error using the function 'splitapply'

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Hi! I have a problem about using 'splitapply'.
Using the matrix 'matrix_out_98' the code works, but using the matrix 'matrix_out_12' does not work.
Would anyone be able to help me understand why this?
% matrix_out = importdata("matrix_out_12.mat");
matrix_out = importdata("matrix_out_98.mat");
max_matrix_out = max(matrix_out(:,2));
max_matrix_out_r = floor(max_matrix_out*10)/10;
%Mention the bins to group data in
j = [0 0.1:0.1:max_matrix_out_r Inf];
%Discretize the data
idx2 = discretize(matrix_out(:,2),j);
%Get the sum of the 2nd column according to the groups
out2 = splitapply(@(x) sum(x), matrix_out(:,2), idx2);
Error:
Error using splitapply (line 111)
For N groups, every integer between 1 and N must occur at least once in the vector of group numbers.
  2 Comments
Dyuman Joshi
Dyuman Joshi on 30 Nov 2023
Moved: Dyuman Joshi on 30 Nov 2023
accumarray will be a better fit here.
matrix_out_12 = importdata("matrix_out_12.mat");
matrix_out_98 = importdata("matrix_out_98.mat");
out_12 = fun(matrix_out_12)
out_12 = 22×1
0.7000 1.4500 7.0500 3.5000 4.7500 6.2700 3.7600 11.0000 6.6800 5.6100
out_98 = fun(matrix_out_98)
out_98 = 17×1
2.3100 5.1200 7.9900 5.3200 2.1600 4.4100 4.5100 5.9000 2.5300 8.4900
function out = fun(matrix_out);
max_matrix_out = max(matrix_out(:,2));
max_matrix_out_r = floor(max_matrix_out*10)/10;
%Mention the bins to group data in
j = [0 0.1:0.1:max_matrix_out_r Inf];
%Discretize the data
idx = discretize(matrix_out(:,2),j);
%Get the sum of the 2nd column according to the groups
out = accumarray(idx, matrix_out(:,2), [], @sum);
end
Dyuman Joshi
Dyuman Joshi on 30 Nov 2023
Moved: Dyuman Joshi on 30 Nov 2023
splitapply, as the error message states, requires there to be atleast 1 data element in every bin/group in which the data is discretized.
There's no such requirement with accumarray(), where it fills the gap automatically - with the default value of 0, or manually as the value specified (for example NaN)

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Accepted Answer

Stephen23
Stephen23 on 30 Nov 2023
Edited: Stephen23 on 30 Nov 2023
S = load('matrix_out_12.mat') % LOAD is better than IMPORTDATA
S = struct with fields:
matrix_out: [159×2 double]
max_matrix_out = max(S.matrix_out(:,2));
max_matrix_out_r = floor(max_matrix_out*10)/10; % use ROUND(..,1)
j = [0:0.1:max_matrix_out_r,Inf];
idx2 = discretize(S.matrix_out(:,2),j);
Lets check if all of those groups exist in your data:
ismember(1:max(idx2),idx2) % Nope, some don't:
ans = 1×22 logical array
1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 0 0 0 1
SPLITAPPLY cannot cope with that: it applies the function to every group from 1 to N, it does not know how to apply your function to data if that data simply does not exist.
Use ACCUMARRAY instead, which in contrast will happily replace undefined outputs with a fill value (by default zero, but you can also set the fill value to whatever you want):
out = accumarray(idx2,S.matrix_out(:,2),[max(idx2),1],@sum)
out = 22×1
0.7000 1.4500 7.0500 3.5000 4.7500 6.2700 3.7600 11.0000 6.6800 5.6100
out(end-6:end)
ans = 7×1
1.5700 3.3400 5.2100 0 0 0 2.1200
For example, using NaN as the fill value:
out = accumarray(idx2,S.matrix_out(:,2),[max(idx2),1],@sum, NaN)
out = 22×1
0.7000 1.4500 7.0500 3.5000 4.7500 6.2700 3.7600 11.0000 6.6800 5.6100
out(end-6:end)
ans = 7×1
1.5700 3.3400 5.2100 NaN NaN NaN 2.1200
  7 Comments
Stephen23
Stephen23 on 30 Nov 2023
Edited: Stephen23 on 30 Nov 2023
"'out1' consists of {A×1 double}, should be {A×2 double}"
So you want both columns. Here is an approach using ARRAYFUN:
load("matrix_out_98.mat")
load("idx1_98.mat")
out = arrayfun(@(n)matrix_out(n==idx1,:),1:max(idx1),'Uni',0)
out = 1×17 cell array
Columns 1 through 12 {104×2 double} {34×2 double} {30×2 double} {19×2 double} {5×2 double} {8×2 double} {7×2 double} {8×2 double} {3×2 double} {9×2 double} {7×2 double} {5×2 double} Columns 13 through 17 {4×2 double} {13×2 double} {8×2 double} {2×2 double} {[460 1.6400]}
Checking a few cells:
out{5}
ans = 5×2
410.0000 0.4100 415.0000 0.4100 416.0000 0.4400 418.0000 0.4700 494.0000 0.4300
out{9}
ans = 3×2
432.0000 0.8500 434.0000 0.8100 483.0000 0.8700
Note that often splitting up data make it harder to work with.

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