Problem with non-linear fitting models and large numbers
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I'm trying to fit some data and having trouble with a general model in the curve fitting toolbox. If I give it data with numbers greater than a million it doesn't even attempt to fit the data and says that the fit converged with 95% confidence between -Inf and Inf. Not very useful.
If I have data = 10, this works. If I have data = 1e9 it completely doesn't. If I have data = 1000, it gives me ~600 though I suspect it would get there eventually if I increased the number of iterations allowed. Interestingly with 1e9 it doesn't even do a single iteration.
This ('a+0*x') is a 'very' simplified version of the function I need to use. I know you would normally use a linear model for fitting a constant (which works fine) but this illustrates the problem. It doesn't work any better if I use a+b*x as the model. I've tried increasing DiffMaxChange with no effect.
Anyone have any ideas? Thanks.
x=(1:10)'; y=10*ones(10,1);
f = fittype('a+0*x'); [c, gof, output] = fit(x, y, f, 'Startpoint', [0], 'MaxIter', 600, 'MaxFunEvals', 2000);
c output
--- Result -------------------------- c =
General model:
c(x) = a+0*x
Coefficients (with 95% confidence bounds):
a = 10 (10, 10)
output =
numobs: 10
numparam: 1
residuals: [10x1 double]
Jacobian: [10x1 double]
exitflag: 1
firstorderopt: 0
iterations: 1
funcCount: 4
cgiterations: 0
algorithm: 'trust-region-reflective'
message: 'Success. Fitting converged to a solution.'
---------------------------------------------
x=(1:10)'; y=1e9*ones(10,1);
f = fittype('a+0*x'); [c, gof, output] = fit(x, y, f, 'Startpoint', [0], 'MaxIter', 600, 'MaxFunEvals', 2000);
c output
--- Result -------------------------- c =
General model:
c(x) = a+0*x
Coefficients (with 95% confidence bounds):
a = 0 (-Inf, Inf)
output =
numobs: 10
numparam: 1
residuals: [10x1 double]
Jacobian: [10x1 double]
exitflag: 1
firstorderopt: 0
iterations: 0
funcCount: 2
cgiterations: 0
algorithm: 'trust-region-reflective'
message: 'Success. Fitting converged to a solution.'
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