how to plot residual and fitting curve

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farfar
farfar el 19 de Abr. de 2017
Editada: Image Analyst el 14 de Nov. de 2017
Hi I have two set of data (a,b).
a=[6.91 8.26 2.21 1.19 2.32 8.41 7.3 4.32 2 3.42 3.21 7.54 8.72 2.38 3.1 8.18 5.47 1.27 6.09 7.98 7.69 5.39 7.35 7.33 5.3];
b=[17.52 1.77 14.97 7.5 15.09 9.4 17.36 22.69 12.87 19.16 19.06 14.75 9.83 17.61 18.63 11.15 23.89 10.75 22.33 14.29 16.77 22.41 16.63 17.42 21.37];
and I plot the linear regression line for it. how can I plot residual and the least square quadratic regression line ? thanks
figure(1)
scatter(a,b)
hl = lsline;
B = [ones(size(hl.XData(:))), hl.XData(:)]\hl.YData(:);
Slope = B(2)
Intercept = B(1)

Respuesta aceptada

Image Analyst
Image Analyst el 19 de Abr. de 2017
This works well:
a=[6.91 8.26 2.21 1.19 2.32 8.41 7.3 4.32 2 3.42 3.21 7.54 8.72 2.38 3.1 8.18 5.47 1.27 6.09 7.98 7.69 5.39 7.35 7.33 5.3];
b=[17.52 1.77 14.97 7.5 15.09 9.4 17.36 22.69 12.87 19.16 19.06 14.75 9.83 17.61 18.63 11.15 23.89 10.75 22.33 14.29 16.77 22.41 16.63 17.42 21.37];
% First need to sort a otherwise when we go to plot it, it will look like a mess!
[a, sortOrder] = sort(a, 'ascend');
b = b(sortOrder); % Need to sort b the same way.
% First compute the linear fit.
linearCoeffs = polyfit(a, b, 1);
Slope = linearCoeffs(2)
Intercept = linearCoeffs(1)
% Plot training data and fitted data.
subplot(2, 1, 1);
aFitted = a; % Evalutate the fit as the same x coordinates.
bFitted = polyval(linearCoeffs, aFitted);
plot(a, b, 'rd', 'MarkerSize', 10);
hold on;
plot(aFitted, bFitted, 'b-', 'LineWidth', 2);
grid on;
xlabel('a', 'FontSize', 20);
ylabel('b', 'FontSize', 20);
% Plot residuals as lines from actual data to fitted line.
for k = 1 : length(a)
yActual = b(k);
yFit = bFitted(k);
x = a(k);
line([x, x], [yFit, yActual], 'Color', 'm');
end
% Do the same for a quadratic fit.
quadraticCoeffs = polyfit(a, b, 2);
% Plot training data and fitted data.
subplot(2, 1, 2);
aFitted = a; % Evalutate the fit as the same x coordinates.
bFitted = polyval(quadraticCoeffs, aFitted);
plot(a, b, 'rd', 'MarkerSize', 10);
hold on;
plot(aFitted, bFitted, 'b-', 'LineWidth', 2);
grid on;
xlabel('a', 'FontSize', 20);
ylabel('b', 'FontSize', 20);
% Plot residuals as lines from actual data to fitted line.
for k = 1 : length(a)
yActual = b(k);
yFit = bFitted(k);
x = a(k);
line([x, x], [yFit, yActual], 'Color', 'm');
end
  4 comentarios
David Dalton
David Dalton el 14 de Nov. de 2017
The equation of the fitted curve is a polynomial (first order) "polyfit(a, b, 1);" i.e. a linear fit... y=mx +c, where . where is has shown that the Intercept is 'c' and the Slope is m
Image Analyst
Image Analyst el 14 de Nov. de 2017
Editada: Image Analyst el 14 de Nov. de 2017
bFitted = polyval(linearCoeffs, aFitted);
is essentially doing this:
bFitted = linearCoeffs(1) * aFitted + linearCoeffs(2);
and
bFitted = polyval(quadraticCoeffs, aFitted);
is essentially doing this:
bFitted = quadraticCoeffs(1) .* aFitted .^ 2 + quadraticCoeffs(2) .* aFitted + quadraticCoeffs(3);

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