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I am totally new to R and have just started using it. I have three years of weekly data. I want to decompose this time series data into trend, seasonal and other components. I have following doubts:

  1. Which function I should use - ts()or decompose()
  2. How to deal with leap year situation.

Please correct me if I am wrong, the frequency is 52.

Thanks in Advance. I would really appreciate any kind of help.

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up vote 3 down vote accepted

Welcome to R!

Yes, the frequency is 52.

If the data is not already classed as time-series, you will need both ts() and decompose(). To find the class of the dataset, use class(data). And if it returns "ts", your data is already a time-series as far as R is concerned. If it returns something else, like "data.frame", then you will need to change it to time-series. Assign a variable to ts(data) and check the class again to make sure.

There is a monthly time-series dataset sunspot.month already loaded into R that you can practice on. Here's an example. You can also read the help file for decompose by writing ?decompose

class(sunspot.month)
[1] "ts"

> decomp <- decompose(sunspot.month)

> summary(decomp)

         Length Class  Mode     
x        2988   ts     numeric  
seasonal 2988   ts     numeric  
trend    2988   ts     numeric  
random   2988   ts     numeric  
figure     12   -none- numeric  
type        1   -none- character

> names(decomp)
[1] "x"        "seasonal" "trend"    "random"   "figure"   "type"    

> plot(decomp)  # to see the plot of the decomposed time-series 

The call to names indicates that you can also access the individual component data. This can be done with the $ operator. For example, if you want to look at the seasonal component only, use decomp$seasonal.

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Thanks for your response. I have one doubt,instead of decompose , can I use stl() to decompose weekly data into these components? Will both give me different results? – Arushi Feb 17 '14 at 18:49
    
Per the decompose help file -- "The function stl provides a much more sophisticated decomposition." Have a look at both of the help files. Among other differences, stl uses Loess methods and decompose uses classic auto-regression and moving average models. They will not produce the same results. – Richard Scriven Feb 17 '14 at 19:47

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