novel item recommendation ap-proach that aims at improving Collaborative F...
In the world of recommender systems, it is a common practice to use public available datasets from d...
Recommender systems are devoted to find and automatically recommend valuable information and service...
Important aspect in the modern e-learning systems is selecting the most adequate learning materials...
Recommender systems can be seen everywheretoday, having endless possibilities of implementation. How...
Recommender systems help users find information by recommending content that a user might not know a...
This article presents TagRec, a framework to foster reproducible evaluation and development of recom...
Recommendation systems are information filtering systems that deal with information overload by help...
Recently, the application of deep reinforcement learning in the recommender system is flourishing an...
Selecting the most useful learning resources is very important aspect in the modern e-learning syste...
In this paper, we introduce TagRec, a standardized tag recommender benchmarking framework implemente...
ABSTRACT Exploiting social tag information has been a popular way to improve recommender systems in ...
Abstract—Recommender systems have become an important research area both in industry and academia ov...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
The first part of this thesis concludes with an overall summary of the publications so far on the re...
In this work we present a novel item recommendation ap-proach that aims at improving Collaborative F...
In the world of recommender systems, it is a common practice to use public available datasets from d...
Recommender systems are devoted to find and automatically recommend valuable information and service...
Important aspect in the modern e-learning systems is selecting the most adequate learning materials...
Recommender systems can be seen everywheretoday, having endless possibilities of implementation. How...
Recommender systems help users find information by recommending content that a user might not know a...
This article presents TagRec, a framework to foster reproducible evaluation and development of recom...
Recommendation systems are information filtering systems that deal with information overload by help...
Recently, the application of deep reinforcement learning in the recommender system is flourishing an...
Selecting the most useful learning resources is very important aspect in the modern e-learning syste...
In this paper, we introduce TagRec, a standardized tag recommender benchmarking framework implemente...
ABSTRACT Exploiting social tag information has been a popular way to improve recommender systems in ...
Abstract—Recommender systems have become an important research area both in industry and academia ov...
As the Internet becomes larger in size, its information content threatens to be-come overwhelming. T...
The first part of this thesis concludes with an overall summary of the publications so far on the re...