# Mathematica fast 2D binning algorithm

I am having some trouble developing a suitably fast binning algorithm in Mathematica. I have a large (~100k elements) data set of the form T={{x1,y1,z1},{x2,y2,z2},....} and I want to bin it into a 2D array of around 100x100 bins, with the bin value being given by the sum of the Z values that fall into each bin.

Currently I am iterating through each element of the table, using Select to pick out which bin it is supposed to be in based on lists of bin boundaries, and adding the z value to a list of values occupying that bin. At the end I map Total onto the list of bins, summing their contents (I do this because I sometimes want to do other things, like maximize).

I have tried using Gather and other such functions to do this but the above method was ridiculously faster, though perhaps I am using Gather poorly. Anyway It still takes a few minutes to do the sorting by my method and I feel like Mathematica can do better. Does anyone have a nice efficient algorithm handy?

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Please post the code you are already using, otherwise it is hard to know if a solution with e.g. `Gather` is actually an improvement. –  Mr.Wizard Nov 18 '11 at 7:02
Let me see if I have this right: you are binning Z values by their corresponding X and Y values, correct? –  Mr.Wizard Nov 18 '11 at 7:08
Are `x,y,z` reals or integers? If `z` is an integer, there may be simpler ways: `BinCounts[Join @@ (ConstantArray[{#1, #2}, #3] & @@@ data)]` –  Szabolcs Nov 18 '11 at 8:58
@Szabolcs, I do not understand your comment above. –  Mr.Wizard Nov 18 '11 at 9:13
@Mr.Wizard I mean that if the meaning of `z` is a "count" of something, then we might as well multiply each entry `z` times and use the built-in and fast `BinCounts` function. –  Szabolcs Nov 18 '11 at 9:42

Here is a method based on Szabolcs's post that is about about an order of magnitude faster.

``````data = RandomReal[5, {500000, 3}];
(*500k values*)
zvalues = data[[All, 3]];

epsilon = 1*^-10;(*prevent 101 index*)
(*rescale and round (x,y) coordinates to index pairs in the 1..100 range*)
indexes = 1 + Floor[(1 - epsilon) 100 Rescale[data[[All, {1, 2}]]]];

res2 = Module[{gb = GatherBy[Transpose[{indexes, zvalues}], First]},
SparseArray[
gb[[All, 1, 1]] ->
Total[gb[[All, All, 2]], {2}]]]; // AbsoluteTiming
``````

``````AbsoluteTiming[
System`SetSystemOptions[
"SparseArrayOptions" -> {"TreatRepeatedEntries" -> 1}];
res3 = SparseArray[indexes -> zvalues];
System`SetSystemOptions[
"SparseArrayOptions" -> {"TreatRepeatedEntries" -> 0}];
]
``````

``````res3 == res2
True
``````

"TreatRepeatedEntries" -> 1 adds duplicate positions up.

-
could you expand a bit on "adds duplicate positions up"? I am having trouble understanding what it does. –  acl Nov 20 '11 at 17:54
If you have rules {2,3}->1, {2,3}->10 and, say, {2,3}->2 the value at mat[[2,3]] will be 1+10+2; "TreatRepeatedEntries" means to add up the value if position entries are repeated. The default behavior of SparseArray is to not do that. TreatRepeatedEntries"->1 activates that feature - with this you can write very efficient code. –  user1054186 Nov 20 '11 at 18:07
That's very useful to know, thanks. a shame it's undocumented though... –  acl Nov 20 '11 at 18:14
Id did show this on several occasions, at least once on MathGroup: forums.wolfram.com/mathgroup/archive/2010/Dec/msg00335.html. –  user1054186 Nov 21 '11 at 10:44
I only noticed this reply now. I wish this were an option to SparseArray instead of a system option. –  Szabolcs Nov 25 '11 at 8:53

I intend to do a rewrite of the code below because of Szabolcs' readability concerns. Until then, know that if your bins are regular, and you can use `Round`, `Floor`, or `Ceiling` (with a second argument) in place of `Nearest`, the code below will be much faster. On my system, it tests faster than the `GatherBy` solution also posted.

Assuming I understand your requirements, I propose:

``````data = RandomReal[100, {75, 3}];

bins = {0, 20, 40, 60, 80, 100};

Reap[
Sow[{#3, #2}, bins ~Nearest~ #] & @@@ data,
bins,
Reap[Sow[#, bins ~Nearest~ #2] & @@@ #2, bins, Tr@#2 &][[2]] &
][[2]] ~Flatten~ 1 ~Total~ {3} // MatrixForm
``````

Refactored:

``````f[bins_] := Reap[Sow[{##2}, bins ~Nearest~ #]& @@@ #, bins, #2][[2]] &

bin2D[data_, X_, Y_] := f[X][data, f[Y][#2, #2~Total~2 &] &] ~Flatten~ 1 ~Total~ {3}
``````

Use:

``````bin2D[data, xbins, ybins]
``````
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Your code is really difficult to follow! –  Szabolcs Nov 18 '11 at 8:48
@Szabolcs, can you suggest how I might make it more readable? –  Mr.Wizard Nov 18 '11 at 8:55
I will once I figure out why it doesn't give the same result as mine ... those numbers in `bins`, they are the centres of the bins, right? –  Szabolcs Nov 18 '11 at 9:03
My first comment was just a cry of frustration, not directly aimed at you :-) But seriously, I do think it's objectively hard to read (despite "easy to read" being a subjective and cultural thing, depending on what we're used to). Take for example the line `Reap[Sow[#1, bins~Nearest~#2] & @@@ #2, bins, Tr@#2 &]`. There are three occurrences of `#2`, each of which are arguments of a different function. There's the misleading use of `Tr` as a shorthand for `Total`. Unorthodox use of inline notation. –  Szabolcs Nov 18 '11 at 9:34
I'd like to suggest a change. Using `Nearest` is fine, but it must do a lot of preprocessing every time it is used. I'd suggest wrapping everything in `f` with `With[{nn=Nearest[bins]}, ...]` and use `nn[#]` instead of `bins ~Nearest~ #`. This does all the preprocessing required once, and on my machine over 10^6 points it shaves off nearly 7 seconds. –  rcollyer Nov 18 '11 at 13:49

Here's my approach:

``````data = RandomReal[5, {500000, 3}]; (* 500k values *)

zvalues = data[[All, 3]];

epsilon = 1*^-10; (* prevent 101 index *)

(* rescale and round (x,y) coordinates to index pairs in the 1..100 range *)
indexes = 1 + Floor[(1 - epsilon) 100 Rescale[data[[All, {1, 2}]]]];

(* approach 1: create bin-matrix first, then fill up elements by adding  zvalues *)
res1 = Module[
{result = ConstantArray[0, {100, 100}]},
Do[
{i, Length[indexes]}
];
result
]; // Timing

(* approach 2: gather zvalues by indexes, add them up, convert them to a matrix *)
res2 = Module[{gb = GatherBy[Transpose[{indexes, zvalues}], First]},
SparseArray[gb[[All, 1, 1]] -> (Total /@ gb[[All, All, 2]])]
]; // Timing

res1 == res2
``````

These two approaches (`res1` & `res2`) can handle 100k and 200k elements per second, respectively, on this machine. Is this sufficiently fast, or do you need to run this whole program in a loop?

-
Is there a reason you are using the long form of `AddTo` and `Part`? –  Mr.Wizard Nov 18 '11 at 8:56
I fixed `Part`. With `AddTo`, it just avoids some parenthesis. I tend to use this form when I put `Set` inside a `Function`, but I don't have strong feelings about the style. –  Szabolcs Nov 18 '11 at 9:02
This appears to be much faster than what I did, but can you easily handle irregular bins? (I used `Nearest` for this reason.) –  Mr.Wizard Nov 18 '11 at 9:08
Total /@ gb[[All, All, 2]] is equivalent to Total[gb[[All, All, 2]], {2}]. –  user1054186 Nov 20 '11 at 17:26

Here's my approach using the function SelectEquivalents defined in What is in your Mathematica tool bag? which is perfect for a problem like this one.

``````data = RandomReal[100, {75, 3}];
bins = Range[0, 100, 20];
binMiddles = (Most@bins + Rest@bins)/2;
nearest = Nearest[binMiddles];

SelectEquivalents[
data
,
TagElement -> ({First@nearest[#[[1]]], First@nearest[#[[2]]]} &)
,
TransformElement -> (#[[3]] &)
,
TransformResults -> (Total[#2] &)
,
TagPattern -> Flatten[Outer[List, binMiddles, binMiddles], 1]
,
FinalFunction -> (Partition[Flatten[# /. {} -> 0], Length[binMiddles]] &)
]
``````

If you would want to group according to more than two dimensions you could use in FinalFunction this function to give to the list result the desired dimension (I don't remember where I found it).

``````InverseFlatten[l_,dimensions_]:= Fold[Partition[#, #2] &, l, Most[Reverse[dimensions]]];
``````
-
As I mentioned on Mr.Wizard's solution, you'll want to use `NearestFunctions` instead of reinvoking `Nearest` everytime. In other words, calculate `Nearest[xbins]` and `Nearest[ybins]` first, and you get a non-trivial speed-up. –  rcollyer Nov 18 '11 at 14:01
Also, why `TransformResults -> (Append[#1, Total[#2]] &)` instead of `TransformResults -> ({#1, Total[#2]} &)`? –  rcollyer Nov 18 '11 at 14:03
Because #1 is a list and I want a "plotable" result. –  faysou Nov 18 '11 at 14:36
Absolutely. I should have seen that myself. –  rcollyer Nov 18 '11 at 14:44
The OP is talking about lists of bin boundaries. You are using lists of bin midpoints. –  Sjoerd C. de Vries Nov 18 '11 at 21:42