Identification of neighbourhood based on multi-clusters has been successfully applied to recommender systems, increasing recommendation accuracy and eliminating divergence related to a difference in clustering schemes. The algorithm M-CCF was developed for this purpose that was described in author\u27s previous papers. However, the solution do not equally take advantage on all the partitionings. Selection of clusters to forward to recommender system\u27s input, without deterioration in recommendation accuracy, can simplify its structure. The article describes a solution of a cluster selection based on entropy measure between clustering schemes, eliminating ones, which are redundant. The results reported in this paper confirmed its positive ...
The proficiently-liked technology for recommender system is collaborative filtering. The current CF ...
Recommendation systems play an important role in filtering and customizing the desired information. ...
One of the main problems being faced at the time of performing data clustering consists in the deter...
Identification of neighbourhood based on multi-clusters has been successfully applied to recommender...
Identifying a neighbourhood based on multi-clusters was successfully applied to recommender systems,...
Recommender Systems have been intensively used in Information Systems in the last decades, facilitat...
Cataloged from PDF version of article.In-memory nearest neighbor computation is a typical collaborat...
In this paper we present the recommender systems that use the k-means clustering method in order to ...
Part 3: Machine LearningInternational audienceIn user memory based collaborative filtering algorithm...
Recommender systems have the ability to filter unseen information for predicting whether a particula...
Recommender systems apply information filtering technologies to identify a set of items that could b...
Collaborative filtering (CF) is a well-known and successful filtering technique that has its own lim...
This research explores the application of clustering techniques and frequency normalization in colla...
This thesis investigates application of clustering to multi-criteria ratings as a method of improvin...
In the last few years, cluster ensembles have emerged as powerful techniques that integrate multiple...
The proficiently-liked technology for recommender system is collaborative filtering. The current CF ...
Recommendation systems play an important role in filtering and customizing the desired information. ...
One of the main problems being faced at the time of performing data clustering consists in the deter...
Identification of neighbourhood based on multi-clusters has been successfully applied to recommender...
Identifying a neighbourhood based on multi-clusters was successfully applied to recommender systems,...
Recommender Systems have been intensively used in Information Systems in the last decades, facilitat...
Cataloged from PDF version of article.In-memory nearest neighbor computation is a typical collaborat...
In this paper we present the recommender systems that use the k-means clustering method in order to ...
Part 3: Machine LearningInternational audienceIn user memory based collaborative filtering algorithm...
Recommender systems have the ability to filter unseen information for predicting whether a particula...
Recommender systems apply information filtering technologies to identify a set of items that could b...
Collaborative filtering (CF) is a well-known and successful filtering technique that has its own lim...
This research explores the application of clustering techniques and frequency normalization in colla...
This thesis investigates application of clustering to multi-criteria ratings as a method of improvin...
In the last few years, cluster ensembles have emerged as powerful techniques that integrate multiple...
The proficiently-liked technology for recommender system is collaborative filtering. The current CF ...
Recommendation systems play an important role in filtering and customizing the desired information. ...
One of the main problems being faced at the time of performing data clustering consists in the deter...