Book Image

Deep Learning with Theano

By : Christopher Bourez
Book Image

Deep Learning with Theano

By: Christopher Bourez

Overview of this book

This book offers a complete overview of Deep Learning with Theano, a Python-based library that makes optimizing numerical expressions and deep learning models easy on CPU or GPU. The book provides some practical code examples that help the beginner understand how easy it is to build complex neural networks, while more experimented data scientists will appreciate the reach of the book, addressing supervised and unsupervised learning, generative models, reinforcement learning in the fields of image recognition, natural language processing, or game strategy. The book also discusses image recognition tasks that range from simple digit recognition, image classification, object localization, image segmentation, to image captioning. Natural language processing examples include text generation, chatbots, machine translation, and question answering. The last example deals with generating random data that looks real and solving games such as in the Open-AI gym. At the end, this book sums up the best -performing nets for each task. While early research results were based on deep stacks of neural layers, in particular, convolutional layers, the book presents the principles that improved the efficiency of these architectures, in order to help the reader build new custom nets.
Table of Contents (22 chapters)
Deep Learning with Theano
Credits
About the Author
Acknowledgments
About the Reviewers
www.PacktPub.com
Customer Feedback
Preface
Index

Dropout


Dropout is a widely used technique to improve convergence and robustness of a neural net and prevent neural nets from overfitting. It consists of setting some random values to zero for the layers on which we'd like it to apply. It introduces some randomness in the data at every epoch.

Usually, dropout is used before the fully connected layers and not used very often in convolutional layers. Let's add the following lines before each of our two fully connected layers:

dropout = 0.5

if dropout > 0 :
    mask = srng.binomial(n=1, p=1-dropout, size=hidden_input.shape)
    # The cast is important because
    # int * float32 = float64 which make execution slower
    hidden_input = hidden_input * T.cast(mask, theano.config.floatX)

The full script is in 5-cnn-with-dropout.py. After 1,000 iterations, the validation error of the CNN with dropout continues to drops down to 1.08%, while the validation error of the CNN without dropout will not go down by 1.22%.

Readers who would like to go further...