I am trying to bucket certain features into groups. The data.frame below (grouped) is my "key" (think Excel vlookup):
Original Grouped 1 Features Constant 2 PhoneService Constant 3 PhoneServices Constant 4 Surcharges Constant 5 CallingPlans Constant 6 Taxes Constant 7 LDUsage Noise 8 RegionalUsage Noise 9 LocalUsage Noise 10 Late fees Noise 11 SpecialServices Noise 12 TFUsage Noise 13 VoipUsage Noise 14 CCUsage Noise 15 Credits Credits 16 OneTime OneTime
I then reference my database which has a column (BillSection) that takes on a specific value from grouped$Original, and I want to group it according to grouped$Grouped. I am using the sapply function to perform this operation. Then I cbind the resulting output to my original data.frame.
grouper<-as.character(sapply(as.character(bill.data$BillSection[1:100]), # for the first 100 records of the data.frame bill.data function(x)grouped[grouped$Original==x,2])) # take the second column, i.e. Grouped, for the corresponding "TRUE" value in Original cbind(bill.data[1:100,],as.data.frame(grouper))
The above code works as expected, but it's slow when I apply it to my whole database, which exceeds 10,000,000 unique records. Is there an alternative to this method? I know I can use plyr, but it's even slower (I think) than sapply. I was trying to figure it out with data.table but no luck. Any suggestions would be helpful. I am open to coding this in Python, which I am new to, but heard is much faster than R, since I am dealing with large datasets very often. I wanted to know if R can do this fast enough to be useful.