Dismiss
Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

minimization in matlab

I am using matlab to minimize a sum of squares (chi-squared) function. My model has a definite integral (from zero to data values).The model has three parameters w.r.t which I need to minimize.

I need to integrate `(1+x).^(b-a-2).* exp(-b.*x)` from zero to `z(i)`, where `a` and `b` are parameters.

I make a function handle

modelfun1=@ (y,a,b,c) (978.4./c).int( (1+x).^(b-a-2). exp(-b.*x),0,y)

and then a sum of squares function as

``````sum1=@(a,b,c,data) sum(((data.ydata-modelfun1(data.xdata,a,b,c)).^2)./data.zdata.^2);
``````

where `data.xdata` has all the `z` values, `data.ydata` are the observed values and `data.zdata` are the variances.

when I minimize this function using `fminsearch`

``````[tmin,ssmin]=fminsearch(sum1,[-0.1;0.06;70],[],data)
``````

I get the following error

Error using

``````@(a,b,c,data)sum(((data.ydata-modelfun1(data.xdata,a,b,c)).^2)./data.zdata.^2)
``````

Not enough input arguments.

Error in fminsearch (line 191)

``````fv(:,1) = funfcn(x,varargin{:});
``````

can someone please point out what I am doing wrong. I have tried many more things but this seems to be the most recurring error.

Here is another attempt at the problem

I am trying to minimize a chi-square function (that involves a definite integral in the model) using nlinfit. This is my attempt: I make the model function as follows:

``````function [ f ] = modelf( p,ul )
syms x
a=p(1);
b=p(2);
c=p(3);
f=(978.4./c).*int((1+x)^(b-a-2)*exp(-b*x),x,0,ul);
end
``````

here 'ul' is the upper limit of the integral.It is substituted from a data matrix z (32X1). The dependent data is in matrix y(32X1).I make another data set having weighted y values as

``````w = 1/variance;
``````

where variance are the individual errors on data points yw = sqrt(w).*y;

and I also make a weighted function handle as

``````modelfunw=@(p,z) (sqrt(var))'.*modelf(p,z);
``````

then I call nlinfit as

``````p0=[-0.1 0.05 70]'; %the initial guess

beta=nlinfit(z,yw,modelfunw,p0)
``````

but I get the following error message

Error using nlinfit (line 120) Error evaluating model function '@(p,z)(sqrt(var))'.*modelf(p,z)'.

Caused by: Error using mupadmex Error in MuPAD command: Illegal argument [checkNumber]

Can someone please point out what I am doing wrong? Or is there a better way to minimize chi-square?

-

You have to pack all your parameters into a single state vector. Instead of separate parameters `a`, `b`, `c`, use `p(1)`, `p(2)`, `p(3)`.
As @BenVoigt says, you have to do something like `sum1=@(p,data) ...modelfun1(data.xdata,p(1),p(2),p(3)))...;`. If this doesn't work, please post that attempt in your question and the errors you get. Your `modelfun1` can remain as is. – mathematical.coffee Jan 23 '12 at 5:55