1

I have a dataset that looks like this:

   UserID    Query     Asthma    Stroke    
   142       abc dr    0         0
   142       asthma    1         0
   142       stroke    0         1
   145       stroke    0         1
   145       pizza     0         0

There are hundreds of thousands of UserIDs and each user submitted a variable number of queries. In order to do further analysis, I need to sum "Asthma" and "Stroke" for each UserID. Any advice? Can you recommend resources for dealing with this type of dataset?

Thank you in advance... I'm very new to this.

7
  • tapply might do nicely. tapply(Asthma, INDEX=list(UserID), sum). If that's not what you want, you might want to include more details in your question.
    – Jota
    Jul 1, 2013 at 20:53
  • 1
    Surely a duplicate and many times over with one of several answers being aggregate(dfrm[, c("Asthma", "Stroke")], dfrm$UserID) since the default function for aggregate is sum.
    – IRTFM
    Jul 1, 2013 at 20:53
  • @DWin, :). That's a "broad" duplicate :D
    – Arun
    Jul 1, 2013 at 20:57
  • I admit I didn't put a lot of effort into finding a narrow duplicate, but I didn't think the OP put much effort into searching for an answer either. Feel free to find a better one and post it. Unless you really think this is a "new" question of course?
    – IRTFM
    Jul 1, 2013 at 21:00
  • @Dwin, it's a pointer in a direction, at least. Thank you for that.
    – andrly
    Jul 1, 2013 at 21:01

1 Answer 1

3

You can use ddply function from plyr package for that.

Assume your dataset is sample:

install.packages("plyr")
library(plyr)
ddply(sample,.(UserID), summarize,sumAsthma=sum(Asthma),sumStroke=sum(Stroke))   

Note: You can use numcolwise() if you have more than one numeric column.

ddply(sample,.(UserID),numcolwise(sum))

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