# Match all logic rules with a dataframe (need super fast function)

I have a function that checks for the presence of logical sequences in a dataframe

``````fu <- function(dat , rule , res.only=T){
debug.vec <- rep("no",nrow(dat)) # control of rule triggers
rule.id <- 1 # rule number in vector
for(i in 1:nrow(dat)){
# check if the rule "rule[rule.id]" has worked on this "i" index in dat[i,]
current_rule <- with(data = dat[i,] , expr = eval(parse(text = rule[rule.id]))  )
if(current_rule){  # if the rule is triggered
debug.vec[i] <- rule[rule.id]
if(  rule.id==length(rule)  ) break   # stop if there are no more rules
rule.id <- rule.id+1  # go to the next rule
}}
if(!res.only)  return(  cbind(dat,debug.vec)  )
return(  sum(debug.vec!="no")==length(rule)   )
}
``````

for example i have some data

``````set.seed(123)
dat <- as.data.frame(matrix(data = sample(10,30,replace = T),ncol = 3))
colnames(dat) <- paste0("x" ,1:ncol(dat))
``````

..

``````dat
x1 x2 x3
1   3  5  9
2   3  3  3
3  10  9  4
4   2  9  1
5   6  9  7
6   5  3  5
7   4  8 10
8   6 10  7
9   9  7  9
10 10 10  9
``````

there is also a vector with rules

``````rule <- c("x1>5 & x2>2" , "x1>x2" , "x3!=4" )
``````

the function checks if there is such a logical sequence in the dataframe and gives a logical answer

``````> fu(dat = dat, rule = rule, res.only = T)
[1] TRUE
``````

or you can change the flag `res.only = F` and see where the sequence was in the `debug.vec` column

``````> fu(dat = dat, rule = rule, res.only = F)
x1 x2 x3   debug.vec
1   3  5  9          no
2   3  3  3          no
3  10  9  4 x1>5 & x2>2
4   2  9  1          no
5   6  9  7          no
6   5  3  5       x1>x2
7   4  8 10       x3!=4
8   6 10  7          no
9   9  7  9          no
10 10 10  9          no
``````

I need the fastest possible version of this function, perhaps using the Rccp package or something like that..

UPD=======================

the `Waldi` function is not working identically to my function, something is wrong

UPD_2_====================================

``````# Is this correct?
``````

Yes, this is correct if the rule[k] is triggered then the search for rule[k+1] starts with a new row of dat

forgive me for not being precise enough in my question, this is my fault

my function returned `FALSE` because the last rule `"x3!=4"` did not work, it should be

``````dat <- structure(list(x1 = c(2L, 5L, 1L, 3L, 9L, 2L, 6L, 3L, 3L, 9L),
x2 = c(2L, 1L, 6L, 10L, 8L, 10L, 10L, 4L, 6L, 4L),
x3 = c(4L, 9L, 8L, 7L, 10L, 1L, 2L, 8L, 3L, 10L)),
class = "data.frame", row.names = c(NA, -10L))
dat
rule <- c("x1>5 & x2>2" , "x1>x2" , "x3!=4" )

my_fu(dat = dat, rule = rule, res.only = F)
``````

only two rules worked

``````> my_fu(dat = dat, rule = rule, res.only = F)
x1 x2 x3   debug.vec
1   2  2  4          no
2   5  1  9          no
3   1  6  8          no
4   3 10  7          no
5   9  8 10 x1>5 & x2>2
6   2 10  1          no
7   6 10  2          no
8   3  4  8          no
9   3  6  3          no
10  9  4 10       x1>x2
``````

it should be

``````> my_fu(dat = dat, rule = rule, res.only = T)
[1] FALSE
``````
• In your exmaple output, why doesn't row 5 satisfy `rule[1]` ? e.g. - `library(data.table); setDT(dat)[ eval(parse(text = rule[1] ) )]` Aug 3, 2021 at 2:34
• Hello! Because 'rule[1]' has already worked on index 3 and from this moment we are looking for rules 'rule[2]' and so on .. The answer at index 5, the rule 'rule[1]' did not work because the algorithm by that time was looking for the rule 'rule[2]'
– mr.T
Aug 3, 2021 at 5:02
• I am taking the `rcpp` and `c++` labels off here. This is likely a question for `data.table` or maybe `collapse` . And SO is not a 'ask for someone to write code for me' service ... Aug 4, 2021 at 19:07

# Update

As per your update, I wrote a new `fu` function, i.e., `TIC_fu()`

``````TIC_fu <- function(dat, rule, res.only = TRUE) {
m <- with(dat, lapply(rule, function(r) eval(str2expression(r))))
idx <- na.omit(
Reduce(
function(x, y) {
k <- which(y)
ifelse(all(k <= x), NA, min(k[k > x]))
}, m,
init = 0, accumulate = TRUE
)
)[-1]
if (!res.only) {
debug.vec <- replace(rep("no", nrow(dat)), fidx, rule[seq_along(fidx)])
return(cbind(dat, debug.vec))
}
length(idx) >= length(rule)
}
``````

and you will see

``````> TIC_fu(dat, rule, FALSE)
x1 x2 x3   debug.vec
1   2  2  4          no
2   5  1  9          no
3   1  6  8          no
4   3 10  7          no
5   9  8 10 x1>5 & x2>2
6   2 10  1          no
7   6 10  2          no
8   3  4  8          no
9   3  6  3          no
10  9  4 10       x1>x2

> TIC_fu(dat,rule)
[1] FALSE
``````

For benchmarking

``````> microbenchmark(
+   TIC_fu(dat, rule, FALSE),
+   fu(dat, rule, FALSE),
+   unit = "relative"
+ )
Unit: relative
expr      min       lq     mean   median     uq      max
TIC_fu(dat, rule, FALSE) 1.000000 1.000000 1.000000 1.000000 1.0000 1.000000
fu(dat, rule, FALSE) 4.639093 4.555523 3.383911 4.450056 4.3993 1.007532
neval
100
100
``````

Here are some options similar to what @Waldi has done, but the only difference is among `parse`, `str2lang` and `str2expression`

``````microbenchmark::microbenchmark(
any(with(dat, rowSums(sapply(rule, function(rule) eval(parse(text = rule))))==length(rule))),
any(with(dat, rowSums(sapply(rule, function(rule) eval(str2lang(rule))))==length(rule))),
any(with(dat, rowSums(sapply(rule, function(rule) eval(str2expression(rule))))==length(rule))),
any(with(dat, eval(str2expression(paste0(rule,collapse = " & ")))))
)
``````

and you will see

``````Unit: microseconds
expr
any(with(dat, rowSums(sapply(rule, function(rule) eval(parse(text = rule)))) ==      length(rule)))
any(with(dat, rowSums(sapply(rule, function(rule) eval(str2lang(rule)))) ==      length(rule)))
any(with(dat, rowSums(sapply(rule, function(rule) eval(str2expression(rule)))) ==      length(rule)))
any(with(dat, eval(str2expression(paste0(rule, collapse = " & ")))))
min   lq    mean median     uq   max neval
94.0 98.6 131.431 107.35 121.90 632.7   100
37.5 39.2  48.887  44.05  48.50 174.1   100
36.8 39.6  51.627  46.20  48.45 241.4   100
12.7 15.8  19.786  17.00  19.75  97.9   100
``````
• @mr.T See my udpate Aug 5, 2021 at 8:27
• @mr.T If you want the speed. you may have to resort to Cpp. I am sorry I am not familiar with Rcpp, so this is what I can do so far. Aug 5, 2021 at 9:31
• @mr.T I found your R code is sufficiently efficient even with large `dat` (many rows), and outperforms mine. If you want higher speed, I guess you should try Cpp, rather than any R code. Aug 5, 2021 at 14:55
• Hi Thomas, please check my question if you have time stackoverflow.com/questions/68867191/…
– mr.T
Aug 20, 2021 at 19:25
• @mr.T You can see my answer to your question there. Aug 23, 2021 at 21:04

A possible simple base R way:

``````with(dat,sapply(rule, function(rule) eval(parse(text = rule))))

x1>5 & x2>2 x1>x2 x3!=4
[1,]       FALSE FALSE  TRUE
[2,]       FALSE FALSE  TRUE
[3,]        TRUE  TRUE FALSE
[4,]       FALSE FALSE  TRUE
[5,]        TRUE FALSE  TRUE
[6,]       FALSE  TRUE  TRUE
[7,]       FALSE FALSE  TRUE
[8,]        TRUE FALSE  TRUE
[9,]        TRUE  TRUE  TRUE
[10,]        TRUE FALSE  TRUE

any(rowSums(with(dat,sapply(rule, function(rule) eval(parse(text = rule)))))==length(rule))
[1] TRUE
``````

Performance :

``````microbenchmark::microbenchmark(any(rowSums(with(dat,sapply(rule, function(rule) eval(parse(text = rule)))))==length(rule)),
fu(dat = dat, rule = rule, res.only = T))

Unit: microseconds
expr     min       lq    mean   median
any(with(dat, sapply(rule, function(rule) eval(parse(text = rule)))))  93.201  97.7010 127.817 104.9010
fu(dat = dat, rule = rule, res.only = T) 465.902 499.7015 611.827 523.2505
uq      max neval
124.8010  834.201   100
643.2015 2018.500   100

``````

Other test:

``````dat <- structure(list(x1 = c(2L, 5L, 1L, 3L, 9L, 2L, 6L, 3L, 3L, 9L),
x2 = c(2L, 1L, 6L, 10L, 8L, 10L, 10L, 4L, 6L, 4L), x3 = c(4L,
9L, 8L, 7L, 10L, 1L, 2L, 8L, 3L, 10L)), class = "data.frame", row.names = c(NA,
-10L))

dat

x1 x2 x3
1   2  2  4
2   5  1  9
3   1  6  8
4   3 10  7
5   9  8 10
6   2 10  1
7   6 10  2
8   3  4  8
9   3  6  3
10  9  4 10

with(dat,sapply(rule, function(rule) eval(parse(text = rule))))
x1>5 & x2>2 x1>x2 x3!=4
[1,]       FALSE FALSE FALSE
[2,]       FALSE  TRUE  TRUE
[3,]       FALSE FALSE  TRUE
[4,]       FALSE FALSE  TRUE
[5,]        TRUE  TRUE  TRUE
[6,]       FALSE FALSE  TRUE
[7,]        TRUE FALSE  TRUE
[8,]       FALSE FALSE  TRUE
[9,]       FALSE FALSE  TRUE
[10,]        TRUE  TRUE  TRUE

any(rowSums(with(dat,sapply(rule, function(rule) eval(parse(text = rule)))))==length(rule))
[1] TRUE

fu(dat)
fu(dat = dat, rule = rule, res.only = T)
[1] FALSE
# Is this correct?
``````
• Good answer! Upvoted! You can try `str2lang` or `str2expression` instead, which may give your more options :) Aug 4, 2021 at 18:49
• See my edit with new data set : the function I propose seems to fullfil the rules? Please note that I edited the Waldi_fu, I had a copy/paste error in the last bit Aug 4, 2021 at 20:32
• HiI I answered your question "# Is this correct?" in my new update
– mr.T
Aug 5, 2021 at 6:38