Information Filtering and Recommender Systems have been used and has been implemented in various ways from various entities since the dawn of the Internet, and state-of-the-art approaches rely on Machine Learning and Deep Learning in order to create accurate and personalized recommendations for users in a given context. These models require big amounts of data with a variety of features such as time, location and user data in order to find correlations and patterns that other classical models such as matrix factorization and collaborative filtering cannot. This thesis researches, implements and compares a variety of models with the primary focus of Machine Learning and Deep Learning for the task of music recommendation and do so successfull...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
The collaborative filtering recommendation algorithm is a technique for predicting items that a user...
Streaming applications are now the predominant tools for listening to music. What makes the success ...
Information Filtering and Recommender Systems have been used and has been implemented in various way...
This thesis proposes a two-stage recommendation system for providing music recommendations based on ...
As streaming platforms have become more and more popular in recent years and music consumption has i...
With the breakthrough of machine learning techniques, the research concerning music emotion classifi...
The music industry has seen a great influx of new channels to browse and distribute music. This does...
Digital music composers are required to become proficient with relevant tools necessary for music in...
Curated music collection is a growing field as a result of the freedom and supply that streaming mus...
Deep learning shows its superiority in many domains such as computing vision, nature language proces...
Recommending music based on a user’s music preference is a way to improve user listening exper...
We have described a personalized music recommendation system using K-nearest neighbour that is KNN a...
The world has turned out to be more of digital as per the recent statistics. A huge amount of digita...
Recommendation mechanisms have been increasingly popular in recent years when a large number of peop...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
The collaborative filtering recommendation algorithm is a technique for predicting items that a user...
Streaming applications are now the predominant tools for listening to music. What makes the success ...
Information Filtering and Recommender Systems have been used and has been implemented in various way...
This thesis proposes a two-stage recommendation system for providing music recommendations based on ...
As streaming platforms have become more and more popular in recent years and music consumption has i...
With the breakthrough of machine learning techniques, the research concerning music emotion classifi...
The music industry has seen a great influx of new channels to browse and distribute music. This does...
Digital music composers are required to become proficient with relevant tools necessary for music in...
Curated music collection is a growing field as a result of the freedom and supply that streaming mus...
Deep learning shows its superiority in many domains such as computing vision, nature language proces...
Recommending music based on a user’s music preference is a way to improve user listening exper...
We have described a personalized music recommendation system using K-nearest neighbour that is KNN a...
The world has turned out to be more of digital as per the recent statistics. A huge amount of digita...
Recommendation mechanisms have been increasingly popular in recent years when a large number of peop...
Automatic music recommendation has become an increasingly relevant problem in recent years, since a ...
The collaborative filtering recommendation algorithm is a technique for predicting items that a user...
Streaming applications are now the predominant tools for listening to music. What makes the success ...