# Is it posible to optimize (vectorize) these two functions for better performance

In my first attempts in using R I wrote two functions that are not very performant I guess and would appreciate if I can receive some hints on how to make them more performant (vectorized). Both functions come with "test case" at the end.

The first function takes two time series xts objects x and y and returns a series which contains data on how many days x is higher/lower than y.

``````require('xts')
require('quantmod')

countDaysBelowOrAbove <- function(x, y) {
x <- try.xts(x, error=as.matrix)
y <- try.xts(y, error=as.matrix)

if(is.xts(x) && is.xts(y)) {
xy <- cbind(x,y)
} else {
xy <- cbind( as.vector(x), as.vector(y) )
}

# Count NAs, ensure they're only at beginning of data, then remove.
xNAs <- sum( is.na(x) )
yNAs <- sum( is.na(y) )
NAs <- max( xNAs, yNAs )
if( NAs > 0 ) {
if( any( is.na(xy[-(1:NAs),]) ) ) stop("Series contain non-leading NAs")
}

resultDaysLower <- x
resultDaysHigher <- x
resultDaysLower[!is.na(resultDaysLower)]<-0
resultDaysHigher[!is.na(resultDaysHigher)]<-0

series<-cbind(xy, resultDaysLower, resultDaysHigher)
colnames(series) <- c(names(xy), "cumDaysLower", "cumDaysHigher")

daysLower = 0
daysHigher = 0

for (i in 1:NROW(xy)) {
if (!(is.na(series[,1][i]) | is.na(series[,2][i]))) {
if (series[,1][i] >= series[,2][i]) {
daysLower = 0
daysHigher = daysHigher + 1
}
else {
daysHigher = 0
daysLower = daysLower + 1
}
}
else {
daysLower = 0
daysHigher = 0
}
series\$cumDaysLower[i] = daysLower
series\$cumDaysHigher[i] = daysHigher
}
return(series)
}

getSymbols("SPY", from='2005-01-01')
SPYclose = Cl(SPY)

getSymbols("QQQQ", from='2005-01-01')
QQQQclose = Cl(QQQQ)

testData = countDaysBelowOrAbove(SPYclose, QQQQclose)
``````

The second function I would appreciate help with performance optimization is below. The function takes as parameter an xts object series and an xts object representing lengths of interval to calculate minimum of series at a specified time. The function returns calculated minimum of series with specified window for minimum calculation set in lengths.

``````minimumWithVaryingLength<-function(series, lengths) {
series <- try.xts(series, error=as.matrix)
lengths <- try.xts(lengths, error=as.matrix)

if(is.xts(series) && is.xts(lengths)) {
serieslengths <- cbind(series,lengths)
} else {
serieslengths <- cbind( as.vector(series), as.vector(lengths) )
}

# Count NAs, ensure they're only at beginning of data, then remove.
seriesNAs <- sum( is.na(series) )
lengthsNAs <- sum( is.na(lengths) )
NAs <- max( seriesNAs, lengthsNAs )
if( NAs > 0 ) {
if( any( is.na(serieslengths[-(1:NAs),]) ) ) stop("Series contain non-leading NAs")
}

result <- series
result[!is.na(result)]<-0

for (i in 1:NROW(serieslengths)) {
if (lengths[i] > 0) {
result[i] <- runMin(series, n=lengths[i], cumulative=FALSE)[i]
}
else {
result[i] <- 0
}
}

return(result)
}

getSymbols("SPY", from='2005-01-01')
SPYclose = Cl(SPY)

getSymbols("QQQQ", from='2005-01-01')
QQQQclose = Cl(QQQQ)

numDaysBelow = countDaysBelowOrAbove(SPYclose, QQQQclose)
test = minimumWithVaryingLength(SPYclose, numDaysBelow)
``````

Kind regards, Samo.

-

For the first function you're looking for the cumulative number of periods during which series `x` is lower/higher than `y`. For that you can use this handy function `CumCount()` built from `cummax`. First some sample data:

``````set.seed(1)
x <- sample(1:5,20,T)
y <- sample(1:5,20,T)

CumCount <- function(x) {
z <- cumsum(x)
z - cummax(z*(!x))
}

CumLow = CumCount(x<y)
CumHigh = CumCount(x>y)
``````

For your second computation, you're trying to find the cumulative minimum `x` value within each period during which `x < y`. For this the `rle` function is very useful ("run-length-encoding").

``````# runs equals the length of each phase (x < y or x > y)
runs <- rle(CumLow > 0)\$lengths
# starts is the number of periods prior to each phase...
starts <- c(0,cumsum(runs)[-length(runs)])
#... which we use to build "blocks", a list of indices of each phase.
blocks <- mapply( function(x,y) x+y, starts, lapply(runs,seq))
# now apply the cummin function within each block:
# (remember to mask it by CumLow > 0 --
#   we only want to do this within the x<y phase)
BlockCumMin <- unlist(sapply(blocks, function(blk) cummin(x[blk]))) * (CumLow > 0)
``````

Now we put it all together:

``````  > cbind(x,y, CumLow, CumHigh, BlockCumMin)

x y CumLow CumHigh BlockCumMin
[1,] 3 4      1       0           3
[2,] 4 2      0       1           0
[3,] 2 2      0       0           0
[4,] 2 5      1       0           2
[5,] 4 4      0       0           0
[6,] 2 2      0       0           0
[7,] 4 1      0       1           0
[8,] 1 3      1       0           1
[9,] 2 5      2       0           1
[10,] 1 3      3       0           1
[11,] 2 5      4       0           1
[12,] 1 4      5       0           1
[13,] 4 2      0       1           0
[14,] 5 3      0       2           0
[15,] 4 1      0       3           0
[16,] 4 1      0       4           0
[17,] 3 4      1       0           3
[18,] 3 1      0       1           0
[19,] 5 3      0       2           0
[20,] 4 4      0       0           0
``````

Note that this problem is related to this question

Update. For the more general case where you have a `series` vector, a `lengths` vector (of same length as `series`), and you want to produce a result called `BlockMins` where `BlockMins[i]` is the minimum of the `lengths[i]` block of `series` ending at position `i`, you could do the following. Since the lengths are arbitrary, this is no longer a cumulative min; for each `i` you have to take the min of the `length[i]` elements of `series` ending at position `i`:

``````set.seed(1)
series <- sample(1:5,20,T)
lengths <- sample(3:5,20,T)
BlockMins <- sapply(seq_along(lengths),
function(i) min( series[ i : max(1, (i - lengths[i]+1)) ]) )
> cbind(series, lengths, BlockMins)
series lengths BlockMins
[1,]      1       5         1
[2,]      1       4         1
[3,]      3       3         1
[4,]      4       4         1
[5,]      5       3         3
[6,]      1       4         1
[7,]      1       5         1
[8,]      4       3         1
[9,]      2       5         1
[10,]      2       4         1
[11,]      1       5         1
[12,]      2       5         1
[13,]      2       3         1
[14,]      2       4         1
[15,]      4       5         1
[16,]      3       5         2
[17,]      5       3         3
[18,]      1       4         1
[19,]      5       3         1
[20,]      3       3         1
``````
-
Prasad, thank you very much. This is really insightful. Is cummin function really the same as runMin in TTR package? – Samo Mar 2 '11 at 17:34
You're welcome. The `runMin` function in `TTR` has more functionality than `cummin` -- it allows you to do the `min` over a moving window. In fact it calls `cummin` if the `cumulative` optional arg = `TRUE`. You can see how it's implemented by typing `runMin` at the R console -- remember R is open-source! – Prasad Chalasani Mar 2 '11 at 18:01
So I can simply exchange cummin with runMin from TTR in your code and everyting will work as in my nonperformant example above except it will be much faster? Beacuse basically I ned two separate functions as stated in my question with different moving window. Thnx. – Samo Mar 2 '11 at 18:16
Not sure what you mean -- why would you want to use runMin instead of cummin in my code? In my code I was showing how you can do the two types of running calculations: one is a cumulative count of number of days x is below y in the current "phase"; the other is a cumulative minimum in each "phase", where by "phase" I mean a contiguous period (or block) of time during which x is less than y. – Prasad Chalasani Mar 2 '11 at 18:55
I would like to stay with TTR as much as possible... – Samo Mar 2 '11 at 19:06

Without dealing with the time series apparatus, if you have two vectors x and y and want to "return a series which contains data on how many days x is higher/lower than y," simply compare them:

``````# Make up some data
x <- seq(100)
y <- x[sample(x)]
# Compare
x.greater <- sum(x>y)
x.lesser <- sum(x<y)
``````

The key to this is that when you sum a logical vector e.g. (x>y), R coerces TRUEs to 1 and FALSEs to 0.

-
Thank you. I am blushing. :) – Samo Mar 2 '11 at 2:08
No worries. We've all been there (myself more than others!), and sometimes writing the complicated function helps you figure out exactly what you need out of it. It's all part of the process (and the power of vectorization!). – Ari B. Friedman Mar 2 '11 at 2:19
This isn't quite what Samo was looking for -- I believe it's more complex. Pls see my answer. – Prasad Chalasani Mar 2 '11 at 4:06
@Prasad: Your answer definitely fits the problem better. – Ari B. Friedman Mar 3 '11 at 0:36