Credit Risk Analysis using Explainable Artificial Intelligence
Volume-6 | Issue-3

Fuel Sales Forecasting with SARIMA-GARCH and Rolling Window
Volume-5 | Issue-3

A Comprehensive Review on Advanced Driver Assistance System
Volume-4 | Issue-2

An Accurate Bitcoin Price Prediction using logistic regression with LSTM Machine Learning model
Volume-3 | Issue-3

Multi-UAV Path Planning using Grey Wolf Optimization and RRT Algorithm
Volume-7 | Issue-2

Implications of Tokenizers in BERT Model for Low-Resource Indian Language
Volume-4 | Issue-4

Performance Evaluation and Comparison using Deep Learning Techniques in Sentiment Analysis
Volume-3 | Issue-2

Robotic Surgery with Computer Vision: A Case Study on Da Vinci Systems
Volume-7 | Issue-3

Literature Review on Detection Systems for Wild Animal Intrusions
Volume-5 | Issue-1

Wind Compensation in Drones using PID Control Enhanced by Extended Kalman Filtering
Volume-7 | Issue-3

An Integrated Approach for Crop Production Analysis from Geographic Information System Data using SqueezeNet
Volume-3 | Issue-4

An Accurate Bitcoin Price Prediction using logistic regression with LSTM Machine Learning model
Volume-3 | Issue-3

Design of Distribution Transformer Health Management System using IoT Sensors
Volume-3 | Issue-3

Design of a Food Recommendation System using ADNet algorithm on a Hybrid Data Mining Process
Volume-3 | Issue-4

Automatic Diagnosis of Alzheimer’s disease using Hybrid Model and CNN
Volume-3 | Issue-4

Effective Prediction of Online Reviews for Improvement of Customer Recommendation Services by Hybrid Classification Approach
Volume-3 | Issue-4

Acoustic Features Based Emotional Speech Signal Categorization by Advanced Linear Discriminator Analysis
Volume-3 | Issue-4

PAPR Analysis of OFDM using Selective Mapping Method
Volume-4 | Issue-3

Analysis of Statistical Trends of Future Air Pollutants for Accurate Prediction
Volume-3 | Issue-4

Identification of Electricity Threat and Performance Analysis using LSTM and RUSBoost Methodology
Volume-3 | Issue-4

Home / Archives / Volume-6 / Issue-2 / Article-1

Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System

J Vigneshwar ,  Thirumahal R
Open Access
Volume - 6 • Issue - 2 • june 2024
116-127  579 PDF
Abstract

Classification plays a crucial role in numerous applications within the music industry, spanning from content management to personalized playlists and music recommendation systems. While previous research has explored various machine learning frameworks for this purpose, such as support vector machines (SVM), a comprehensive comparison analysis of convolutional neural networks (CNN) and k-nearest neighbor (KNN) remains unknown. This study aims to address this gap by analyzing and contrasting the performance of SVM, KNN, and CNN in music genre classification. Each algorithm was carefully trained using different music genres from a protected dataset, employing feature extraction methods to capture the appropriate qualities of audio signals. The models underwent extensive training with a limited number of samples, and their performance was evaluated using industry standards such as accuracy, precision, recall, and F1 scores. Experimental results included SVM, KNN, and CNN for music genre designation. This study contributes significantly to existing literature by providing a comparative analysis of these algorithms. The findings highlight the strengths and limitations of each approach, offering guidance for researchers and practitioners in choosing the most suitable approach for their specific needs. The insights gained from this research have the potential to enhance music genre classification systems, ultimately improving the user experience across various music-related contexts.

Cite this article
Vigneshwar, J, and Thirumahal R. "Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System." Journal of Soft Computing Paradigm 6, no. 2 (2024): 116-127. doi: 10.36548/jscp.2024.2.001
Copy Citation
Vigneshwar, J., & R, T. (2024). Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System. Journal of Soft Computing Paradigm, 6(2), 116-127. https://doi.org/10.36548/jscp.2024.2.001
Copy Citation
Vigneshwar, J, et al. "Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System." Journal of Soft Computing Paradigm, vol. 6, no. 2, 2024, pp. 116-127. DOI: 10.36548/jscp.2024.2.001.
Copy Citation
Vigneshwar J, R T. Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System. Journal of Soft Computing Paradigm. 2024;6(2):116-127. doi: 10.36548/jscp.2024.2.001
Copy Citation
J. Vigneshwar, and T. R, "Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System," Journal of Soft Computing Paradigm, vol. 6, no. 2, pp. 116-127, Jun. 2024, doi: 10.36548/jscp.2024.2.001.
Copy Citation
Vigneshwar, J. and R, T. (2024) 'Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System', Journal of Soft Computing Paradigm, vol. 6, no. 2, pp. 116-127. Available at: https://doi.org/10.36548/jscp.2024.2.001.
Copy Citation
@article{vigneshwar2024,
  author    = {J Vigneshwar and Thirumahal R},
  title     = {{Performance Analysis of Deep Learning and Machine Learning Methods for Music Genre Classification System}},
  journal   = {Journal of Soft Computing Paradigm},
  volume    = {6},
  number    = {2},
  pages     = {116-127},
  year      = {2024},
  publisher = {IRO Journals},
  doi       = {10.36548/jscp.2024.2.001},
  url       = {https://doi.org/10.36548/jscp.2024.2.001}
}
Copy Citation
Keywords
Music genre classification SVM KNN CNN Audio feature
Published
06 May, 2024
×

Currently, subscription is the only source of revenue. The subscription resource covers the operating expenses such as web presence, online version, pre-press preparations, and staff wages.

To access the full PDF, please complete the payment process.

Subscription Details

Category Fee
Article Access Charge
15 USD
Open Access Fee Nil
Annual Subscription Fee
200 USD
After payment,
please send an email to irojournals.contact@gmail.com / journals@iroglobal.com requesting article access.
Subscription form: click here