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Using apply (or sapply) on an mts object removes its time series properties when sending to function. How should I apply same function (with ts input and ts output) on each of times series in an mts object and return it (preferably as mts) [I mean besides using for loops]?

For example suppose I write a function that returns the trend of a time series (using stl)

myfunc <- function(x) {
      return(stl(x,"per")$time.series[,2])
}

Now for a sample mts

z <- ts(matrix(rnorm(90), 30, 3), start=c(1961, 1), frequency=4)
class(z)

Sending only one of the time series works correct:

myfunc(z[,1]) # works correctly, returns the trend of first series

My function is not designed for multiple time series so:

myfunc(z) # will not work returning the error below

Error in stl(x, "per") : only univariate series are allowed

Using apply on the mts object send each of the time series as a vector, not preserving its time series properties (tsp):

apply(z,2,myfunc) # will not work returning the error below

Error in stl(x, "per") : 
series is not periodic or has less than two periods
share|improve this question
1  
True, apply will remove attributes, but sapply should not do so. ts objects are weird. They often have printing methods that mislead the user as to their true structures, so you should be using str() on them. – 42- Nov 27 '12 at 17:38
    
Would you please provide code on using sapply in for my example? I found out that using sapply raised the same error as it just calls apply itself. – Majid Einian Nov 28 '12 at 7:40
1  
And about ts objects weirdness! I don't use or rely on any printing method, I do need to know its time series properties, i.e. tsp, which is just a vector of length 3, indicating the start, the end and the frequency of time series data – Majid Einian Nov 28 '12 at 7:45
up vote 7 down vote accepted

A simple way around this, is to work with the indices instead of a clean apply :

sapply(seq_len(ncol(z)),function(i) myfunc(z[,i]))

apply puts clean vectors inside the function, because it first converts an object to a matrix. By using the [ function defined for time series objects, you are sure that you extract a valid time series each time.

share|improve this answer
    
pretty solution. – agstudy Nov 27 '12 at 13:03

I change the myfunc to check if it have a ts object as parameter x.

If x is not a ts , it is converted to ts object as stl need this parameter type.

  myfunc <- function(x,...){
        y <- x
       if(class(x) != 'ts') {
         dots <- c(...)
         y <- ts(x,start=c(dots[1], dots[2]), frequency=dots[3])
       }
       return(stl(y,"per")$time.series[,2])
     }
  ## no need to conversion (already ts object)
  myfunc(z[,1])


  ## mts object ( here we give parameter necessary for conversion)
  apply(z,2,myfunc,1961,1,4) 
share|improve this answer
    
and if I have to have the outcome as mts itself: ts(apply(z,2,myfunc,1961,1,4),start=c(1961, 1), frequency=4) – Majid Einian Nov 27 '12 at 14:15

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