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Imagine, you have performance scores of five countries for a period of ten years. You do know that the performance of some countries considerably changed at specific years. Now, you would like to know whether they changed in a positive or in a negative way. It is this last step that troubles me.

Sample data:

mydata<-1:3
mydata<-expand.grid(
country=c('A', 'B', 'C', 'D', 'E'),
year=c('1980','1981','1982','1983','1984','1985','1986','1987','1988','1989'))
mydata$score=sapply(runif(50,0,2), function(x) {round(x,4)})
library(reshape)
mydata<-reshape(mydata, v.names="score", idvar="year", timevar="country", direction="wide")

Identification of change:

score.cols <- grep("score", colnames(mydata), value=TRUE)
period.cols <- gsub("score", "period", score.cols)
compute.period <- function(x)as.integer(c(NA, abs(diff(x)) >= 0.5))
cbind(mydata, `names<-`(lapply(mydata[score.cols], compute.period), period.cols))

> cbind(mydata, `names<-`(lapply(mydata[score.cols], compute.period), period.cols))
   year score.A score.B score.C score.D score.E period.A period.B period.C period.D period.E
1  1980  0.4029  0.3308  1.0432  0.7405  0.7254       NA       NA       NA       NA       NA
6  1981  1.7577  0.5479  1.4437  1.3996  0.8454        1        0        0        1        0
11 1982  1.9603  0.5404  1.2687  1.4317  0.0203        0        0        0        0        1
16 1983  0.5509  1.5834  1.3954  0.4935  0.4994        1        1        0        1        0
21 1984  1.9672  1.0628  1.8436  0.4327  0.0144        1        1        0        0        0
26 1985  1.6799  1.5873  0.5898  0.9553  1.3475        0        1        1        1        1
31 1986  1.2918  1.7049  0.3448  0.1841  0.9270        0        0        0        1        0
36 1987  0.1719  0.3297  0.6386  0.4075  1.8494        1        1        0        0        1
41 1988  0.7123  1.2378  0.9220  0.3278  1.5888        1        1        0        0        0
46 1989  0.2998  0.4418  1.0640  1.1405  0.7034        0        1        0        1        1

Identification of direction of change:

direct.cols<-gsub("score", "direction", score.cols)
compute.direction<-function(mydata){
for (i in 1:length(score.cols))
{ 
direct.cols[,i] <- ifelse((period.cols[i] == 1) & (score.cols[i] >= score.cols[i-1]), 1, 
+ ifelse((period.cols[i] == 1) & (score.cols[i] <= score.cols[i-1]), 2,
+ ifelse((period.cols[i] != 1), 0, NA)))
}}
cbind(mydata, `names<-`(lapply(mydata[score.cols], compute.direction), direct.cols))

PROBLEM: When running the last step, I get the following error message:

    Error in direct.cols[, i] <- ifelse((period.cols[i] == 1) & (score.cols[i] >=  : 
  incorrect number of subscripts on matrix

Why? And what am I doing wrong?

Any help would be greatly appreciated. Thanks a million.

This question builds on the great answers by flodel and Maiasaura to a question I asked earlier [http://stackoverflow.com/questions/12443202/how-to-get-the-difference-in-value-between-subsequent-observations-country-year].

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2 Answers 2

up vote 1 down vote accepted

If you try to replicate what I have suggested for your previous question (http://stackoverflow.com/questions/12443202/how-to-get-the-difference-in-value-between-subsequent-observations-country-year), then your compute.diff should be a function that only takes a vector of scores as input. It will be applied to each of the score.A, score.B, etc. columns in your data. So you should use something like:

compute.direction <- function(x) {
   x.diff <- c(NA, diff(x))
   ifelse(x.diff > 0.5, 1,
          ifelse(x.diff < -0.5, 2,
                 NA))
}

However, look at the edit I made to my answer on that previous question: it seems more and more like you are not working with the best data structure. Instead of appending multiple blocks of columns (five for period, five for direction), I'd suggest you work first on the raw (non-reshaped data):

mydata <- within(mydata, period    <- ave(score, country, FUN = compute.period),
                         direction <- ave(score, country, FUN = compute.direction))

and then only reshape your data.

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Juhu -- I just applied it to my own data set and it works : ) It was a very good idea not to reshape the data, makes it less complicated. Thank you so much! –  TiF Sep 16 '12 at 14:14

The object period.cols is a vector and hence 1-dimensional. Use

period.cols[i]

to access the ith value of it.

share|improve this answer
    
Ah, thanks! I removed the commas and edited the above entry accordingly. Now, I get a new error message: Error in direct.cols[, i] <- ifelse((period.cols[i] == 1) & (score.cols[i] >= : incorrect number of subscripts on matrix. Any ideas? –  TiF Sep 16 '12 at 13:06

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