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Hands-On Machine Learning with Microsoft Excel 2019

You're reading from   Hands-On Machine Learning with Microsoft Excel 2019 Build complete data analysis flows, from data collection to visualization

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Product type Paperback
Published in Apr 2019
Publisher Packt
ISBN-13 9781789345377
Length 254 pages
Edition 1st Edition
Tools
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Author (1):
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Julio Cesar Rodriguez Martino Julio Cesar Rodriguez Martino
Author Profile Icon Julio Cesar Rodriguez Martino
Julio Cesar Rodriguez Martino
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Table of Contents (17) Chapters Close

Preface 1. Section 1: Machine Learning Basics FREE CHAPTER
2. Implementing Machine Learning Algorithms 3. Hands-On Examples of Machine Learning Models 4. Section 2: Data Collection and Preparation
5. Importing Data into Excel from Different Data Sources 6. Data Cleansing and Preliminary Data Analysis 7. Correlations and the Importance of Variables 8. Section 3: Analytics and Machine Learning Models
9. Data Mining Models in Excel Hands-On Examples 10. Implementing Time Series 11. Section 4: Data Visualization and Advanced Machine Learning
12. Visualizing Data in Diagrams, Histograms, and Maps 13. Artificial Neural Networks 14. Azure and Excel - Machine Learning in the Cloud 15. The Future of Machine Learning 16. Assessment

Building a deep network

Our example of artificial neural network is very simple and only contains one hidden layer. Can we add more layers? Of course we can! The next step in complexity could be something similar to the following diagram:

We added a new hidden layer with two neurons, but we could add more layers and more neurons per layer. The architecture of a network depends on the specific use we give it. Multilayer artificial neural networks are often known as deep neural networks.

The output of a deep network is calculated in analogy with the single layer one, considering all inputs to each neuron, the activation function, and the addition of all the inputs to the output neuron. Looking at the preceding diagram, it is clear that each layer in the network is affected by the previous one. It is usually the case that, in order to solve complex problems, each layer learns a...

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