Book Image

The Deep Learning with Keras Workshop

By : Matthew Moocarme, Mahla Abdolahnejad, Ritesh Bhagwat
1 (1)
Book Image

The Deep Learning with Keras Workshop

1 (1)
By: Matthew Moocarme, Mahla Abdolahnejad, Ritesh Bhagwat

Overview of this book

New experiences can be intimidating, but not this one! This beginner’s guide to deep learning is here to help you explore deep learning from scratch with Keras, and be on your way to training your first ever neural networks. What sets Keras apart from other deep learning frameworks is its simplicity. With over two hundred thousand users, Keras has a stronger adoption in industry and the research community than any other deep learning framework. The Deep Learning with Keras Workshop starts by introducing you to the fundamental concepts of machine learning using the scikit-learn package. After learning how to perform the linear transformations that are necessary for building neural networks, you'll build your first neural network with the Keras library. As you advance, you'll learn how to build multi-layer neural networks and recognize when your model is underfitting or overfitting to the training data. With the help of practical exercises, you’ll learn to use cross-validation techniques to evaluate your models and then choose the optimal hyperparameters to fine-tune their performance. Finally, you’ll explore recurrent neural networks and learn how to train them to predict values in sequential data. By the end of this book, you'll have developed the skills you need to confidently train your own neural network models.
Table of Contents (11 chapters)
Preface

Introduction

In the previous chapter, we explored model evaluation in detail. We covered accuracy and why it may be misleading for some datasets, especially for classification tasks with highly imbalanced classes. Datasets with imbalanced classes such as the prediction of hurricanes in the Pacific Ocean or the prediction of whether someone will default on their credit card loan have positive instances that are relatively rare compared to negative instances, so accuracy scores are misleading since the null accuracy is so high.

To combat class imbalance, we learned about techniques that we can use to appropriately evaluate our model, including calculating model evaluation metrics such as the sensitivity, specificity, false positive rate, and AUC score, and plotting the ROC curve. In this chapter, we will learn how to classify another type of dataset—namely, images. Image classification is extremely useful and there are many real-world applications of it, as we will discover...