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Julia Programming Projects

You're reading from   Julia Programming Projects Learn Julia 1.x by building apps for data analysis, visualization, machine learning, and the web

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Product type Paperback
Published in Dec 2018
Publisher Packt
ISBN-13 9781788292740
Length 500 pages
Edition 1st Edition
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Author (1):
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Adrian Salceanu Adrian Salceanu
Author Profile Icon Adrian Salceanu
Adrian Salceanu
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Table of Contents (13) Chapters Close

Preface 1. Getting Started with Julia Programming FREE CHAPTER 2. Creating Our First Julia App 3. Setting Up the Wiki Game 4. Building the Wiki Game Web Crawler 5. Adding a Web UI for the Wiki Game 6. Implementing Recommender Systems with Julia 7. Machine Learning for Recommender Systems 8. Leveraging Unsupervised Learning Techniques 9. Working with Dates, Times, and Time Series 10. Time Series Forecasting 11. Creating Julia Packages 12. Other Books You May Enjoy

Time series decomposition


We can thus say that any value in a time series can be represented through a function of the four components we discussed earlier—trend, seasonality, error, and cycle. The relationship between the four components can be either additive or multiplicative.

The additive model is used when the seasonal variation stays about the same across time. The trend may be upward or downward, but the seasonality stays more or less the same. A plot of such data will look very similar to this:

If we draw two imaginary lines between the yearly maximums and the yearly minimums, the lines will be pretty much parallel.

For an additive time series model, the four components are summed up to produce the values in the series. Thus, a time series Y can be decomposed into Y = Trend + Cycle + Seasonality + Noise.

A multiplicative model should be used with a time series where the seasonal variability increases over time. For example, a typical multiplicative time series is represented by the international...

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