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Deep Learning with R for Beginners

You're reading from   Deep Learning with R for Beginners Design neural network models in R 3.5 using TensorFlow, Keras, and MXNet

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Product type Course
Published in May 2019
Publisher Packt
ISBN-13 9781838642709
Length 612 pages
Edition 1st Edition
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Authors (4):
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Mark Hodnett Mark Hodnett
Author Profile Icon Mark Hodnett
Mark Hodnett
Pablo Maldonado Pablo Maldonado
Author Profile Icon Pablo Maldonado
Pablo Maldonado
Joshua F. Wiley Joshua F. Wiley
Author Profile Icon Joshua F. Wiley
Joshua F. Wiley
Yuxi (Hayden) Liu Yuxi (Hayden) Liu
Author Profile Icon Yuxi (Hayden) Liu
Yuxi (Hayden) Liu
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Toc

Table of Contents (23) Chapters Close

Title Page
Copyright and Credits
About Packt
Contributors
Preface
1. Getting Started with Deep Learning FREE CHAPTER 2. Training a Prediction Model 3. Deep Learning Fundamentals 4. Training Deep Prediction Models 5. Image Classification Using Convolutional Neural Networks 6. Tuning and Optimizing Models 7. Natural Language Processing Using Deep Learning 8. Deep Learning Models Using TensorFlow in R 9. Anomaly Detection and Recommendation Systems 10. Running Deep Learning Models in the Cloud 11. The Next Level in Deep Learning 12. Handwritten Digit Recognition using Convolutional Neural Networks 13. Traffic Signs Recognition for Intelligent Vehicles 14. Fraud Detection with Autoencoders 15. Text Generation using Recurrent Neural Networks 16. Sentiment Analysis with Word Embedding 1. Other Books You May Enjoy Index

Reviewing methods to prevent overfitting in CNNs


Overfitting occurs when the model fits too well to the training set but is not able to generalize to unseen cases. For example, a CNN model recognizes specific traffic sign images in the training set instead of general patterns. It can be very dangerous if a self-driving car is not able to recognize sign images in ever-changing conditions, such as different weather, lighting, and angles different from what are presented in the training set. To recap, here's what we can do to reduce overfitting:

  • Collecting more training data (if possible and feasible) in order to account for various input data.
  • Using data augmentation, wherein we invent data in a smart way if time or cost does not allow us to collect more data.
  • Employing dropout, which diminishes complex co-adaptations among neighboring neurons.
  • Adding Lasso (L1) or/and Ridge (L2) penalty, which prevents model coefficients from fitting so perfectly that overfitting arises.
  • Reducing the complexity...
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