Plotting with lsqnonlin regression

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Valeria Villegas-Medina
Valeria Villegas-Medina el 19 de Sept. de 2020
Respondida: Gaurav Garg el 21 de Sept. de 2020
Hello,
I wrote a function that uses lsqnonlin to generate predictions but I'm wondering how I can use those predictions to make plots and visulaize them? Should I be using lsqcurvefit instead? Any and all suggestions are welcome! The function lsq calls errFun and I've included them below for reference. Thank you in advance for your help!
function results = lsq(M) % takes Nx3 matrix where columns are Lx, Ly, gap
results = table();
tempTable = table();
idx = nchoosek(1:size(M,1), 3); % Nx3 matrix of all index trios
a = [];
Lx = [];
Ly = [];
gap = [];
for k = 1:size(idx, 1)
ix = idx(k ,:); % current idx trio, row vector
Lx = M(ix,1)';
Ly = M(ix,2)';
gap = M(ix,3);
L = sqrt((M(ix,1).^2 + M(ix,2).^2)/2);
% Here is where I'm having trouble. I passed the four arguments and the
% errors says "Too many input argumetns".
lsq = lsqnonlin(@(coeff) errFun(coeff, L, M(ix,3)), [0; 1; 1]);
a(k) = lsq(1);
tempTable.Lx = Lx(:)';
tempTable.Ly = Ly( :)';
tempTable.L = L(:)';
tempTable.Prediction = a(k)';
results = [results;tempTable];
end
results.PercentErr = abs((results.Prediction - 4.5670) ./ 4.5670) * 100;
end
function fErr = errFun(coeff, xdata, ydata)
%parameters
a = coeff(1);
b = coeff(2);
c = coeff(3);
% calculate prediction from model
yModel = a + b*exp(-c .* xdata);
fErr = yModel - ydata;
end

Respuestas (1)

Gaurav Garg
Gaurav Garg el 21 de Sept. de 2020
Hi Valeria,
You can look at the examples here to check how to plot and visualize the results.

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