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Hands-on Machine Learning with JavaScript

You're reading from   Hands-on Machine Learning with JavaScript Solve complex computational web problems using machine learning

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Product type Paperback
Published in May 2018
Publisher Packt
ISBN-13 9781788998246
Length 356 pages
Edition 1st Edition
Languages
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Author (1):
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Burak Kanber Burak Kanber
Author Profile Icon Burak Kanber
Burak Kanber
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Table of Contents (14) Chapters Close

Preface 1. Exploring the Potential of JavaScript FREE CHAPTER 2. Data Exploration 3. Tour of Machine Learning Algorithms 4. Grouping with Clustering Algorithms 5. Classification Algorithms 6. Association Rule Algorithms 7. Forecasting with Regression Algorithms 8. Artificial Neural Network Algorithms 9. Deep Neural Networks 10. Natural Language Processing in Practice 11. Using Machine Learning in Real-Time Applications 12. Choosing the Best Algorithm for Your Application 13. Other Books You May Enjoy

When it goes wrong

There is a wide range of possible undesirable outcomes in ML. These can range from models that simply don't work to models that do work but use an unnecessary amount of resources in the process. Negative outcomes can be caused by many factors, such as the selection of an inappropriate algorithm, poor feature engineering, improper training techniques, insufficient preprocessing, or misinterpretation of results.

In the best-case scenario—that is, the best-case scenario of a negative outcome—the problem will make itself apparent in the early stages of your implementation. You may find during the training and validation stage that your ANN never achieves an accuracy greater than 50%. In some cases, an ANN will quickly stabilize at a value like 25% accuracy after only a few training epochs and never improve.

Problems that make themselves obvious...

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