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The Applied Artificial Intelligence Workshop

You're reading from   The Applied Artificial Intelligence Workshop Start working with AI today, to build games, design decision trees, and train your own machine learning models

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Product type Paperback
Published in Jul 2020
Publisher Packt
ISBN-13 9781800205819
Length 420 pages
Edition 1st Edition
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Authors (3):
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Anthony So Anthony So
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Anthony So
Zsolt Nagy Zsolt Nagy
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Zsolt Nagy
William So William So
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William So
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Table of Contents (8) Chapters Close

Preface
1. Introduction to Artificial Intelligence 2. An Introduction to Regression FREE CHAPTER 3. An Introduction to Classification 4. An Introduction to Decision Trees 5. Artificial Intelligence: Clustering 6. Neural Networks and Deep Learning Appendix

Forward Propagation and the Loss Function

So far, we have seen how a neuron can take an input and perform some mathematical operations on it and get an output. We learned that a neural network is a combination of multiple layers of neurons.

The process of transforming the inputs of a neural network into a result is called forward propagation (or the forward pass). What we are asking the neural network to do is to make a prediction (the final output of the neural network) by applying multiple neurons to the input data:

Figure 6.11: Figure showing forward propagation

The neural network relies on the weights matrices, biases, and activation function of each neuron to calculate the predicted output value, b. For now, let's assume the values of the weight matrices and biases are set in advance. The activation functions are defined when you design the architecture of the neural networks.

As for any supervised machine learning algorithm, the goal is...

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