# Simplify apply, sapply apply expression on list of matrices

I want to find maximum in both columns `[,1]` and `[,2]` accross all numbers in this data structure:

``````[[1]]
[[1]][[1]]
[,1]    [,2]
[1,] 382000.5 4633934
[2,] 381974.0 4633981
[3,] 381963.1 4634012
...

[[2]]
[[2]][[1]]
[,1]    [,2]
[1,] 382140.5 4634271
[2,] 382185.2 4634325
[3,] 382235.3 4634367
...

[[3]]
[[3]][[1]]
[,1]    [,2]
[1,] 382536.0 4634631
[2,] 382595.6 4634683
[3,] 382628.1 4634715
....
``````

This is my solution:

``````> apply(sapply(x, function (x) apply(x[[1]], 2, max)), 1, max)
[1]  383581.5 4635506.3
``````

Can this ugly expression be further simplified? It should be, it is just a simple maximum over all numbers in data structure.

Data dump of `x`:

``````> dput(x)
list(list(structure(c(382000.457880439, 381973.953198931, 381963.118550682,
381949.575240371, 381949.575240371, 381952.283902433, 381963.118550682,
381972.5988679, 381995.622495429, 382020.00045399, 382032.18943327,
382028.126440176, 382024.063447083, 382025.417778114, 382052.504398737,
382083.654012453, 382140.535915761, 4633933.72335068, 4633981.3471317,
4634012.49674542, 4634050.41801429, 4634061.25266254, 4634082.92195904,
4634099.17393141, 4634118.13456585, 4634127.61488307, 4634130.32354513,
4634142.51252441, 4634166.89048297, 4634193.97710359, 4634210.22907597,
4634231.89837247, 4634245.44168278, 4634271.17397237), .Dim = c(17L,
2L))), list(structure(c(382140.535915761, 382185.228839788, 382235.33908794,
382290.866660217, 382331.496591151, 382370.772191054, 382405.984797864,
382427.654094362, 382453.386383953, 382473.70134942, 382536.000576853,
4634271.17397237, 4634325.34721361, 4634367.33147558, 4634416.0873927,
4634454.00866157, 4634494.63859251, 4634527.14253725, 4634556.93781994,
4634577.25278541, 4634592.15042675, 4634631.42602665), .Dim = c(11L,
2L))), list(structure(c(382536.000576853, 382595.591142223, 382628.09508697,
382636.221073157, 382645.701390375, 382660.599031717, 382667.370686873,
382672.788010998, 382702.583293682, 382737.795900492, 382782.48882452,
382791.969141738, 382814.992769267, 382844.788051952, 382862.394355357,
382870.520341543, 4634631.42602665, 4634682.89060583, 4634715.39455058,
4634747.89849533, 4634773.63078492, 4634787.17409523, 4634819.67803998,
4634854.89064679, 4634888.74892257, 4634915.83554319, 4634955.11114309,
4634960.52846722, 4634964.59146031, 4634983.55209475, 4634991.67808093,
4634991.67808093), .Dim = c(16L, 2L))), list(structure(c(382862.394355357,
382911.150272478, 382935.528231038, 382957.197527536, 382972.095168879,
382993.764465377, 383014.079430844, 383058.772354871, 383085.858975494,
383104.81960993, 383121.071582304, 383138.677885709, 383149.512533958,
383165.764506331, 383184.725140767, 383210.457430359, 383233.481057888,
383240.252713044, 383248.378699231, 4634991.67808093, 4635030.95368084,
4635060.74896352, 4635082.41826002, 4635104.08755652, 4635139.30016333,
4635152.84347364, 4635167.74111498, 4635178.57576323, 4635185.34741839,
4635185.34741839, 4635185.34741839, 4635186.70174942, 4635181.28442529,
4635171.80410807, 4635177.2214322, 4635190.76474251, 4635198.8907287,
4635200.24505973), .Dim = c(19L, 2L))), list(structure(c(383240.252713044,
383280.882643978, 383301.197609445, 383307.969264601, 383322.866905943,
383343.18187141, 383374.331485126, 383386.520464407, 383408.189760905,
383424.441733278, 383431.213388434, 383470.488988337, 383492.158284835,
383521.95356752, 383543.622864018, 383554.457512267, 383576.126808766,
383581.54413289, 4635198.8907287, 4635269.31594232, 4635288.27657675,
4635307.23721119, 4635335.67816284, 4635360.0561214, 4635388.49707306,
4635410.16636955, 4635433.18999708, 4635453.50496255, 4635472.46559699,
4635504.96954173, 4635506.32387276, 4635499.55221761, 4635496.84355555,
4635486.0089073, 4635476.52859008, 4635469.75693492), .Dim = c(18L,
2L))))
``````
-
A better question might be, can this ugly data structure be simplified. –  Hong Ooi Jul 20 '13 at 8:59
@HongOoi that's exactly what we have to do in the code snippet :) –  TMS Jul 20 '13 at 9:02

You can use some recycling here, It is faster:

``````max(rapply(mylist,t)[c(TRUE,FALSE)])
[1] 383581.5
max(rapply(mylist,t)[c(FALSE,TRUE)])
[1] 4635506
``````

I use `rapply(mylist,t)` to unlist my list , since `unlist(mylist)` do it column by column.

EDIT to show how this works, I will use a short example:

``````ll <- list(list(matrix(1:4,ncol=2)),
+            list(matrix(4:1,ncol=2)))
> ll
[[1]]
[[1]][[1]]
[,1] [,2]
[1,]    1    3
[2,]    2    4
[[2]]
[[2]][[1]]
[,1] [,2]
[1,]    4    2
[2,]    3    1
``````

Now if `unlist` my list

``````> unlist(ll)
[1] 1 2 3 4 4 3 2 1   ## col1 then col2
> rapply(ll,t)
[1] 1 3 2 4 4 2 3 1   ## row1 then row2
``````

Now recycling

``````  rapply(ll,t)[c(TRUE,FALSE)] ## pickup 1,3,5,....elements
[1] 1 2 4 3
rapply(ll,t)[c(FALSE,TRUE)] ## pickup 2,4,6,....elements
[1] 3 4 2 1
``````
-
+1 ill have to think how that works :) –  user1609452 Jul 20 '13 at 10:26
@user1609452 I add some explanation. –  agstudy Jul 20 '13 at 10:37
interesting. Can these 2 commmands be elegantly presented in one? (Better way than just `c(cmd1, cmd2)` :-)) i.e. wwyd to win the codegolf competition? :) –  TMS Jul 20 '13 at 10:41
I already win the efficiency competition, I delegate to you the codegolf one :) –  agstudy Jul 20 '13 at 10:53
Ahh.. the recycling magic.. :) –  Arun Jul 20 '13 at 11:34

Not sure its any tidier

``````apply(do.call(rbind, unlist(x, FALSE)), 2, max)
[1]  383581.5 4635506.3
``````

you can use the functional library not sure if base has these yet

``````require(functional)
dumcall <- Curry(do.call, what = 'rbind')
doublebind <- Compose(dumcall, dumcall)
apply(doublebind(x), 2, max)
[1]  383581.5 4635506.3
``````
-
Nice! Maybe I find this even nicer: `apply(do.call(rbind, do.call(rbind, x)), 2, max)` - I prefer doing `do.call(rbind)` twice because it shows you do the same thing twice. The code is more clear. –  TMS Jul 20 '13 at 8:39
yes the `unlist` is ugly –  user1609452 Jul 20 '13 at 8:41
This is how I'd do it. Not sure what's ugly about `unlist`. –  Arun Jul 20 '13 at 8:41
@Arun, I prefer doing `do.call(rbind)` twice because it shows you do the same thing twice. The code is more clear. –  TMS Jul 20 '13 at 8:42
If we're going for code golf, `apply(do.call(rbind,Reduce(c,x)),2,max)` - saves 8 keystrokes ;-) –  thelatemail Jul 20 '13 at 9:55

@agstudy solution can be code-golfed to 34 characters :-)

``````apply(matrix(rapply(x,t),2),1,max)
``````
-
+1! excellent golfer! –  agstudy Jul 20 '13 at 13:35