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Machine Learning with Swift

You're reading from  Machine Learning with Swift

Product type Book
Published in Feb 2018
Publisher Packt
ISBN-13 9781787121515
Pages 378 pages
Edition 1st Edition
Languages
Authors (3):
Jojo Moolayil Jojo Moolayil
Profile icon Jojo Moolayil
Alexander Sosnovshchenko Alexander Sosnovshchenko
Profile icon Alexander Sosnovshchenko
Oleksandr Baiev Oleksandr Baiev
View More author details

Table of Contents (18) Chapters

Title Page
Packt Upsell
Contributors
Preface
1. Getting Started with Machine Learning 2. Classification – Decision Tree Learning 3. K-Nearest Neighbors Classifier 4. K-Means Clustering 5. Association Rule Learning 6. Linear Regression and Gradient Descent 7. Linear Classifier and Logistic Regression 8. Neural Networks 9. Convolutional Neural Networks 10. Natural Language Processing 11. Machine Learning Libraries 12. Optimizing Neural Networks for Mobile Devices 13. Best Practices Index

Introducing convolutional neural networks


CNNs, or ConvNets have gotten a lot of attention in the last few years, mainly due to their major successes in the domain of computer vision. They are at the core of most computer vision systems nowadays, including self-driving cars and large-scale photo classification systems.

In some sense, CNNs are very similar to multilayer perceptron, which we have discussed in the previous chapter. These networks also build from the layers, but unlike MLP, which usually has all layers similar to each other, CNNs usually include many layers of different types. And the most important type of the layer is (surprise, surprise) the convolutional layer. Modern CNNs can be really deep—hundreds of different layers. Nevertheless, you can still see the whole network as one differentiable function that takes some input (usually raw values of image pixels), and produces some output (for example, class probabilities: 0.8 cat, 0.2 dog).

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