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The TensorFlow Workshop

You're reading from   The TensorFlow Workshop A hands-on guide to building deep learning models from scratch using real-world datasets

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Product type Paperback
Published in Dec 2021
Publisher Packt
ISBN-13 9781800205253
Length 600 pages
Edition 1st Edition
Languages
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Authors (4):
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Matthew Moocarme Matthew Moocarme
Author Profile Icon Matthew Moocarme
Matthew Moocarme
Abhranshu Bagchi Abhranshu Bagchi
Author Profile Icon Abhranshu Bagchi
Abhranshu Bagchi
Anthony Maddalone Anthony Maddalone
Author Profile Icon Anthony Maddalone
Anthony Maddalone
Anthony So Anthony So
Author Profile Icon Anthony So
Anthony So
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Toc

Table of Contents (13) Chapters Close

Preface
1. Introduction to Machine Learning with TensorFlow 2. Loading and Processing Data FREE CHAPTER 3. TensorFlow Development 4. Regression and Classification Models 5. Classification Models 6. Regularization and Hyperparameter Tuning 7. Convolutional Neural Networks 8. Pre-Trained Networks 9. Recurrent Neural Networks 10. Custom TensorFlow Components 11. Generative Models Appendix

Regularization Techniques

The main goal of a data scientist is to train a model that achieves high performance and generalizes to unseen data well. The model should be able to predict the right outcome on both data used during the training process and new data. This is the reason why a model is always assessed on the test set. This set of data serves as a proxy to evaluate the ability of the model to output correct results while in production.

Figure 6.1: Model not overfitting or underfitting

In Figure 6.1, the linear model (line) seems to predict relatively accurate results for both the training (circles) and test (triangles) sets.

But sometimes a model fails to generalize well and will overfit the training set. In this case, the performance of the model will be very different between the training and test sets.

Figure 6.2: Model overfitting

Figure 6.2 shows the model (line) has only learned to predict accurately for the...

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