8

I'm trying to calculate some percentage change concisely using data.table, but I've got some trouble understanding entirely how the .SD operations works.

Let's say I have the following table

dt = structure(list(type = c("A", "A", "A", "B", "B", "B"), Year = c(2000L, 
2005L, 2010L, 2000L, 2005L, 2010L), alpha = c(0.0364325563237498, 
0.0401968159729988, 0.0357395587861466, 0.0317236054181487, 0.0328213742235379, 
0.0294694430578336), beta = c(0.0364325563237498, 0.0401968159729988, 
0.0357395587861466, 0.0317236054181487, 0.0328213742235379, 0.0294694430578336
)), .Names = c("type", "Year", "alpha", "beta"), row.names = c(NA, 
-6L), class = c("data.table", "data.frame"))


> dt
##    type Year      alpha       beta
## 1:    A 2000 0.03643256 0.03643256
## 2:    A 2005 0.04019682 0.04019682
## 3:    A 2010 0.03573956 0.03573956
## 4:    B 2000 0.03172361 0.03172361
## 5:    B 2005 0.03282137 0.03282137
## 6:    B 2010 0.02946944 0.02946944

To calculate the percentage change on alpha, by category, I came up with the following code:

dt[,change:=list(lapply(3:2,function(x)(.SD[x,alpha]/.SD[
(x-1),alpha]))),by=list(type)][][Year==2000,change:=NA]   

But something tells me their could be a more concise way of doing it. In particular if one would want to perform the percentage change for both columns the following would not work

dt[,c("changeAlpha","changeBeta"):=list(lapply(3:2,
function(x)(.SD[x]/.SD[(x-1)]))),by=list(type)][Year==2000,change:=NA][]

So I resorted to:

dt[,c("changeAlpha","changeBeta"):=list(
lapply(3:2,function(x)(.SD[x,alpha]/.SD[(x-1),alpha])),
lapply(3:2,function(x)(.SD[x,beta]/.SD[(x-1),beta]))),by=list(type)][
Year==2000,c("changeAlpha","changeBeta"):=list(NA,NA)][]

##        type Year      alpha       beta       changeAlpha        changeBeta
## 1:    A 2000 0.03643256 0.03643256                NA                NA
## 2:    A 2005 0.04019682 0.04019682  1.10332131557826  1.10332131557826
## 3:    A 2010 0.03573956 0.03573956 0.889114172877617 0.889114172877617
## 4:    B 2000 0.03172361 0.03172361                NA                NA
## 5:    B 2005 0.03282137 0.03282137  1.03460416276522  1.03460416276522
## 6:    B 2010 0.02946944 0.02946944 0.897873527693412 0.897873527693412

But the operations seems right but got a lot of warnings which lead me here.

  • Is my method of thinking completely wrong or is it the right way to proceed for this operation?
9

You could use the shift function from data.table v1.9.6+

Define your function

myFunc <- function(x) x/shift(x)

Select the columns you want to calculate the percentage for

cols <- c("alpha", "beta")

Or if you want to run this on all the colunms except the first two

cols <- names(dt)[-(1:2)]

Run the function over the columns

dt[, paste0("change", cols) := lapply(.SD, myFunc), by = type, .SDcols = cols][]
#    type Year      alpha       beta changealpha changebeta
# 1:    A 2000 0.03643256 0.03643256          NA         NA
# 2:    A 2005 0.04019682 0.04019682   1.1033213  1.1033213
# 3:    A 2010 0.03573956 0.03573956   0.8891142  0.8891142
# 4:    B 2000 0.03172361 0.03172361          NA         NA
# 5:    B 2005 0.03282137 0.03282137   1.0346042  1.0346042
# 6:    B 2010 0.02946944 0.02946944   0.8978735  0.8978735
  • I didn't have the bleeding edge version. The code is definitely more concise and easier to read. Yet, After installing the latest version of data.table and running your code. I've got object 'CisOrderedSubset' not found.Do you have any lead by any chance? – DJJ Mar 15 '15 at 0:25
  • 1
    Close all you R sessions and open only one and reinstall again. – David Arenburg Mar 15 '15 at 0:26
  • 1
    BTW, if you want to run this on all the columns of your data except the first two, set cols <- names(dt)[-(1:2)] and the run the code. – David Arenburg Mar 15 '15 at 0:40

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