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1
Introduction
2
Identifying Overfitting
3
Results
4
Overview
5
Simple Architecture
6
Audio Data Documentation
7
Early Stop
8
Dropout
9
Dropout probability
10
Regularization
11
Regularization Examples
12
Coding
13
Conclusion
Description:
Explore techniques to identify and prevent overfitting in neural networks in this 26-minute video tutorial. Learn about early stopping, audio data augmentation, dropout, and L1/L2 regularisation. Follow along as the instructor implements dropout and regularisation in a music genre classifier. Access accompanying slides and code on GitHub for hands-on practice. Gain insights into simple architecture, audio data documentation, dropout probability, and regularization examples. By the end of the tutorial, acquire practical skills to improve neural network performance and prevent overfitting in audio-based machine learning projects.

Solving Overfitting in Neural Networks

Valerio Velardo - The Sound of AI
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