In this paper, we describe the LFM-1b User Genre Profile dataset. It provides detailed information on musical genre preferences for more than 120,000 listeners and links to the LFM-1b dataset. We created the dataset by exploiting social tags, indexing them using two genre term sets, and aggregating the resulting annotated listening events on the user level. We foresee several applications of the dataset in music retrieval and recommendation tasks, among others to build and evaluate decent user models, to alleviate cold-start situations in music recommender systems, and to increase their performance using the additional abstraction layer of genre. We further present results of statistical analyses of the dataset, regarding genre preferences ...
Music recommender systems have become an integral part of music streaming services such as Spotify a...
This dataset is based on the LFM-1b [1] and the Cultural LFM-1b [2] datasets. LFM-BeyMS includes equ...
Abstract. We investigate a range of music recommendation algorithm combinations, score aggregation f...
In this paper, we describe the LFM-1b User Genre Profile dataset. It provides detailed information o...
In this paper, we describe the LFM-1b User Genre Profile dataset. It provides detailed information o...
In this paper we investigate the relationship between a folksonomy-based music classification and a ...
This thesis presents a new approach to recommend suitable tracks from a collection of songs to the u...
Music preference has been related to individual differences like social identity, cognitive style, a...
A shortcoming of current approaches for music recommen-dation is that they consider user-specific ch...
User models that capture the musical preferences of users are central for many tasks in music inform...
This article reflects on the use of predetermined genre lists to measure patterns in music taste and...
This article reflects on the use of predetermined genre lists to measure patterns in music taste and...
This paper introduces the AcousticBrainz Genre Dataset, a large-scale collection of hierarchical mul...
This paper introduces the AcousticBrainz Genre Dataset, a large-scale collection of hierarchical mul...
The next generation of music recommendation systems will be increasingly intelligent and likely take...
Music recommender systems have become an integral part of music streaming services such as Spotify a...
This dataset is based on the LFM-1b [1] and the Cultural LFM-1b [2] datasets. LFM-BeyMS includes equ...
Abstract. We investigate a range of music recommendation algorithm combinations, score aggregation f...
In this paper, we describe the LFM-1b User Genre Profile dataset. It provides detailed information o...
In this paper, we describe the LFM-1b User Genre Profile dataset. It provides detailed information o...
In this paper we investigate the relationship between a folksonomy-based music classification and a ...
This thesis presents a new approach to recommend suitable tracks from a collection of songs to the u...
Music preference has been related to individual differences like social identity, cognitive style, a...
A shortcoming of current approaches for music recommen-dation is that they consider user-specific ch...
User models that capture the musical preferences of users are central for many tasks in music inform...
This article reflects on the use of predetermined genre lists to measure patterns in music taste and...
This article reflects on the use of predetermined genre lists to measure patterns in music taste and...
This paper introduces the AcousticBrainz Genre Dataset, a large-scale collection of hierarchical mul...
This paper introduces the AcousticBrainz Genre Dataset, a large-scale collection of hierarchical mul...
The next generation of music recommendation systems will be increasingly intelligent and likely take...
Music recommender systems have become an integral part of music streaming services such as Spotify a...
This dataset is based on the LFM-1b [1] and the Cultural LFM-1b [2] datasets. LFM-BeyMS includes equ...
Abstract. We investigate a range of music recommendation algorithm combinations, score aggregation f...