POSIX Vector Comparison — searching through and finding a match between DATE vectors efficiently?

I have 5five `POSIXct` type vectors. `ptime` vector is the reference vector. I want to find matching dates between `ptime` and the rest of the vectors. Once a date is matched then I want to perform a time comparison. A time comparison is followed and the the results are populated in a `data.frame(test)` with an appropriate classifying number.

``````# create the reference and the other vectors
ptime <- sample(seq(as.POSIXct('2005-08-01'),as.POSIXct('2006-05-31'), by='hour'),1051)
dawn <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),by='hour'),1095)
sunrise <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),by='hour'),1095)
sunset <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),by='hour'),1095)
dusk <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),by='hour'),1095)

# extract the date to compare using only the `dawn` vector
# all other vectors (except ptime) have the same date and length
pt <- as.Date(ptime)
dw <- as.Date(dawn)

# create data.frame
time <- c(1:1051)
test<-data.frame(time)

# I use a data.frame because I want to re-populate an existing data.frame
> str(test)
'data.frame':   1051 obs. of  1 variable:
\$ time: int  1 2 3 4 5 6 7 8 9 10 ...

# this is the loop that matches and assigns
for( b in 1:length(ptime) ){
for( a in 1:length(dawn) ) {
if( dw[a] == pt[b] ){
if( ptime[b] < dawn[a] ) {
test\$time[b] <- 1
}else if( ptime[b] < sunrise[a] ) {
test\$time[b] <- 2
}else if( ptime[b] < sunset[a] ) {
test\$time[b] <- 3
}else if( ptime[b] < dusk[a] ) {
test\$time[b] <- 4
}else
test\$time[b] <- 1
}
}
}

# output result shows the categorization sequence of 1, 2, 3, and 4
time
1    1
2    1
3    3
4    1
5    1
6    3
``````

The above code accomplishes what I want to do... but it takes `98.58` seconds. I have more data that varies in length (up to 5000).

Since I am a newbie to this, my guess is... what is taking so much time is the comparison of the DATES. Every time a new comparison has to be made `dw[a] == pt[b]` the process must search through `dw[a]`. Also, are the `if-else` statements necessary to accomplish the task?

Can anyone provide a faster/more efficient method to `loop` through, find matches, and store the results? Greatly appreciate it. Thanks

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Your code is not reproducible, in other words I get errors when I run it on my machine. Please make your example reproducible. –  Andrie Aug 27 '11 at 15:00
Edited my post. Example code should work. Thanks –  wisfool Aug 27 '11 at 18:19
Please try again. To ensure your example is reproducible, start from a clean R session and try to run your code. –  Andrie Aug 27 '11 at 18:39
there we go. sorry about that –  wisfool Aug 27 '11 at 21:14

What follows is still mainly guesswork on my part. I fixed some typos in your edit to get this:

``````ptime <- sample(seq(as.POSIXct('2005-08-01'),as.POSIXct('2006-05-31'),
by='hour'),1051)
dawn <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),
by='hour'),1095)
sunrise <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),
by='hour'),1095)
sunset <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),
by='hour'),1095)
dusk <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31'),
by='hour'),1095)

# extract the date to compare using only the `dawn` vector
# all other vectors (except ptime) have the same date and length
pt <- as.Date(ptime)
dw <- as.Date(dawn)

# create data.frame
time <- c(1:1051)
test<-data.frame(time)
``````

Here's my wild stab at this:

``````tmp <- outer(pt, dw, "==")
tmp[upper.tri(tmp)] <- NA
tmp <- which(tmp,arr.ind = TRUE)

test\$time[ tmp[ ptime[ tmp[,1] ] < dawn[ tmp[,2] ],1] ] <- 1
test\$time[ tmp[ ptime[ tmp[,1] ] < sunrise[ tmp[,2] ],1 ] ] <- 2
test\$time[ tmp[ ptime[ tmp[,1] ] < sunset[ tmp[,2] ],1 ] ] <- 3
test\$time[ tmp[ ptime[ tmp[,1] ] < dusk[ tmp[,2] ],1] ] <- 4
``````

That's some ugly, ugly subset indexing going on there. Ugly enough that I'm convinced there has to be a better way to organize your data to avoid this. It's also obscure enough that I'm not sure I can clearly explain what's going on, but I think this is doing what you describe.

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Sorry for not posting reproducible data but it seems like you have done it quite simply. The only thing I would of done differently would of been to offset the dates `x <- sample(seq(as.POSIXct('2000-08-01'),as.POSIXct('2003-12-31'),by = "hour"),1000)` and `y <- sample(seq(as.POSIXct('2000-01-01'),as.POSIXct('2005-12-31'),by = "hour"),5000)` and create different lengths. The resulting data is stored into a dataframe `test\$time`, what other 'convenient' form would you recommend? I'm still learning and I greatly appreciate you sharing your knowledge –  wisfool Aug 27 '11 at 1:43
Also... sunrise, sunset, etc. are POSIXct date/time vectors as well with the same DATE as `dawn` –  wisfool Aug 27 '11 at 2:11
joran... running the `if-else` statement you posted throws an error... `In if (x[d[, 1]] < y[d[, 2]]) { : the condition has length > 1 and only the first element will be used` –  wisfool Aug 27 '11 at 2:23
@wisfool That's why I said the code I provided was only a sketch. If you want more help, you'll have to edit your question to include a self-contained, reproducible example. See here for some advice on how to do this. –  joran Aug 27 '11 at 2:40
@joran... Thank you for your attention and help. With the help of your code I was able to accomplish the task extremely quickly... this is what I have... `d <- which(outer(as.Date(ptime, tz='MST'),as.Date(dawn, tz='MST'),"=="),arr.ind = TRUE) test\$time <- ifelse( (ptime[d[,1]] < dawn[d[,2]]) | (ptime[d[,1]] > dusk[d[,2]]), 1, ifelse( ptime[d[,1]] < sunrise[d[,2]], 2, ifelse( ptime[d[,1]] < sunset[d[,2]], 3, 4 ) ) )` –  wisfool Aug 27 '11 at 21:58

Real fast solution

``````ptime <- sample(seq(as.POSIXct('2005-08-01'),as.POSIXct('2006-05-31'), by='hour'),1051)
dawn <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31')),1095)
sunrise <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31')),1095)
sunset <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31')),1095)
dusk <- sample(seq(as.POSIXct('2005-01-01'),as.POSIXct('2007-12-31')),1095)

time <- c(1:1051)
test<-data.frame(time)

# From joran
#creates a matrix that lists the IDs that match each other
d <- which(outer(as.Date(ptime, tz='MST'),as.Date(dawn, tz='MST'),"=="),arr.ind = TRUE)

row col
[1,]  86 213
[2,] 226 213
[3,] 346 213
[4,] 492 214
[5,] 272 215

#This `ifelse` handles multivalued vectors
test\$time <- ifelse( (ptime[d[,1]] < dawn[d[,2]]) | (ptime[d[,1]] > dusk[d[,2]]), 1,
ifelse(ptime[d[,1]] < sunrise[d[,2]], 2,
ifelse( ptime[d[,1]] < sunset[d[,2]], 3, 4 ) ) )
``````

Thanks to joran this runs at `0.00` per my machine. Vectorization is the key.

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