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Deep Learning Essentials

You're reading from   Deep Learning Essentials Your hands-on guide to the fundamentals of deep learning and neural network modeling

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Product type Paperback
Published in Jan 2018
Publisher Packt
ISBN-13 9781785880360
Length 284 pages
Edition 1st Edition
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Authors (3):
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Wei Di Wei Di
Author Profile Icon Wei Di
Wei Di
Anurag Bhardwaj Anurag Bhardwaj
Author Profile Icon Anurag Bhardwaj
Anurag Bhardwaj
Jianing Wei Jianing Wei
Author Profile Icon Jianing Wei
Jianing Wei
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Table of Contents (12) Chapters Close

Preface 1. Why Deep Learning? FREE CHAPTER 2. Getting Yourself Ready for Deep Learning 3. Getting Started with Neural Networks 4. Deep Learning in Computer Vision 5. NLP - Vector Representation 6. Advanced Natural Language Processing 7. Multimodality 8. Deep Reinforcement Learning 9. Deep Learning Hacks 10. Deep Learning Trends 11. Other Books You May Enjoy

Multilayer perceptrons

The multilayer perceptron is one of the simplest networks. Essentially, it is defined as having one input layer, one output layer, and a few hidden layers (more than one). Each layer has multiple neurons and the adjacent layers are fully connected. Each neuron can be thought of as a cell in these huge networks. It determines the flow and transformation of the incoming signals. Signals from the previous layers are pushed forward to the neuron of the next layer through the connected weights. For each artificial neuron, it calculates a weighted sum of all incoming inputs by multiplying the signal with the weights and adding a bias. The weighted sum will then go through a function called an activation function to decide whether it should be fired or not, which results in output signals for the next level.

For example, a fully-connected, feed-forward neural network...

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