Can we do polyfit on matrix?

42 views (last 30 days)
JFz
JFz on 27 Oct 2015
Answered: Namrata Badiger on 28 May 2020
Hi,
I have two matrix, A and B, each of 1000 rows and 100 columns. I need to do 100 polyfit on the columns. I can loop through the columns. But I am just wondering if there is any simple way to plug in A, B without the loop and return the result in an other matrix C.
Thanks,
Jennifer

Answers (3)

Jan
Jan on 27 Oct 2015
Edited: Jan on 27 Oct 2015
As far as I understand all columns are processed by polyfit independently. So you can at least omit the expensive checking of the inputs:
A = rand(1000, 100);
B = rand(1000, 100);
n = 3;
V = ones(1000, n + 1);
for k = 1:100
x = A(:, k);
y = B(:, k);
% Vandermonde matrix:
V(:, n+1) = 1;
for j = n:-1:1
V(:, j) = V(:, j + 1) .* x;
end
% Solve least squares problem:
[Q, R] = qr(V, 0);
p = transpose(R \ (transpose(Q) * y(:)));
...
end
I fyou need further outputs of polyfit and e.g. a normalization of the input values, explain this explicitly here. Posting your existing code is always a good idea to reduce the need to guess, what you exactly need.
  3 Comments
donald adams
donald adams on 21 Nov 2017
Great solution! Thanks
Sarah
Sarah on 5 Dec 2018
what if these two matrices were not of the same size? ohw would the solution change then?

Sign in to comment.


Jos (10584)
Jos (10584) on 27 Oct 2015
Edited: Jos (10584) on 27 Oct 2015
A loop is the most obvious choice. You can hide the loop using arrayfun
FitFH = @(k) polyfit(X(:,k), Y(:,k), 1)
P = arrayfun(FitFH, 1:size(X,2), 'un',0)
P{X} will hold the fit for the X-th columns.
  4 Comments
Jos (10584)
Jos (10584) on 28 Oct 2015
help arrayfun
will give you the answer. The output is non-uniform.
Jos (10584)
Jos (10584) on 28 Oct 2015
And by the way, you can write your own (anonymous) polyfit function that skips the input checks as Jan suggested, but this might be over your head right now.

Sign in to comment.


Namrata Badiger
Namrata Badiger on 28 May 2020
A = rand(1000, 100);
B = rand(1000, 100);
n = 3;
V = ones(1000, n + 1);
for k = 1:100
x = A(:, k);
y = B(:, k);
% Vandermonde matrix:
V(:, n+1) = 1;
for j = n:-1:1
V(:, j) = V(:, j + 1) .* x;
end
% Solve least squares problem:
[Q, R] = qr(V, 0);
p = transpose(R \ (transpose(Q) * y(:)));
...
endB = rand(1000, 100);n = 3;V = ones(1000, n + 1);for k = 1:100 x = A(:, k); y = B(:, k); % Vandermonde matrix: V(:, n+1) = 1; for j = n:-1:1 V(:, j) = V(:, j + 1) .* x; end % Solve least squares problem: [Q, R] = qr(V, 0); p = transpose(R \ (transpose(Q) * y(:))); ... end

Tags

Products

Community Treasure Hunt

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

Start Hunting!