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Further to this question, I'm now having to check for the previous x rows having decreasing (or staying the same) values.

I'm having trouble getting the behaviour I'd expect, i.e. the diffs from m1->m2,m2->m3,m3->m4 return a TRUE/FALSE in m4. I think I have it oriented the right way round and I thought maybe the lag on the filter was the issue but I can't make the amendedcheckfun work as expected after fiddling with the inner\outer revs, the order of the diff & NA, and the rep statement.

Can folk suggest an amendedcheckfun that would do the same as checkfun but in the opposite row direction?

library("plyr")
df<-data.frame(ID=1,Month=1:15,Bal=seq(from=500, to=220, by=-20))
df$Bal[6] <- 505
df$Bal[11] <- 505

origcheckfun <- function(x,n) {
  rev(filter(rev(c(diff(x) <= 0,NA)),rep(1,pmin(n,length(x)),sides=1))) == n  }

amendedcheckfun <- function(x,n) {
  rev(filter(c(diff(x) <= 0,NA),rep(1,pmin(n,length(x)),sides=1))) == n }

ddply(df,.(ID),transform,diff=c(diff(Bal) ,NA),check=checkfun(Bal,3), 
  check2=amendedcheckfun(Bal,3))



amendedcheckfun output in check2

   ID Month Bal diff check check2
1   1     1 500  -20    NA     NA
2   1     2 480  -20  TRUE     NA
3   1     3 460  -20  TRUE   TRUE  # check2 correct
4   1     4 440  -20 FALSE   TRUE
5   1     5 420   85 FALSE  FALSE  # check2 not correct - id=2:4 all decreases
6   1     6 505 -125 FALSE  FALSE
7   1     7 380  -20  TRUE  FALSE
8   1     8 360  -20  TRUE   TRUE  # check2 not correct - id=5 is increase
9   1     9 340  -20 FALSE   TRUE  # check2 correct
10  1    10 320  185 FALSE  FALSE  # check2 not correct - id=7:9 all decreases
11  1    11 505 -225 FALSE  FALSE
12  1    12 280  -20  TRUE  FALSE
13  1    13 260  -20  TRUE   TRUE
14  1    14 240  -20    NA   TRUE
15  1    15 220   NA    NA     NA  # check2 not correct - should show TRUE

ideal output

   ID Month Bal diff test
1   1     1 500  -20    NA
2   1     2 480  -20    NA
3   1     3 460  -20    NA
4   1     4 440  -20  TRUE
5   1     5 420   85  TRUE
6   1     6 505 -125 FALSE
7   1     7 380  -20 FALSE
8   1     8 360  -20 FALSE
9   1     9 340  -20  TRUE
10  1    10 320  185  TRUE
11  1    11 505 -225 FALSE
12  1    12 280  -20 FALSE
13  1    13 260  -20 FALSE
14  1    14 240  -20  TRUE
15  1    15 220   NA  TRUE
share|improve this question
    
Why not simply use checkfun with the input in reverse order (e.g., checkfun(rev(Bal),3))? –  QuantIbex Jul 8 '13 at 9:18
    
Neat idea, but that returns all FALSE values. Perhaps I misunderstood? ddply(df,.(ID),transform,diff=c(diff(Bal) ,NA),check=checkfun(Bal,3), check2=amendedcheckfun(Bal,3), check3=checkfun(rev(Bal),3)) –  Steph Locke Jul 8 '13 at 9:21
    
It's more likely that I misunderstood what what you're looking for. Would this do what you're looking for: c(rep(NA, 2), head(origcheckfun(df$Bal,3), -2)). The result won't match what you expect but it relies on the check, which seems odd to me. Shouldn't the 1st, 6th and 11th values of check be TRUE? –  QuantIbex Jul 8 '13 at 10:04
1  
I've added in an 'ideal' output which might make things a bit clearer for everyone. –  Steph Locke Jul 8 '13 at 10:14
    
In your description you mention that the transitions m1->m2,m2->m3,m3->m4 should return a TRUE/FALSE in m4. From the first 2 values of your ideal output I guess that if there are not enough data the value returned should be NA. So why is the third value of your ideal output TRUE and not NA? –  QuantIbex Jul 8 '13 at 10:55

2 Answers 2

up vote 1 down vote accepted

Here is a function that should do what you want

amendedcheckfun <- function(x, n){
    c(rep(NA, n-1), sapply(n:length(x), function(i, x, n) {all(diff(x[(i-n+1):i]) <= 0)}, x=x, n=n))
}

ddply(df, .(ID), transform, diff = c(diff(Bal), NA), check2 = amendedcheckfun(Bal, 4))

Notice that here the second argument of the amendedcheckfun is 4, corresponding to the number of consecutive values to check.

The output with your example is

ID Month Bal diff check2
1   1     1 500  -20     NA
2   1     2 480  -20     NA
3   1     3 460  -20     NA
4   1     4 440  -20   TRUE
5   1     5 420   85   TRUE
6   1     6 505 -125  FALSE
7   1     7 380  -20  FALSE
8   1     8 360  -20  FALSE
9   1     9 340  -20   TRUE
10  1    10 320  185   TRUE
11  1    11 505 -225  FALSE
12  1    12 280  -20  FALSE
13  1    13 260  -20  FALSE
14  1    14 240  -20   TRUE
15  1    15 220   NA   TRUE
share|improve this answer

Due to difficulties with differing numbers of observations per ID and the sapply not scaling well over 70k plus records, I chipped away at it until I came across the rollapply function from the package zoo.

It's still not astonishingly fast but:

newcheckfun<- function(x,n) {rollapply(x,n,min,fill = NA,partial=1,align="right")}

df<-ddply(df,.(ID),transform
          ,diffs=c(0,diff(Bal)<=0)
          ,movcheck=newcheckfun(c(0,diff(Bal)<=0),3))
share|improve this answer

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