Applying similar functions to many small chunks of large matrices

2 Ansichten (letzte 30 Tage)
I have a large matrix and want to apply similar functions across many smaller portions of the matrix. The matrix I am working with has billions of datapoints, so I am building a smaller replica to practice with.
An example of the practice matrix would be...
T = 5;
W = zeros(10,5);
for trial = 1:T
mtest = randi([1,5],10,3);
W(:,trial) = var(mtest,0,2);
end
M = W(:)
lindex = 0:0.2:1.8;
linc = zeros(50,10);
for i = 1:length(lindex)
linc(:,i) = M >= lindex(i);
end
So, you can see this is a 50X10 matrix of 0's and 1's. Each subset that I want to analyze is a 2X1 chunk of the 50X10 matrix (e.g., linc(1:2,1), linc(1:2,2), linc(1:2,3)...all the way to linc(49:50,10)). If I want to do something simple like calculate the percentage of 1's in each subset, that would require 250 calculations. Is there a function I can write to perform such a calculation in one or a few steps?
I have considered for loops, while loops, and splitapply, but none of them seem appropriate here, though I may be wrong.
Any suggestions?
Thank you in advance!

Akzeptierte Antwort

Ameer Hamza
Ameer Hamza am 13 Mär. 2020
See blockproc: https://www.mathworks.com/help/images/ref/blockproc.html. You can apply same function on smaller blocks of a matrix. For example
M = rand(6) > 0.5; % random binary matrix
blockproc(M, [1 2], @(x) sum(x.data==1))
This statement will count the number of ones in every 1x2 block of matrix M.
  3 Kommentare
Ameer Hamza
Ameer Hamza am 14 Mär. 2020
The @(x) notation is used to create an anonymous function. If you are familiar with other programming languages, you can think of its as a lambda function. It allows for creating a simple function without creating a new .m file.
The third input to blockproc is a function handle. Note that it can either be an anonymous function or a regular function. For example, you can create a .m file like below
function y = myFunction(x)
% do some processing on x and return the value in y
end
and call the blockproc like this
blockproc(M, [1 2], @myFunction)
This allows creating more complex functions that cannot be done with an anonymous function.
Now you need to consider some requirements before creating the function handle for blockproc. blockproc divides the input matrix M into blocks of size 1x2 and creates struct using those blocks. You can see the field of that struct here: https://www.mathworks.com/help/images/ref/blockproc.html#d118e16538. blockproc then inputs that struct to the function handle (myFunction) https://www.mathworks.com/help/images/ref/blockproc.html#d118e16028. Therefore, in my code above, I used x.data, because data is a field in the struct which blockproc pass to the function handle.
May_the_degrees_of_freedom_be_with_you
This makes a lot more sense now. Thank you for your detailed help!

Melden Sie sich an, um zu kommentieren.

Weitere Antworten (0)

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by