Writing my own polyfit function

조회 수: 26 (최근 30일)
SB
SB 2012년 10월 26일
댓글: Max 2022년 8월 20일
How would one write their own polyfit function using only mldivide and for loops?
I have a basic idea:
function [A,e] = MyPolyRegressor(x, y, n)
c=ones(n,1);
for i=1:n;
c(:,i)=x.^(i-1);
end
A=c\y
e=c*A-y
But it doesnt quite work.
  댓글 수: 3
SB
SB 2012년 10월 26일
Well, there's a dimension mismatch in line 4. Even when I switch c to c=ones(size(X)) to fix that issue, there are too many coefficients, none of which are correct.
Jan
Jan 2012년 10월 26일
편집: Jan 2012년 10월 26일
Because you didn't format your code properly (please learn how to do this...), it is not possible to find out, which one is the "line 4".
But with some guessing: "ones(n,1)" and even "ones(size(x))" create vectors, while the required Vandermonde-matrix needs the dimensions [length(x), n+1].

댓글을 달려면 로그인하십시오.

채택된 답변

Jan
Jan 2012년 10월 26일
편집: Jan 2012년 10월 26일
function p = fPolyFit(x, y, n)
% Construct Vandermonde matrix:
x = x(:);
V = ones(length(x), n + 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(:)));
% Equivalent: (V \ y)'
  댓글 수: 1
SB
SB 2012년 10월 26일
편집: SB 2012년 10월 26일
For a weighted Least Squares problem, would you do function [A, e] = WeightedLeastSquares(X, Y, w,n)
X=diag(w)*X
Y=diag(w)*Y
X = X(:);
V = ones(length(X), n + 1);
for j = n:-1:1
V(:, j) = V(:, j + 1) .* X;
end
[Q, R] = qr(V, 0);
A= (R \ (transpose(Q) * Y(:)));
e= V*A-Y;
?

댓글을 달려면 로그인하십시오.

추가 답변 (1개)

Vrushabh Bhangod
Vrushabh Bhangod 2018년 5월 19일
편집: Walter Roberson 2018년 6월 10일
function [p,mu,f] = plofit(x,y,n)
% x = input samples
% y = output function,n = order
m = length(x); %number of rows in the Vandermonde Matrix
V = zeros(m,n);
a = n;
for i = 1:m
v = zeros(1,n);
for j = a:-1:1
v(n+1-j) = realpow(x(i),j);
end
V(i,:) = v;
end
V(:,n+1)=ones(m,1);% adding 1 column to ones to the vandermonde matrix
%%QR method to compute the least squares solution for the coefficients,'p'
[Q,R] = qr(V,0);
p = transpose(R \ (transpose(Q) * y'));
f = polyval(p,x);
%%to find mean
mean = sum(x)/length(x);
sq = 0;
for i =1:length(x)
sq = sq + (x(i)-mean)^2;
end
sd = (sq/length(x))^0.5;
mu = [mean;sd];
end
  댓글 수: 1
Max
Max 2022년 8월 20일
Works perfect, Thanks!

댓글을 달려면 로그인하십시오.

Community Treasure Hunt

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

Start Hunting!

Translated by