How to fix gradient descent code?
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I am a novice trying to do a gradient descent with one variable, but cannot figure out how to fix my code (below). Not sure if my for-part is correct. This is the error message: "In an assignment A(:) = B, the number of elements in A and B must be the same." Please help?
data = load('data.txt' );
X = data(:, 1); y = data(:, 2);
m = length(y);
X = [ones(m, 1), data(:,1)]; % Add a column of ones to x
theta = zeros(2, 1); % initialize fitting parameters
num_iters = 1500;
alpha = 0.01;
J = computeCost(X, y, theta)
m = length(y);
J = sum(( X * theta - y ) .^2 )/( 2 * m );
[theta J_history] = gradientDescent(X, y, theta, alpha, num_iters)
J_history = zeros(num_iters, 1);
for iter = 1:num_iters
h=(theta(1)+ theta(2)*X)';
theta(1) = theta(1) - alpha * (1/m) * h * X(:, 1);
theta(2) = theta(2) - alpha * (1/m) * h * X(:, 2);
% Save the cost J in every iteration
J_history(num_iters) = computeCost(X, y, theta);
end
2 Comments
Accepted Answer
Torsten
on 30 Mar 2016
theta(1) - alpha * (1/m) * h * X(:, 1)
and
theta(2) - alpha * (1/m) * h * X(:, 2)
are 2x1 vectors which are assigned to scalars in the lines
theta(1) = theta(1) - alpha * (1/m) * h * X(:, 1);
theta(2) = theta(2) - alpha * (1/m) * h * X(:, 2);
This is not possible.
Best wishes
Torsten.
3 Comments
Torsten
on 30 Mar 2016
I must admit that I don't understand what your code does.
To answer your question, you had to include comments and explain in more detail the underlying problem and the algorithm to solve it.
Best wishes
Torsten.
More Answers (2)
Torsten
on 30 Mar 2016
Edited: Torsten
on 30 Mar 2016
I don't know why you use such a complicated approach.
Just execute
data = load('data.txt' );
A = [ones(length(data(:,1)),1), data(:,1)];
b = data(:,2);
theta = A \ b
to get your optimum theta values.
Best wishes
Torsten.
14 Comments
Torsten
on 31 Mar 2016
You seem to have a strange MATLAB version.
If I set
num_iters=1001,
I get
theta =
5.2147549
- 0.5733459
J_history(1001)
ans =
0.8554026
thus the results expected.
Best wishes
Torsten.
Torsten
on 31 Mar 2016
I only need to supply the updates to theta within each iteration.
If you can't read from the code I supplied how theta is updated every iteration, then you should really start with MATLAB principles.
Agbakoba Chukwunoso
on 6 Dec 2020
Pls help me out.. I'm trying to find gradientdescent with this code but when I run it, it returns gradientdescents to me not the value . data = load('ex1data1.txt'); % text file conatins 2 values in each row separated by commas X = [ones(m, 1), data(:,1)]; theta = zeros(2, 1); iterations = 1500; alpha = 0.01; function [theta, J_history] = gradientdescent(X, y, theta, alpha, num_iters) m = length(y); % number of training examples J_history = zeros(num_iters, 1); for iter = 1:num_iters k=1:m; j1=(1/m)*sum((theta(1)+theta(2).*X(k,2))-y(k)) j2=(1/m)*sum(((theta(1)+theta(2).*X(k,2))-y(k)).*X(k,2)) theta(1)=theta(1)-alpha*(j1); theta(2)=theta(2)-alpha*(j2); end end
2 Comments
Agbakoba Chukwunoso
on 6 Dec 2020
data = load('ex1data1.txt');
% text file conatins 2 values in each row separated by commas
X = [ones(m, 1), data(:,1)];
theta = zeros(2, 1);
iterations = 1500;
alpha = 0.01;
function [theta, J_history] = gradientdescent(X, y, theta, alpha, num_iters)
m = length(y); % number of training examples
J_history = zeros(num_iters, 1);
for iter = 1:num_iters
k=1:m;
j1=(1/m)*sum((theta(1)+theta(2).*X(k,2))-y(k))
j2=(1/m)*sum(((theta(1)+theta(2).*X(k,2))-y(k)).*X(k,2))
theta(1)=theta(1)-alpha*(j1);
theta(2)=theta(2)-alpha*(j2);
end
end
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