Appy lsqcurvefit to multiple data sets with multiple parameters
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Hello everyone,
I have a number of experimental data sets for which I need a general correlation with three coefficients, so I though using lsqcurvefit (or fitnlm).
The structure of one data set looks like this:
Xdata_1 = (x1, x2, x3, x4, x5, x6), each xi is a column vector,
Ydata_1 = (y1), a response column vector,
fun = @(c,X) c(1)*X(:,3).^(1-c(2)).* (X(:,2).*X(:,4)).^c(2).* 1./X(:,1).^(1+c(2)).* (X(:,5)./X(:,6)).^c(3);
c0 = [0.1, 0.8, 0.33];
I am able to apply a fitting function to one data set like:
c = lsqcurvefit(fun,c0,Xdata_1,Ydata_1);
However what I need is to fit fun to multiple Xdata_i, Ydata_i to obtain the 'best' set of c-coefficients? Of course I could loop it and get for each input a set of c's, but that is not of interest.
If that is possible then I don't know the syntax. Does anyone have an idea?
Thank you.
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回答 (2 件)
Jon
2023 年 6 月 1 日
Can you stack your data, so that if for example, using your terminology, Xdata_1,Xdata__,.. Ydata_1, Ydata_2,...
Then fit Xdata = [Xdata_1(:);Xdata_2(:);...], Ydata = [Ydata_1(:);Ydata_2,...]
4 件のコメント
Jon
2023 年 6 月 2 日
Sorry, I should have looked more carefully at your problem statement. I missed that X had 6 columns. Assuming you had many data sets, each with a different number of rows, it would still be preferable to store the whole collection in one variable rather than working with a variable for each data set, e.g Xdata_1, Xdata_2, etc.
For this purpose you could make one cell array, call it Xdata, and put all of the data in it (just to illustrate)
Xall = {rand(20,6),rand(12,6),rand(4,6),rand(11,6)}
You could then stack your data, and and apply your function to it using
X = cell2mat(Xall(:))
Note, if you only have a few data sets, its not too bad to just vertically concatenate them as @Star Strider showed using something like
X = [Xdata_1;Xdata_2]
But if you have more than a few, it would probably be better to not include the indexing in the variable names, and do something like I show above
Star Strider
2023 年 6 月 1 日
If I understand the problem correctly, and all the data sets contain column vectors and are the same column size (they do not have to have the same row size), one option is to vertically concatenate them —
Xdata_1 = rand(5,6);
Ydata_1 = rand(5,1);
Xdata_2 = rand(6,6);
Ydata_2 = rand(6,1);
fun = @(c,X) c(1)*X(:,3).^(1-c(2)).* (X(:,2).*X(:,4)).^c(2).* 1./X(:,1).^(1+c(2)).* (X(:,5)./X(:,6)).^c(3);
c0 = [0.1, 0.8, 0.33];
Xdata_All = [Xdata_1; Xdata_2]
Ydata_All = [Ydata_1; Ydata_2]
c = lsqcurvefit(fun,c0,Xdata_1,Ydata_1) % Separately
c = lsqcurvefit(fun,c0,Xdata_2,Ydata_2) % Separately
c = lsqcurvefit(fun,c0,Xdata_All,Ydata_All) % Conocatenated
Try this to see if it produces the result you want.
.
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