The final publication is available at Springer via http://dx.doi.org/10.1007/s11257-016-9172-zThe new user problem in recommender systems is still challenging, and there is not yet a unique solution that can be applied in any domain or situation. In this paper we analyze viable solutions to the new user problem in collaborative filtering (CF) that are based on the exploitation of user personality information: (a) personality-based CF, which directly improves the recommendation prediction model by incorporating user personality information, (b) personality-based active learning, which utilizes personality information for identifying additional useful preference data in the target recommendation domain to be elicited from the user, and (c) pe...
In this modern era of technology and information, e-learning has become an integral part of learning...
The information overload experienced by peo- ple who use online services and read user- generated co...
The new user cold start issue represents a serious problem in recommender systems as it can lead to ...
Collaborative filtering (CF), one of the most successful recommendation approaches, continues to att...
Recommender systems have emerged, as an intelligent information filtering tool, to help users effect...
Existing Recommender Systems mainly focus on exploiting users’ feedback, e.g., ratings, and reviews...
The growth of Internet commerce has stimulated the use of collaborative filtering (CF) algorithms as...
Abstract. In Collaborative Filtering Recommender Systems user’s pref-erences are expressed in terms ...
Recommender systems use variety of data mining techniques and algorithms to identify relevant prefer...
Recommendation system is the reason of success for most of the social media companies as well as e-c...
Abstract. Our previous research indicates that using personality quizzes is a viable and promising w...
Personal recommendation systems nowadays are very important in web applications because of the avai...
With the constant increase in the amount of information available in online communities, the task of...
The recommender system (RS) can help us extract valuable data from a huge amount of raw information....
The overabundance of information and the related difficulty to discover interesting content has comp...
In this modern era of technology and information, e-learning has become an integral part of learning...
The information overload experienced by peo- ple who use online services and read user- generated co...
The new user cold start issue represents a serious problem in recommender systems as it can lead to ...
Collaborative filtering (CF), one of the most successful recommendation approaches, continues to att...
Recommender systems have emerged, as an intelligent information filtering tool, to help users effect...
Existing Recommender Systems mainly focus on exploiting users’ feedback, e.g., ratings, and reviews...
The growth of Internet commerce has stimulated the use of collaborative filtering (CF) algorithms as...
Abstract. In Collaborative Filtering Recommender Systems user’s pref-erences are expressed in terms ...
Recommender systems use variety of data mining techniques and algorithms to identify relevant prefer...
Recommendation system is the reason of success for most of the social media companies as well as e-c...
Abstract. Our previous research indicates that using personality quizzes is a viable and promising w...
Personal recommendation systems nowadays are very important in web applications because of the avai...
With the constant increase in the amount of information available in online communities, the task of...
The recommender system (RS) can help us extract valuable data from a huge amount of raw information....
The overabundance of information and the related difficulty to discover interesting content has comp...
In this modern era of technology and information, e-learning has become an integral part of learning...
The information overload experienced by peo- ple who use online services and read user- generated co...
The new user cold start issue represents a serious problem in recommender systems as it can lead to ...