Jump to content
 







Main menu
   


Navigation  



Main page
Contents
Current events
Random article
About Wikipedia
Contact us
Donate
 




Contribute  



Help
Learn to edit
Community portal
Recent changes
Upload file
 








Search  

































Create account

Log in
 









Create account
 Log in
 




Pages for logged out editors learn more  



Contributions
Talk
 



















Contents

   



(Top)
 


1 Decomposition based on rates of change  





2 Decomposition based on predictability  





3 Examples  





4 Software  





5 See also  





6 References  





7 Further reading  














Decomposition of time series






Euskara
Norsk bokmål
Українська
 

Edit links
 









Article
Talk
 

















Read
Edit
View history
 








Tools
   


Actions  



Read
Edit
View history
 




General  



What links here
Related changes
Upload file
Special pages
Permanent link
Page information
Cite this page
Get shortened URL
Download QR code
Wikidata item
 




Print/export  



Download as PDF
Printable version
 
















Appearance
   

 






From Wikipedia, the free encyclopedia
 


The decomposition of time series is a statistical task that deconstructs a time series into several components, each representing one of the underlying categories of patterns.[1] There are two principal types of decomposition, which are outlined below.

Decomposition based on rates of change[edit]

This is an important technique for all types of time series analysis, especially for seasonal adjustment.[2] It seeks to construct, from an observed time series, a number of component series (that could be used to reconstruct the original by additions or multiplications) where each of these has a certain characteristic or type of behavior. For example, time series are usually decomposed into:

Hence a time series using an additive model can be thought of as

whereas a multiplicative model would be

An additive model would be used when the variations around the trend do not vary with the level of the time series whereas a multiplicative model would be appropriate if the trend is proportional to the level of the time series.[3]

Sometimes the trend and cyclical components are grouped into one, called the trend-cycle component. The trend-cycle component can just be referred to as the "trend" component, even though it may contain cyclical behavior.[3] For example, a seasonal decomposition of time series by Loess (STL)[4] plot decomposes a time series into seasonal, trend and irregular components using loess and plots the components separately, whereby the cyclical component (if present in the data) is included in the "trend" component plot.

Decomposition based on predictability[edit]

The theory of time series analysis makes use of the idea of decomposing a times series into deterministic and non-deterministic components (or predictable and unpredictable components).[2] See Wold's theorem and Wold decomposition.

Examples[edit]

An example of using multiplicative decomposition in biohydrogen production forecast.[5]

Kendall shows an example of a decomposition into smooth, seasonal and irregular factors for a set of data containing values of the monthly aircraft miles flown by UK airlines.[6]

In policy analysis, forecasting future production of biofuels is key data for making better decisions, and statistical time series models have recently been developed to forecast renewable energy sources, and a multiplicative decomposition method was designed to forecast future production of biohydrogen. The optimum length of the moving average (seasonal length) and start point, where the averages are placed, were indicated based on the best coincidence between the present forecast and actual values.[5]

Software[edit]

An example of statistical software for this type of decomposition is the program BV4.1 that is based on the Berlin procedure. The R statistical software also includes many packages for time series decomposition, such as seasonal,[7] stl, stlplus,[8] and bfast. Bayesian methods are also available; one example is the BEAST method in a package Rbeast [9] in R, Matlab, and Python.

See also[edit]

References[edit]

  1. ^ a b c "6.1 Time series components | OTexts". www.otexts.org. Retrieved 2016-05-14.
  • ^ a b Dodge, Y. (2003). The Oxford Dictionary of Statistical Terms. New York: Oxford University Press. ISBN 0-19-920613-9.
  • ^ a b "6.1 Time series components | OTexts". www.otexts.org. Retrieved 2016-05-18.
  • ^ "6.5 STL decomposition | OTexts". www.otexts.org. Retrieved 2016-05-18.
  • ^ a b Asadi, Nooshin; Karimi Alavijeh, Masih; Zilouei, Hamid (2016). "Development of a mathematical methodology to investigate biohydrogen production from regional and national agricultural crop residues: A case study of Iran". International Journal of Hydrogen Energy. doi:10.1016/j.ijhydene.2016.10.021.
  • ^ Kendall, M. G. (1976). Time-Series (Second ed.). Charles Griffin. (Fig. 5.1). ISBN 0-85264-241-5.
  • ^ Sax, Christoph. "seasonal: R Interface to X-13-ARIMA-SEATS".
  • ^ Hafen, Ryan. "stlplus: Enhanced Seasonal Decomposition of Time Series by Loess".
  • ^ Li, Yang; Zhao, Kaiguang; Hu, Tongxi; Zhang, Xuesong. "BEAST: A Bayesian Ensemble Algorithm for Change-Point Detection and Time Series Decomposition".
  • Further reading[edit]


    Retrieved from "https://en.wikipedia.org/w/index.php?title=Decomposition_of_time_series&oldid=1182971771"

    Category: 
    Time series
    Hidden categories: 
    Articles with short description
    Short description matches Wikidata
    Articles needing additional references from October 2015
    All articles needing additional references
     



    This page was last edited on 1 November 2023, at 13:54 (UTC).

    Text is available under the Creative Commons Attribution-ShareAlike License 4.0; additional terms may apply. By using this site, you agree to the Terms of Use and Privacy Policy. Wikipedia® is a registered trademark of the Wikimedia Foundation, Inc., a non-profit organization.



    Privacy policy

    About Wikipedia

    Disclaimers

    Contact Wikipedia

    Code of Conduct

    Developers

    Statistics

    Cookie statement

    Mobile view



    Wikimedia Foundation
    Powered by MediaWiki