The cold start problem for new users or items is a great challenge for recommender systems. New items can be positioned within the existing items using a similarity metric to estimate their ratings. However, the calculation of similarity varies by domain and available resources. In this paper, we propose a content-based music recommender system which is based on a set of attributes derived from psychological studies of music preference. These five attributes, namely, Mellow, Unpretentious, Sophisticated, Intense and Contemporary (MUSIC), better describe the underlying factors of music preference compared to music genre. Using 249 songs and hundreds of ratings and attribute scores, we first develop an acoustic content-based attribute detecti...
With advancements in Internet and technology, it has become increasingly easy for people to enjoy mu...
Most commercial music services rely on collaborative filtering to recommend artists and songs. While...
Content-based music classification systems attempt to predict musical attributes of songs directly f...
The cold start problem for new users or items is a great challenge for recommender systems. New item...
Content-based music recommendation using underlying music preference structure SOLEYMANI, Mohammad, ...
Recommending the most appropriate music is one of the most studied fields in the contest of Music In...
Music recommenders have become increasingly relevant due to increased accessibility provided by vari...
Nowadays, advanced information and communication technologies ease the access of music pieces. Howev...
Traditional music recommender systems rely on collaborative-filtering methods. This, however, puts l...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
This paper proposes a novel approach to automated music recommendation systems. Current systems use ...
AbstractOver the past few years, the recommender system has been proposed as a critical role to help...
This thesis presents a new approach to recommend suitable tracks from a collection of songs to the u...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
Music recommender systems have become a popular tool utilized by numerous online music streaming app...
With advancements in Internet and technology, it has become increasingly easy for people to enjoy mu...
Most commercial music services rely on collaborative filtering to recommend artists and songs. While...
Content-based music classification systems attempt to predict musical attributes of songs directly f...
The cold start problem for new users or items is a great challenge for recommender systems. New item...
Content-based music recommendation using underlying music preference structure SOLEYMANI, Mohammad, ...
Recommending the most appropriate music is one of the most studied fields in the contest of Music In...
Music recommenders have become increasingly relevant due to increased accessibility provided by vari...
Nowadays, advanced information and communication technologies ease the access of music pieces. Howev...
Traditional music recommender systems rely on collaborative-filtering methods. This, however, puts l...
International audienceMusic recommender systems attempt to provide to the users tracks in accordance...
This paper proposes a novel approach to automated music recommendation systems. Current systems use ...
AbstractOver the past few years, the recommender system has been proposed as a critical role to help...
This thesis presents a new approach to recommend suitable tracks from a collection of songs to the u...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
Music recommender systems have become a popular tool utilized by numerous online music streaming app...
With advancements in Internet and technology, it has become increasingly easy for people to enjoy mu...
Most commercial music services rely on collaborative filtering to recommend artists and songs. While...
Content-based music classification systems attempt to predict musical attributes of songs directly f...