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The Regularization Cookbook

You're reading from   The Regularization Cookbook Explore practical recipes to improve the functionality of your ML models

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Product type Paperback
Published in Jul 2023
Publisher Packt
ISBN-13 9781837634088
Length 424 pages
Edition 1st Edition
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Author (1):
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Vincent Vandenbussche Vincent Vandenbussche
Author Profile Icon Vincent Vandenbussche
Vincent Vandenbussche
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Toc

Table of Contents (14) Chapters Close

Preface 1. Chapter 1: An Overview of Regularization 2. Chapter 2: Machine Learning Refresher FREE CHAPTER 3. Chapter 3: Regularization with Linear Models 4. Chapter 4: Regularization with Tree-Based Models 5. Chapter 5: Regularization with Data 6. Chapter 6: Deep Learning Reminders 7. Chapter 7: Deep Learning Regularization 8. Chapter 8: Regularization with Recurrent Neural Networks 9. Chapter 9: Advanced Regularization in Natural Language Processing 10. Chapter 10: Regularization in Computer Vision 11. Chapter 11: Regularization in Computer Vision – Synthetic Image Generation 12. Index 13. Other Books You May Enjoy

Training a perceptron

The perceptron is arguably the building block of deep learning. Even if the perceptron is not directly used in production systems, understanding what it is can be an asset for building a strong foundation in deep learning.

In this recipe, we will review what a perceptron is and then train one using scikit-learn on the Iris dataset.

Getting started

The perceptron is a machine learning method first proposed to mimic a biological neuron. It was first proposed in the 1940s and then implemented in the 1950s.

From a high-level point of view, a neuron can be described as a cell that receives input signals and fires a signal itself when the sum of the input signals is above a given threshold. This is exactly what a perceptron does; all you have to do is the following:

  • Replace the input signals with features
  • Apply a weighted sum to those features and apply an activation function to it
  • Replace the output signal with a prediction

More formally...

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