This paper presents a novel approach for user classification exploiting multi- criteria analysis. This method is based on measuring the distance between an observation and its respective Pareto front. The obtained results show that the combination of the standard KNN classification and the distance from Pareto fronts gives satisfactory classification accuracy – higher than the accuracy ob- tained for each of these methods applied separately. Conclusions from this study may be applied in recommender systems where the proposed method can be implemented as the part of the collaborative filtering algorithm
Recommender system is a sub part of information retrieval. It decreases the content searching time, ...
Abstract—This study focuses on developing the multicriteria collaborative filtering algorithm for im...
User-based collaborative filtering is one of the most popular recommendation methods, however, it ha...
This paper presents a novel approach for user classification exploiting multicriteriaanalysis. This ...
Whenever people have to choose seeing or buying an item among many others, they are based on their o...
Summarization: Nowadays, recommender systems are considered to be a valuable tool for internet marke...
Abstract. Recent studies have indicated that the application of Multi-Criteria Decision Making (MCDM...
Traditional Collaborative Filtering (CF) recommender systems recommend the items to users based on t...
Recommender systems are software applications that attempt to reduce information overload. Their g...
Recommender systems are powerful online tools that help to overcome problems of information overload...
Recommender systems are software applications that attempt to reduce information overload. Their goa...
Multi-criteria collaborative filtering schemes allow modeling user preferences in a more detailed ma...
In this paper we propose a multi-criteria recommender system based on collaborative filtering (CF) t...
Recommender systems were created to represent user preferences for the purpose of suggesting items t...
Summarization: Personalized profiles that describe user behaviour and preferences are encountered in...
Recommender system is a sub part of information retrieval. It decreases the content searching time, ...
Abstract—This study focuses on developing the multicriteria collaborative filtering algorithm for im...
User-based collaborative filtering is one of the most popular recommendation methods, however, it ha...
This paper presents a novel approach for user classification exploiting multicriteriaanalysis. This ...
Whenever people have to choose seeing or buying an item among many others, they are based on their o...
Summarization: Nowadays, recommender systems are considered to be a valuable tool for internet marke...
Abstract. Recent studies have indicated that the application of Multi-Criteria Decision Making (MCDM...
Traditional Collaborative Filtering (CF) recommender systems recommend the items to users based on t...
Recommender systems are software applications that attempt to reduce information overload. Their g...
Recommender systems are powerful online tools that help to overcome problems of information overload...
Recommender systems are software applications that attempt to reduce information overload. Their goa...
Multi-criteria collaborative filtering schemes allow modeling user preferences in a more detailed ma...
In this paper we propose a multi-criteria recommender system based on collaborative filtering (CF) t...
Recommender systems were created to represent user preferences for the purpose of suggesting items t...
Summarization: Personalized profiles that describe user behaviour and preferences are encountered in...
Recommender system is a sub part of information retrieval. It decreases the content searching time, ...
Abstract—This study focuses on developing the multicriteria collaborative filtering algorithm for im...
User-based collaborative filtering is one of the most popular recommendation methods, however, it ha...