Affiliation:
1. College of Music and Dance, Huagiao University, Xiamen, China
2. College of Engineering, Huaqiao University, Quanzhou, China
Abstract
The rapid advancement of communication and information technology has led to the expansion and blossoming of digital music. Recently, music feature extraction and classification have emerged as a research hotspot due to the difficulty of quickly and accurately retrieving the music that consumers are looking for from a large volume of music repositories. Traditional approaches to music classification rely heavily on a wide variety of synthetically produced aural features. In this research, we propose a novel approach to selecting the musical genre from user playlists by using a classification and feature selection machine learning model. To filter, normalise, and eliminate missing variables, we collect information on the playlist’s music genre and user history. The characteristics of this data are then selected using a convolutional belief transfer Gaussian model (CBTG) and a fuzzy recurrent adversarial encoder neural network (FRAENN). The experimental examination of a number of music genre selection datasets includes measures of training accuracy, mean average precision, F-1 score, root mean squared error (RMSE), and area under the curve (AUC). Results show that this model can both create a respectable classification result and extract valuable feature representation of songs using a wide variety of criteria.
Reference16 articles.
1. Music recommender using deep embedding-based features and behavior-based reinforcement learning;Chang;Multimedia Tools and Applications,2021
2. Large-Scale Music Genre Analysis and Classification Using Machine Learning with Apache Spark;Chaudhury;Electronics,2022
3. Dance to your own drum: Identification of musical genre and individual dancer from motion capture using machine learning;Carlson;Journal of New Music Research,2020
4. Exploration in interactive personalized music recommendation: a reinforcement learning approach;Wang;ACM Transactions on Multimedia Computing, Communications, and Applications (TOMM),2014
5. Machine learning for music genre: multifaceted review and experimentation with audioset;Ramírez;Journal of Intelligent Information Systems,2020