# Comparison under 2 conditions

I have a little problem, i have these parameters:

``````df <- data.frame(Equip = c(1,1,1,1,1,2,2,2,2,2),
Notif = c(1,1,1,2,2,3,3,3,3,4),
Component = c("Dichtung","Motor","Getriebe","Service","Motor","Lüftung","Dichtring","Motor","Getriebe","Dichtring"),
rank= c(1 , 1 , 1 , 2 , 2 , 1 , 1 , 1 , 1 , 2))
``````

Now i want to have a comparison, looking just for one `Equip`, and if the used `Components` in the first `rank`, are the same as in the second `rank` ( just by the same `Equip`):

On 2 ways:

The first: are all Components the same?

Is any( minimum 1) Component the same?

I need a high automatic solution, because my dataset has more than 150k rows.

The desired answer could be a vector with just boolean expressions, including TRUE and FALSE.

So for the example above,

``` answer <- c(TRUE,TRUE) ```

Because Equip 1 rank 1 Component: Motor "AND" Equip 1 rank2 is the Component: Motor as well. ( An Example for the 1 desired way)

Thank you very much for your help =)

i used the comment function but i can not show the problem, because i want to show the code.

the original data have more then 2 ranks now i want to combine rank x with rank x+1 in one step,for this is used a for this i used a foor loop in the function but it does not work any idea? ` `

``` a <- lapply(split(df,df\$Equips),function(x){ for(i in 1:8){ ll <- split(x,x\$rank) if(length(ll)>i ) ii <- intersect(ll[[i]]\$Comps,ll[[i+1]]\$Comps ) else ii <- NA c(length(ii)> 0 && !is.na(ii),ii) } }) b <- unlist(a) c <- table(b,b) rowSums(c) ```

any idea what i can do for it ( the main idea is to have the result of 1-2,2-3,3-4 etc in one step!

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What are your desired results ? Could you show us an example using the data you've posted ? –  digEmAll Jan 2 '13 at 9:33
For the same Equip (e.g. = 1), if one of the components in one rank is repeated in the other rank you want result = true ? So, just one boolean for each Equip value ? –  digEmAll Jan 2 '13 at 10:00
Yes this is the first step i want to have. The second would be if all the components are the same. But you got what i mean, yes. –  Daniel Jan 2 '13 at 10:09

package `plyr` is suitable for group manipulation

``````dat.r <- dlply(df ,.(Equip),function(x){      # I split by Equipe
ll <- split(x,x\$rank)                       # I split by rank

if(length(ll)> 1)
ii <- intersect(ll[[1]]\$Comps,ll[[2]]\$Comps ) ## test intersection
else
ii <- NA
c(length(ii)> 0 && !is.na(ii),ii)                        ## the result
})
``````

here I get the the comparaison result and the component name

``````dat.r
\$`1`
[1] "TRUE"  "Motor"
``````

Edit: here the result with base package(no internet)

``````lapply(split(df,df\$Equip),function(x){      # I split by Equipe
ll <- split(x,x\$rank)                       # I split by rank
if(length(ll)> 1)
ii <- intersect(ll[[1]]\$Comps,ll[[2]]\$Comps ) ## test intersection
else
ii <- NA
c(length(ii)> 0 && !is.na(ii),ii)                                          ## the result
})

\$`1`
[1] "TRUE"  "Motor"

\$`2`
[1] "TRUE"      "Dichtring"
``````
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What do you exactly mean? The idea to get the information of the "again used" Component is very useful. If you mean this i would like to have this information. Like i told in my topic, its a big data set and i have to summarize it, like looking up which Component is used often and which not. like this. Its the first step of my analysis. –  Daniel Jan 3 '13 at 17:27
the data is on the same structure as in the given example, there are just two different things, there are more then 2 ranks( but i tested it and this was not the reason that it doen't work) and the other thing is, that the data set is so big. I also think that a lapply solution is (quite difficult to look at). Is there another possibility to do it ? really thanks for your help =) –  Daniel Jan 3 '13 at 20:53
I really do not know what to do, there is still the error code: " Subscript out of bounds" would a rle of the vectors would help you? rle(df\$rank) Run Length Encoding lengths: int [1:8750] 5 1 4 34 2 29 1 8 1 8 ... values : int [1:8750] 1 2 3 1 2 1 2 1 2 1 ... > rle(df\$Equips) Run Length Encoding lengths: int [1:20268] 1 2 7 1 1 1 3 2 2 2 ... values : int [1:20268] 10024820 10025441 10040292 10045800 10050420 10062984 10071240 10083675 10090325 10099139 ... –  Daniel Jan 4 '13 at 11:38
str(df\$Comps) Factor w/ 16 levels "Burner","Commercial",..: 16 NA NA 14 16 8 16 10 16 16 ... does it something to do with the "NA"'s ?? Thank you for your help –  Daniel Jan 4 '13 at 11:41
Comps is you're component column? –  agstudy Jan 4 '13 at 11:45

Here's a possible solution:

``````df <- data.frame(Equip = c(1,1,1,1,1,2,2,2,2,2),
Notif = c(1,1,1,2,2,3,3,3,3,4),
Component = c("Dichtung","Motor","Getriebe","Service","Motor","Lüftung","Dichtring","Motor","Getriebe","Dichtring"),
rank= c(1 , 1 , 1 , 2 , 2 , 1 , 1 , 1 , 1 , 2))

allComponents <- function(subDf){
setequal(subDf[subDf\$rank==1,'Component'],subDf[subDf\$rank==2,'Component'])
}

anyComponents <- function(subDf){
length(intersect(subDf[subDf\$rank==1,'Component'],subDf[subDf\$rank==2,'Component'])) > 0
}

# all components are equal
res1 <- by(df,INDICES=df\$Equip,FUN=allComponents)
# at least one component equal
res2 <- by(df,INDICES=df\$Equip,FUN=anyComponents)

as.vector(res1)
> FALSE, FALSE

as.vector(res2)
> TRUE, TRUE
``````
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