Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

In my dataset I have a continuous variable mag from which I derived a categorial variable mag.cat which has four categories: 1 for the values between 0 and 1 for mag, 2 for the values between 1 and 2 for mag, 3 for the values between 2 and 3 for mag & 4 for the values above 3 for mag. A subset of the data looks like this:

   location mag depth mag.cat
1     Assen 1.8   1.0       2
2 Hooghalen 2.5   1.5       3
3 Purmerend 0.7   1.2       1
4     Emmen 2.2   3.0       3
5 Geelbroek 3.6   3.0       4
6   Eleveld 2.7   3.0       3

I want to summarize this dataframe into a new one with just one row for each location.

I did this with:

df.new <- ddply(df, .(location), summarise, n.tot = as.numeric(length(location)), 
                gem.mag = round(mean(mag),1), 
                n.1 = as.numeric(length(location[mag == 1])),
                n.2 = as.numeric(length(location[mag == 2])),
                n.3 = as.numeric(length(location[mag == 3])),
                n.4 = as.numeric(length(location[mag == 4]))
                )

The n.1, n.2, n.3 & n.4 variables are supposed to contain the counts for each category for each location. The sum of these variables should logically be equal to n.tot, but they aren't. This can be seen in the head of the new dataframe:

      location  n.tot gem.mag n.1 n.2 n.3 n.4
1   Achterdiep      5     1.1   2   0   0   0
2      Alkmaar      4     3.2   0   0   1   0
3       Altena      1     1.3   0   0   0   0
4 Amelanderwad      2     1.8   0   0   0   0
5         Amen      6     1.1   0   0   0   0
6     Amerbrug      1     0.9   0   0   0   0

I expected something like:

      location  n.tot gem.mag n.1 n.2 n.3 n.4
1   Achterdiep      5     1.1   2   2   0   1
2      Alkmaar      4     3.2   0   3   1   0
3       Altena      1     1.3   0   1   0   0
4 Amelanderwad      2     1.8   0   1   1   0
5         Amen      6     1.1   3   2   0   1
6     Amerbrug      1     0.9   1   0   0   0

What am I doing wrong?

share|improve this question
2  
is it maybe supposed to be: n.1 = as.numeric(length(location[mag.cat == 1])), etc? –  Rguy Jan 3 '14 at 19:53
1  
Maybe I misunderstand you, but why do you get the length of mag and not mag.cat when calculating n.x. mag still contains decimal point values, doesn't it? –  Mark Heckmann Jan 3 '14 at 19:54
    
...also, I'm not sure why you feel that as.numeric is necessary here. –  joran Jan 3 '14 at 20:01
    
@Rguy @Mark Arghh, I now see my error. Using mag.cat gives the desired results :-) –  Jaap Jan 3 '14 at 20:37

1 Answer 1

up vote 3 down vote accepted

Why not:

res <- xtabs( ~ location + mag.cat, data=df)
res

If you want totals as a column, then cbind(tot.n= rowSums(res), res).

Means of mag: with(df, tapply(mag, location, mean))

Everything:

 cbind( gem.mag= with(df, tapply(mag, location, mean)),
        tot.n= rowSums(res), 
        res)

I suppose the answer is not complete without a plyr version:

 require(plyr)
 df.new <- ddply(df, .(location), summarise, n.tot = as.numeric(length(location)), 
                gem.mag = round(mean(mag),1), 
                n.1 = sum(mag.cat==1),
                n.2 = sum(mag.cat==2),
                n.3 = sum(mag.cat==3),
                n.4 = sum(mag.cat==4)
                )
> df.new
   location n.tot gem.mag n.1 n.2 n.3 n.4
1     Assen     1     1.8   0   1   0   0
2   Eleveld     1     2.7   0   0   1   0
3     Emmen     1     2.2   0   0   1   0
4 Geelbroek     1     3.6   0   0   0   1
5 Hooghalen     1     2.5   0   0   1   0
6 Purmerend     1     0.7   1   0   0   0
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.