# How to create new variable based on the difference between two observations that indicates the direction of change?

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

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 `i`th value of it.

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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