MATLAB: Linear regression

I'm trying to work out the most efficient method to find the linear regression equation (y = mx + c) for a dataset, given a 2 by n array.

Basically I want to know what the value of Y is when X is, for example, 50.

My current method leaves a lot to be desired:

inputData is my 2 by n array, with X in the first column and Y in the second.

``````x = 50

for i = 1 : size(inputData,1) % for every line in the inputData array
if (inputData(i,1) < x + 5) | (inputData(i,1) > x - 5) % if we're within 5 of the specified X value
arrayOfCloseYValues(i) = inputData(i, 2); % add the other position to the array
end
end
y = mean(arrayOfCloseYValues) % take the mean to find Y
``````

As you can see, my above method simply tries to find values of Y that are within 5 of the given X value and gets the mean. This is a terrible method, plus it takes absolutely ages to process.

What I really need is a robust method for calculating the linear regression for X and Y, so that I can find the value through the equation y = mx + c...

PS. In my above method I do actually pre-allocate memory and remove trailing zeros at the end, but I have removed this part for simplicity.

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Have you read the Matlab documentation on linear regression? mathworks.co.uk/help/techdoc/data_analysis/f1-5937.html –  Oli Charlesworth Feb 16 '12 at 17:09
I have, but I can't see what 'polyfit' actually returns - it gives two values but the documentation doesn't say whether they predict the first or second value of the input data..? –  CaptainProg Feb 16 '12 at 17:12
I'm going to assume the two values are 'm' and 'c', acting on the second variable supplied, being 'y'. So if I want to find 'x', I need x = my + c, reversing 'x' and 'y' in the polyfit() function... –  CaptainProg Feb 16 '12 at 17:17
In fact this doesn't work either. If anyone can help I'd be very grateful! –  CaptainProg Feb 16 '12 at 17:23

Polyfit is fine, but I think you're problem is a bit simpler. You have a 2 x n array of data. Let's say column 1 is y and column 2 is x, then:

``````y = inputData(:,1);
x = inputData(:,2);
b = ones(size(inputData));
A = [x b];
c = A\y
``````

Should give you a least squares regression for the slope and offset.

Here's another way to test it:

``````x = transpose(0:10);
y = 0.5*x + 1 + 0.1*randn(size(x)); % as a test, m = 0.5, b=1, and add some noise
A = [x ones(size(x))];
c = A\y;
yest = c(1)*x + c(2);
plot(x,yest,x,y)
legend('y_{est}','y')
``````

Should get you:

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Does this give y = Ax + b, or y = bx + c? –  CaptainProg Feb 16 '12 at 18:06
Also, c contains three values. I'm sure you know what you've done here, but I can't work out what the variables relate to :( –  CaptainProg Feb 16 '12 at 18:10
Ok, this gives `y = c(1)*x + c(2)` so `m = c(1)` and `b = c(2)` as the variables. Sorry for the confusion I hope I'm making more sense. I'll try and add to my previous post as well –  macduff Feb 16 '12 at 18:56