Unable to perform assignment because the left and right sides have a different number of elements - Gauss-Seidel Method to solve for inverse matrix

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Does anyone know why I'm getting this error: "Unable to perform assignment because the left and right sides have a different number of elements." when I try to solve for the inverse of A using the Gauss-Seidel method and identity matrix b? Thanks in advance!!
A = [8 0 1 1 4; 2 9 1 4 0; 1 5 9 2 1; 1 1 4 12 1;2 3 1 4 16];
n = length(A);
b = eye(n);
lambda = 1;
xinit = zeros(n,1);
norm = 2;
tol = 1.E-6;
maxiter = 100;
fprintf('\n-----Problem 1b------\n')
fprintf('The correct answer using the Gauss Seidel method will be the inverse matrix, x:')
[x,errst,iter] = seidel(A,b,x,lambda,tol,maxiter,norm);
x
iter
%% Functions
% Gauss Seidel
function [x,errst,iter] = seidel(A,b,x,lambda,tol,maxiter,norm)
n = length(A);
d = diag(A);
d = 1./d;
A = (A'*diag(d))';
b = b.*d;
A = A - eye(n);
err = 1.;
xold = x;
iter = 0;
while err>tol && iter<maxiter
iter = iter + 1;
for i = 1:n
x(i) = b(i)-A(i,:)*x;
end
x = lambda*x+(1-lambda)*xold;
errst(iter,:) = errnorm(x-xold)./errnorm(x);
err = errst(iter,norm);
xold = x;
end
if iter>=maxiter
fprintf('\nLinear solver maxiter exceeded!!!\n')
end
end
% error
function [abserr] =errnorm(vec)
vec = abs(vec);
abserr(1,1)= trace(vec);
abserr(1,2) = trace(sqrt(vec'*vec));
abserr(1,3) = max(max(vec));
end

Respuesta aceptada

Erivelton Gualter
Erivelton Gualter el 19 de Nov. de 2019
For this case, it seems vec has 5x1 size. So you should you sum instead of trace.
function [abserr] =errnorm(vec)
vec = abs(vec);
abserr(1,1)= sum(vec);
abserr(1,2) = trace(sqrt(vec'*vec));
abserr(1,3) = max(max(vec));
end
  5 comentarios
Erivelton Gualter
Erivelton Gualter el 19 de Nov. de 2019
I realized the problem.
You dont need the loop to update x:
for i = 1:n
x(i) = b(i)-A(i,:)*x;
end
SO here is the final code again:
A = [8 0 1 1 4; 2 9 1 4 0; 1 5 9 2 1; 1 1 4 12 1;2 3 1 4 16];
n = length(A);
b = eye(n);
lambda = 1;
xinit = zeros(n);
norm = 2;
tol = 1.E-6;
maxiter = 100;
fprintf('\n-----Problem 1b------\n')
fprintf('The correct answer using the Gauss Seidel method will be the inverse matrix, x:')
[x,errst,iter] = seidel(A,b,xinit,lambda,tol,maxiter,norm);
x
iter
%% Functions
% Gauss Seidel
function [x,errst,iter] = seidel(A,b,x,lambda,tol,maxiter,norm)
n = length(A);
d = diag(A);
d = 1./d;
A = (A'*diag(d))';
b = b.*d;
A = A - eye(n);
err = 1.;
xold = x;
iter = 0;
while err>tol && iter<maxiter
iter = iter + 1;
x = b-A*x;
x = lambda*x+(1-lambda)*xold;
errst(iter,:) = errnorm(x-xold)./errnorm(x);
err = errst(iter,norm);
xold = x;
end
if iter>=maxiter
fprintf('\nLinear solver maxiter exceeded!!!\n')
end
end
% error
function [abserr] =errnorm(vec)
vec = abs(vec);
abserr(1,1)= trace(vec);
abserr(1,2) = trace(sqrt(vec'*vec));
abserr(1,3) = max(max(vec));
end
Kiana Bahrami
Kiana Bahrami el 19 de Nov. de 2019
Wonderful! Thank you! It now prints out the correct 'x' matrix. However, it performs the same # of iterations as the jacobi method. From my understanding, it should be more efficient and perform with a lower number of iterations that the iterations, no?

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