AbstractOver the past few years, the recommender system has been proposed as a critical role to help users choose the preferred product from a massive amount of data. For music recommendation, most recent recommender systems made attempts to associate music with the user's preferences primarily based on user ratings. However, this kind of recommendation mechanism encounters the problem called rating diversity that makes the prediction results unreliable. To cope with this problem, in this paper, we propose a novel music recommendation approach that utilizes social media tags instead of ratings to calculate the similarity between music pieces. Through the proposed tag-based similarity, the user preferences hidden in tags can be inferred effe...
With the evolution of Web 2.0, most social-networking sites let their members participate in content...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
We have described a personalized music recommendation system using K-nearest neighbour that is KNN a...
Tremendous growth of online music data has given new opportunities for building more effective music...
Traditional music recommender systems rely on collaborative-filtering methods. This, however, puts l...
Nowadays, advanced information and communication technologies ease the access of music pieces. Howev...
Abstract. In this paper, we present a Web recommender system for recommending, predicting and person...
The cold start problem for new users or items is a great challenge for recommender systems. New item...
This paper presents MyMusic, a system that exploits social media sources for generating personalize...
Abstract. This paper presents MyMusic, a system that exploits social media sources for generating pe...
Automatic recommendation system as a subject of machine learning has been undergoing a rapid develop...
Most commercial music services rely on collaborative filtering to recommend artists and songs. While...
[[abstract]]In this paper, we propose a new rating-based collaborative music recommendation approach...
Recommending the most appropriate music is one of the most studied fields in the contest of Music In...
Content-based music recommendation using underlying music preference structure SOLEYMANI, Mohammad, ...
With the evolution of Web 2.0, most social-networking sites let their members participate in content...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
We have described a personalized music recommendation system using K-nearest neighbour that is KNN a...
Tremendous growth of online music data has given new opportunities for building more effective music...
Traditional music recommender systems rely on collaborative-filtering methods. This, however, puts l...
Nowadays, advanced information and communication technologies ease the access of music pieces. Howev...
Abstract. In this paper, we present a Web recommender system for recommending, predicting and person...
The cold start problem for new users or items is a great challenge for recommender systems. New item...
This paper presents MyMusic, a system that exploits social media sources for generating personalize...
Abstract. This paper presents MyMusic, a system that exploits social media sources for generating pe...
Automatic recommendation system as a subject of machine learning has been undergoing a rapid develop...
Most commercial music services rely on collaborative filtering to recommend artists and songs. While...
[[abstract]]In this paper, we propose a new rating-based collaborative music recommendation approach...
Recommending the most appropriate music is one of the most studied fields in the contest of Music In...
Content-based music recommendation using underlying music preference structure SOLEYMANI, Mohammad, ...
With the evolution of Web 2.0, most social-networking sites let their members participate in content...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
We have described a personalized music recommendation system using K-nearest neighbour that is KNN a...