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according to my last question i have an new belonging question. After Editing my post and ask there and wait abot a week i want to try it here again.

This time with a better example:

Equip<- c(1,1,1,1,2,2,2,3,3,3,4,4,4,5,5,5,6,6,6,6,6,6)
Notif <-c(1,1,3,4,2,2,2,5,6,7,9,9,15,10,11,12,13,14,16,17,18,19)
rank <- c(1,1,2,3,1,1,1,1,2,3,1,1,2,1,2,3,1,2,3,4,5,6)
Component <- c("Ventil","Motor","Ventil","Ventil","Vergaser","Vergaser","Bremse",
"Lichtmaschine","Bremse","Lichtmaschine","Bremse","Motor","Lichtmaschine",
"Bremse","Bremse","Motor","Vergaser","Motor","Vergaser","Motor",
"Vergaser","Motor")    

df <- data.frame(Equip,Notif,rank,Component)

Equip is my subject and rank the actual visit number. Component is the subject what have to be looked for.

I want to have an output like this:

If an Equip(subject) was visited 2 times( rank 1 and 2) look by all Equips with rank 1&2 , if there is any Component which was regarded the first and the second time.

If an Equip(subject) was visited 3 times (rank 1 ,2 and 3) for this look by all Equips, if there is any Component list up 3 times like Equip 1, rank 1, Component Motor, Equip 1, rank 2, Component Motor, Equip 1, rank 3, Component Motor

The output should have the name of the Component, like True "Motor"

I have a code but with this, i can just compare the 1 and the 2 visit, the 2 and the 3 together and so on( i cannot split up again with the ranks, like Equips with 2 ranks, Equips with 3 ranks and so on)

the code is this:

a <- lapply(split(df,df$Equip),function(x){      
ll <- split(x,x$rank)                    
 if(length(ll)>1 )
ii <- intersect(ll[[1]]$Component,ll[[2]]$Component ) ## test intersection
  else 
   ii <- NA
 c(length(ii)> 0 && !is.na(ii),ii)                                              
})
b <- unlist(a)
c <- table(b,b)
rowSums(c)    

Hopefully you can help me. Please ask if there are any questions.

according to your question about the output, and to your way of solution,

     Equip Component   V1 idx
1:     1    Ventil  TRUE   3
2:     2        NA  False  1
3:     3        NA  False  3
4:     4        NA  FALSE  2
5:     5        NA  FALSE  3
6:     6        NA  FALSE  6

Something like that, but if its easier, Equip and idx is not neccessarilly needed

for Equip with 2 ranks:

TRUE          FALSE
  0             1

for Equip with 3 ranks:

TRUE          FALSE
 1              2

for Equip with 6 ranks:

TRUE          FALSE
 0              1
share|improve this question
1  
Ok in clearly words. First i want to look for the 2 times visited Equips. So the output i want to get is, if there are any items(Components) listen up in the first rank and in the second rank as well. If there is such an item output should be TRUE and the name of the component. For 3 times visited Equips the same but it should be taken a look if there is any component which were used in rank 1,2,3 etc...... the code above which i mentioned, cannot make difference for looking just for 2 times visited Equips, 3times visited Equips and so on.. Maybe now understand what i mean? –  Daniel Jan 17 '13 at 9:06

2 Answers 2

up vote 2 down vote accepted

Here's the output I think would be of interest to you. Its using data.table.

First, we create a data.table from your data.frame df with keys = Equip, Component as follows.

require(data.table) # load package
# then create the data.table with keys as specified above
# Check that both these columns are already sorted out for you!
dt <- data.table(df, key=c("Equip", "Component"))

Second, we create a function that'll give the desired output for a given rank query (2, 3 etc..)

this.check <- function(idx) {
    chk <- seq(1, idx)
    o <- subset(dt[, all(chk %in% rank), by=c("Equip", "Component")], V1 == TRUE)
    if (nrow(o) > 0) o[, idx:=idx]
}

What does this do? Let's run this for rank=1,2. We run this by:

> this.check(2)
# output
   Equip Component   V1 idx
1:     1    Ventil TRUE   2
2:     5    Bremse TRUE   2

This tells you that for Equip = 1 and 5, there are Components = Ventil and Bremse with rank = 1 and 2, respectively (indicated with idx=2). You also get the column V1 = TRUE, even though I, as @Carl pointed out already, don't understand the need for this. If you require, you can change the column names of this output by using setnames

Third, we use this function to query ranks=1,2, then ranks=1,2,3 .. and so on. This can be accomplished with a simple lapply as follows:

# Let's run the function for idx = 2 to 6. 
# This will check from rank = 1,2 until rank=1,2,3,4,5,6
o <- lapply(2:6, function(idx) {
    this.check(idx)
})
> o
[[1]]
   Equip Component   V1 idx
1:     1    Ventil TRUE   2
2:     5    Bremse TRUE   2

[[2]]
   Equip Component   V1 idx
1:     1    Ventil TRUE   3

[[3]]
NULL

[[4]]
NULL

[[5]]
NULL

It shows that for rank=1,2 and rank=1,2,3 you have some Component. For others there's nothing = NULL.

Finally, we can bind all of these together using rbind to get one single data.table as follows:

o <- do.call(rbind, o)
> o
   Equip Component   V1 idx
1:     1    Ventil TRUE   2
2:     5    Bremse TRUE   2
3:     1    Ventil TRUE   3

Here, idx=2 are the Component that satisfies rank=1,2 and idx=3 are the ones that satisfy rank=1,2,3.

Putting it all together:

this.check <- function(idx) {
    chk <- seq(1, idx)
    o <- subset(dt[, all(chk %in% rank), by=c("Equip", "Component")], V1 == TRUE)
    if (nrow(o) > 0) o[, idx:=idx]
}

o <- do.call(rbind, lapply(2:6, function(idx) {
    this.check(idx)
}))

I hope this helps.

Edit: (After series of exchanges in comments, this is the new solution I propose. I hope this is what you are after.)

require(data.table)
dt <- data.table(df, key=c("Equip", "Component"))
dt[, `:=`(e.max=max(rank)), by=Equip]
dt[, `:=`(ec.max=max(rank)), by=c("Equip", "Component")]
setkey(dt, "e.max", "ec.max")
this.check <- function(idx) {
    t1 <- dt[J(idx,idx)]
    t2 <- t1[, identical(as.numeric(seq_len(idx)), as.numeric(rank)), 
              by=c("Equip", "Component")]
    o <- table(t2$V1)
    if (length(o) == 1) 
        o <- c(o, "TRUE"=0)
    o <- c("idx"=idx, o)
}
o <- do.call(rbind, lapply(2:6, function(idx) this.check(idx)))

> o
#      idx FALSE TRUE
# [1,]   2     1    0
# [2,]   3     2    1
# [3,]   4     1    0
# [4,]   5     1    0
# [5,]   6     1    0
share|improve this answer
    
this highly goes to that what i need. So if an Equip has rank 1,2,3 then the component should have been in all ranks the same Component otherwise my analysis gets distort. Maybe for this it could be possible to make subsets of Equips with 2 ranks, then Equips with 3 ranks etc.?? Because as my pasted code i just want to read out the number of Equips ( in this case the true's) and the components( the number could be higher because more then 1 component could be in rank 1 and 2 as well) the data set i am working on have more then 80k rows so i really need it like i do at the end.... –  Daniel Jan 17 '13 at 15:16
    
Maybe you know something else or build up on your given code. But up to now really i big thanks for your work =) THANKS a LOT –  Daniel Jan 17 '13 at 15:17
    
Hmm. i will try it again because do not know how to show a desired output. Maybe it would be possible to split the data also for Equips with 2 rank, with 3 ranks and so on and then compare them like if in this splitted groups is in every rank any same component. Something like this i mean. –  Daniel Jan 17 '13 at 15:54
1  
I edited my whished output according to your code in my first question on the top. Thank you for your help –  Daniel Jan 17 '13 at 17:02
2  
Ok here we are =) That is what i mean. Thanks a lot for that. I will comprehend it and maybe if there is something unclear, i will ask. But at the moment, BIG THANKS TO YOU –  Daniel Jan 21 '13 at 10:27

If I make an array of your data, columnwise, as

foo<-cbind(Equip,Notif, rank, Component)
eqp<-1 # later, loop over all values
foo[c( which(  foo[,1]==eqp & (foo[,3]==1 | foo[,3]==2) ) ),4]
[1] "Ventil" "Motor"  "Ventil"

Feed those results to table and extract items with count ==2

Clearly any item which shows up twice is what you want.
This is not an answer I'd recommend using, since tools like ddply and aggregate will do this much more cleanly, but I want to be sure that this is the answer you're after, assuming a loop over eqp values in the original Equip .

share|improve this answer
    
First, thanks for your answer, i want to know, if there is any item used in rank 1 ( in one Equip) also used in rank2 ( in the same Equip) the anser should be something like, TRUE and then the name of the item. ( for a twice visited Equip( the info how many visits is rank))...... then with adapting the code a little bit, i want to gain the information, if a three times visited Equip, rank 1,2,3 if there is any item listen up in every of these visits. Know what i mean? Thanks a lot –  Daniel Jan 17 '13 at 8:57
1  
Why bother with "TRUE" since only the desired equipment names will be returned in the first place? –  Carl Witthoft Jan 17 '13 at 12:41
    
because there could be more than 1 Components in the first ans second rank. So i have 2 Component names in 1 Equip. that is ok but i have to know the number of Equips as well... You know what i mean ? –  Daniel Jan 17 '13 at 14:45

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