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I have a data containing quotations of indexes (S&P500, CAC40,...) for every 5 minutes of the last 3 years, which make it quite huge. I am trying to create new columns containing the performance of the index for each time (ie (quotation at [TIME]/quotation at yesterday close) -1) and for each index. I began that way (my data is named temp):

listIndexes<-list("CAC","SP","MIB") # there are a lot more
listTime<-list(900,905,910,...1735) # every 5 minutes
for (j in 1:length(listTime)){
  Time<-listTime[j]
  for (i in 1:length(listIndexes)) {
    Index<-listIndexes[i]
    temp[[paste0(Index,"perf",Time)]]<-temp[[paste0(Index,Time)]]/temp[[paste0(Index,"close")]]-1
  # other stuff to do but with the same concept
  }
}

but it is quite long. Is there a way to get rid of the for loop(s) or to make the creation of those variables quicker ? I read some stuff about the apply functions and the derivatives of it but I do not see if and how it should be used here.

My data looks like this :

date      CACcloseyesterday CAC1000   CAC1005 ... CACclose ... SP1000 ... SPclose
20140105    3999            4000    40001.2       4005 ....  2000   ....  2003
20140106    4005            4004    40003.5       4002 ....  2005   ....  2002
...

and my desired output would be a new column (more eaxcatly a new column for each time and each index) which would be added to temp

date      CACperf1000       CACperf1005...    SPperf1000...
20140106  (4004/4005)-1  (4003.5/4005)-1 .... (2005/2003)-1 # the close used is the one of the day before 
idem for the following day

i wrote (4004/4005)-1 just to show the calcualtio nbut the result should be a number : -0.0002496879

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  • 2
    Hard to answer without seeing what your data looks like and what your desired output would be. Can you please provide those?
    – Heroka
    Aug 7, 2015 at 13:40
  • Can you show few lines of temp
    – akrun
    Aug 7, 2015 at 13:41
  • are the data xts objects? Aug 7, 2015 at 13:50
  • I imported the data from a .csv file if it might help
    – etienne
    Aug 7, 2015 at 13:52

1 Answer 1

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It looks like you want to generate every combination of Index and Time. Each Index-Time combination is a column in temp and you want to calculate a new perf column by comparing each Index-Time column against a specific Index close column. And your problem is that you think there should be an easier (less error-prone) way to do this.

We can remove one of the for-loops by generating all the necessary column names beforehand using something like expand.grid.

listIndexes <-list("CAC","SP","MIB")
listTime <- list(900, 905, 910, 915, 920)

df <- expand.grid(Index = listIndexes, Time = listTime,
                  stringsAsFactors = FALSE)
df$c1 <- paste0(df$Index, "perf", df$Time)
df$c2 <- paste0(df$Index, df$Time)
df$c3 <- paste0(df$Index, "close")

head(df)
#>   Index Time         c1     c2       c3
#> 1   CAC  900 CACperf900 CAC900 CACclose
#> 2    SP  900  SPperf900  SP900  SPclose
#> 3   MIB  900 MIBperf900 MIB900 MIBclose
#> 4   CAC  905 CACperf905 CAC905 CACclose
#> 5    SP  905  SPperf905  SP905  SPclose
#> 6   MIB  905 MIBperf905 MIB905 MIBclose

Then only one loop is required, and it's for iterating over each batch of column names and doing the calculation.

for (row_i in seq_len(nrow(df))) {
  this_row <- df[row_i, ]
  temp[[this_row$c1]] <- temp[[this_row$c2]] / temp[[this_row$c3]] - 1
}

An alternative solution would also be to reshape your data into a form that makes this transformation much simpler. For instance, converting into a long, tidy format with columns for Date, Index, Time, Value, ClosingValue column and directly operating on just the two relevant columns there.

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  • thanks for your answer but I have the feeling that the output won't be in a column (I need a column for all the performance of the CAC at 900, then at 905, ... and the same for MIB, ...). Is there a quick way to create those columns after using your solution ? Also, I need those results for each day and I do not see how your solution provides the results for each day (the order is important)
    – etienne
    Aug 7, 2015 at 14:29
  • Each row df holds a set of related column names. The temp[[this_row$c1]] <- ... creates a new column from the other two columns. It's the same as your original example.
    – TJ Mahr
    Aug 7, 2015 at 14:34

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