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You're reading from  Hands-On Time Series Analysis with R

Product typeBook
Published inMay 2019
Reading LevelBeginner
PublisherPackt
ISBN-139781788629157
Edition1st Edition
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Author (1)
Rami Krispin
Rami Krispin
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Rami Krispin

Rami Krispin is a data scientist at a major Silicon Valley company, where he focuses on time series analysis and forecasting. In his free time, he also develops open source tools and is the author of several R packages, including the TSstudio package for time series analysis and forecasting applications. Rami holds an MA in Applied Economics and an MS in actuarial mathematics from the University of MichiganAnn Arbor.
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The stationary process

One of the main assumptions of the ARIMA family of models is that the input series follows the stationary process structure. This assumption is based on the Wold representation theorem, which states that any stationary process can be represented as a linear combination of white noise. Therefore, before we dive into the ARIMA model components, let's pause and talk about the stationary process. The stationary process, in the context of time series data, describes a stochastic state of the series. Time series data is stationary if the following conditions are taking place:

  • The mean and variance of the series do not change over time
  • The correlation structure of the series, along with its lags, remains the same over time

In the following examples, we will utilize the arima.sim function from the stats package to simulate a stationary and non-stationary...

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Hands-On Time Series Analysis with R
Published in: May 2019Publisher: PacktISBN-13: 9781788629157

Author (1)

author image
Rami Krispin

Rami Krispin is a data scientist at a major Silicon Valley company, where he focuses on time series analysis and forecasting. In his free time, he also develops open source tools and is the author of several R packages, including the TSstudio package for time series analysis and forecasting applications. Rami holds an MA in Applied Economics and an MS in actuarial mathematics from the University of MichiganAnn Arbor.
Read more about Rami Krispin