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Hands-On Machine Learning with TensorFlow.js

You're reading from   Hands-On Machine Learning with TensorFlow.js A guide to building ML applications integrated with web technology using the TensorFlow.js library

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Product type Paperback
Published in Nov 2019
Publisher Packt
ISBN-13 9781838821739
Length 296 pages
Edition 1st Edition
Languages
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Author (1):
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Kai Sasaki Kai Sasaki
Author Profile Icon Kai Sasaki
Kai Sasaki
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Table of Contents (17) Chapters Close

Preface 1. Section 1: The Rationale of Machine Learning and the Usage of TensorFlow.js
2. Machine Learning for the Web FREE CHAPTER 3. Importing Pretrained Models into TensorFlow.js 4. TensorFlow.js Ecosystem 5. Section 2: Real-World Applications of TensorFlow.js
6. Polynomial Regression 7. Classification with Logistic Regression 8. Unsupervised Learning 9. Sequential Data Analysis 10. Dimensionality Reduction 11. Solving the Markov Decision Process 12. Section 3: Productionizing Machine Learning Applications with TensorFlow.js
13. Deploying Machine Learning Applications 14. Tuning Applications to Achieve High Performance 15. Future Work Around TensorFlow.js 16. Other Books You May Enjoy

Summary

In this chapter, we covered the techniques and algorithms we can use for dimensionality reduction. Here, we learned how the data points in a high dimensional space are distributed into a low dimensional space to make the machine learning process more efficient and accurate. One widely used approach is PCA. PCA is an algorithm that's designed to maximize the variance in the projected data space. Due to its simplicity and efficiency, it is the most popular dimensionality reduction algorithm.

Another algorithm that we looked at in this chapter was word embedding. This allows us to map data that's been placed in a discrete value into the vectors of real numbers. The pattern that's projected by embedding is similar to the context machine learning applications take advantage of. Moreover, the embedded space can be used for visual analysis.

Then, we looked at an...

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