The complexity of music recommendation systems has increased rapidly in recent years, drawing upon different sources of information: content analysis, web-mining, social tagging, etc. Unfortunately, the tools to scientifically evaluate such integrated systems are not readily available; nor are the base algorithms available. This article describes Graph-RAT (Graph-based Relational Analysis Toolkit), an open source toolkit that provides a framework for developing and evaluating novel hybrid systems. While this toolkit is designed for music recommendation, it has applications outside its discipline as well. An experiment—indicative of the sort of procedure that can be configured using the toolkit—is provided to illustrate its usefulness
Abstract — Recommender systems are mostly implemented in E-commerce website to help users or custome...
In recent years, we have witnessed an ever wider spread of multimedia streaming platforms (e.g., Net...
Abstract — To improve the quality of search results in huge digital music databases, we developed a ...
The complexity of music recommendation systems has increased rapidly in recent years, drawing upon d...
The complexity of music recommendation systems has increased rapidly in recent years, drawing upon d...
Contrary to opinions widely voiced in the popular media, music is not a universal language. Music ex...
While personalized music recommendation has changed the way many users listen to music. Graph Neural...
Music streaming platforms offer music listeners an overwhelming choice of music. Therefore, users of...
In this work we describe a recommendation system based upon user-generated description (tags) of con...
The information revolution has made digital music and related technology accessible and affordable t...
Many businesses enhance on-line user experience using various recommender systems which have a growi...
The Web has moved, slowly but steadily, from a collection of documents towards a collection of struc...
This article discusses the analysis of Spotify’s music data and the generation of recommendations ba...
Most of the music portals offer users lists of songs that are the result of black-box algorithms. Th...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
Abstract — Recommender systems are mostly implemented in E-commerce website to help users or custome...
In recent years, we have witnessed an ever wider spread of multimedia streaming platforms (e.g., Net...
Abstract — To improve the quality of search results in huge digital music databases, we developed a ...
The complexity of music recommendation systems has increased rapidly in recent years, drawing upon d...
The complexity of music recommendation systems has increased rapidly in recent years, drawing upon d...
Contrary to opinions widely voiced in the popular media, music is not a universal language. Music ex...
While personalized music recommendation has changed the way many users listen to music. Graph Neural...
Music streaming platforms offer music listeners an overwhelming choice of music. Therefore, users of...
In this work we describe a recommendation system based upon user-generated description (tags) of con...
The information revolution has made digital music and related technology accessible and affordable t...
Many businesses enhance on-line user experience using various recommender systems which have a growi...
The Web has moved, slowly but steadily, from a collection of documents towards a collection of struc...
This article discusses the analysis of Spotify’s music data and the generation of recommendations ba...
Most of the music portals offer users lists of songs that are the result of black-box algorithms. Th...
Music catalogs in music streaming services, on-line music shops and private collections become incre...
Abstract — Recommender systems are mostly implemented in E-commerce website to help users or custome...
In recent years, we have witnessed an ever wider spread of multimedia streaming platforms (e.g., Net...
Abstract — To improve the quality of search results in huge digital music databases, we developed a ...