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Hands-On Neural Networks

You're reading from   Hands-On Neural Networks Learn how to build and train your first neural network model using Python

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Product type Paperback
Published in May 2019
Publisher Packt
ISBN-13 9781788992596
Length 280 pages
Edition 1st Edition
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Authors (2):
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Leonardo De Marchi Leonardo De Marchi
Author Profile Icon Leonardo De Marchi
Leonardo De Marchi
Laura Mitchell Laura Mitchell
Author Profile Icon Laura Mitchell
Laura Mitchell
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Table of Contents (16) Chapters Close

Preface 1. Section 1: Getting Started FREE CHAPTER
2. Getting Started with Supervised Learning 3. Neural Network Fundamentals 4. Section 2: Deep Learning Applications
5. Convolutional Neural Networks for Image Processing 6. Exploiting Text Embedding 7. Working with RNNs 8. Reusing Neural Networks with Transfer Learning 9. Section 3: Advanced Applications
10. Working with Generative Algorithms 11. Implementing Autoencoders 12. Deep Belief Networks 13. Reinforcement Learning 14. Whats Next? 15. Other Books You May Enjoy

Implementing MTL

Now, we will see in more detail what we need to do in an MTL task.

There are different ways to implement MTL. Two methods that are commonly used are as follows:

  • Hard parameter sharing: This is the most common way to implement MTL, and it consists of sharing some of the hidden layers across all tasks, while other layers are kept specific for each single task:

The main advantage of this method is that it's difficult to overfit. Overfitting is particularly a problem for NNs, but in this case, the more tasks, the lower the danger of overfitting. This is quite clear, because overfitting is creating a solution that is too specific for the dataset we provide, while in this case, by design, we have a more generic task and a variegated dataset.

  • Soft parameter sharing: With soft parameter sharing, we have one model, but each task will have its own parameters. In...
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