Let's say I have 3 files with 3 variables: date, ID, and price. I would like to merge them by date, so if one my current files is:
date ID Price 01/01/10 A 1 01/02/10 A 1.02 01/02/10 A 0.99 ... ...
I would like to get a merged file that looks like the one below for IDs A,B and C (Pr for Price):
date Pr.A Pr.B Pr.C 01/01/10 1 NA NA 01/02/10 1.02 1.2 NA 01/03/10 0.99 1.3 1 01/04/10 NA 1.23 2 01/05/10 NA NA 3
Notice that for some dates there are not prices so in that case is an NA.
My current approach works but I feel is a bit clumsy.
setwd('~whatever you put the files') library(plyr) listnames = list.files(pattern='.csv') pp1 = ldply(listnames,read.csv,header=T) #put all the files in a data.frame names(pp1)=c('date','ID','price') pp1$date = as.Date(pp1$date,format='%m/%d/%Y') # Reshape data frame so it gets organized by date pp1=reshape(pp1,timevar='ID',idvar='date',direction='wide')
Is there any better approach you could think of?