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Go Machine Learning Projects

You're reading from   Go Machine Learning Projects Eight projects demonstrating end-to-end machine learning and predictive analytics applications in Go

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Product type Paperback
Published in Nov 2018
Publisher Packt
ISBN-13 9781788993401
Length 348 pages
Edition 1st Edition
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Author (1):
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Xuanyi Chew Xuanyi Chew
Author Profile Icon Xuanyi Chew
Xuanyi Chew
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Table of Contents (12) Chapters Close

Preface 1. How to Solve All Machine Learning Problems FREE CHAPTER 2. Linear Regression - House Price Prediction 3. Classification - Spam Email Detection 4. Decomposing CO2 Trends Using Time Series Analysis 5. Clean Up Your Personal Twitter Timeline by Clustering Tweets 6. Neural Networks - MNIST Handwriting Recognition 7. Convolutional Neural Networks - MNIST Handwriting Recognition 8. Basic Facial Detection 9. Hot Dog or Not Hot Dog - Using External Services 10. What's Next? 11. Other Books You May Enjoy

Forecasting

We're decomposing a time series here with the STL algorithm. There are other methods of decomposing time series—you may be familiar with one: the discrete Fourier transform. If your data is a time-based signal (like electrical pulses or music), a Fourier transform essentially allows you to decompose a time series into various parts. Bear in mind that they are no longer seasonality and trend, but rather decompositions of different time and frequency domains.

This begs the question: what is the point of decomposing a time series?

A primary reason why we do any machine learning at all is to be able to predict values based on an input. When done on time series, this is called forecasting.

Think about this for a bit: if a time series is made up of multiple components, wouldn't it be better to be able to predict per component? If we are able to break a time...

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