Linear fit over multiple Rows without using Loops (or polyfit)?

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Hello, I have a matrix of data
I=[1.8,3,3.6,4.2,4.7,5.3,5.5;3.3,4.2,4.8,5.3,5.8,6.3,6.6;4.5,5.6,6.3,6.8,7.3,7.9,8.2;6.1,6.9,7.5,8,8.6,9,9.4]
I =
1.8000 3.0000 3.6000 4.2000 4.7000 5.3000 5.5000
3.3000 4.2000 4.8000 5.3000 5.8000 6.3000 6.6000
4.5000 5.6000 6.3000 6.8000 7.3000 7.9000 8.2000
6.1000 6.9000 7.5000 8.0000 8.6000 9.0000 9.4000
I would like to get the gradient of a straight line fit through each row.
i.e. I was just going to loop over all the rows something like this:
x = 1:7
1 2 3 4 5 6 7
y=I(1,:)
p=polyfit(x,y,1)
I then just want to average all those gradients (m's)
I was wondering if there was a better way to do this rather than use polyfit and loops?

Risposta accettata

Image Analyst
Image Analyst il 28 Mar 2022
No, I don't think so. That way is fine.
I = [1.8,3,3.6,4.2,4.7,5.3,5.5;3.3,4.2,4.8,5.3,5.8,6.3,6.6;4.5,5.6,6.3,6.8,7.3,7.9,8.2;6.1,6.9,7.5,8,8.6,9,9.4]
I = 4×7
1.8000 3.0000 3.6000 4.2000 4.7000 5.3000 5.5000 3.3000 4.2000 4.8000 5.3000 5.8000 6.3000 6.6000 4.5000 5.6000 6.3000 6.8000 7.3000 7.9000 8.2000 6.1000 6.9000 7.5000 8.0000 8.6000 9.0000 9.4000
[rows, columns] = size(I)
rows = 4
columns = 7
x = 1 : columns;
coefficients = zeros(rows, 2);
for row = 1 : rows
coefficients(row, :) = polyfit(x, I(row, :), 1);
end
coefficients % Let's see them in the command window:
coefficients = 4×2
0.6000 1.6143 0.5393 3.0286 0.5964 4.2714 0.5429 5.7571
% Compute means
meanSlope = mean(coefficients(:, 1))
meanSlope = 0.5696
meanOffset = mean(coefficients(:, 2))
meanOffset = 3.6679
  4 Commenti
Jason
Jason il 28 Mar 2022
Yes, sorry, this is also more of a visualisation part.
Jason
Jason il 28 Mar 2022
My mistake was this
x1fit = min(x):10:max(x);
should be this
x1fit = min(x):1:max(x);

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