Response Surface Methodology-Third Order

I am trying to use RSM and calculate 3rd order polynomials.for quadratic below is given in Matlab Help:

b = stats.beta; % Model coefficients

How can I calculate 3rd order coefficients? My reason is that with quadratic I have rsquare of 93% and my observed responses is third order.

For

stats = regstats(y,X,model,whichstats)

the 'model' can be a matrix of model terms accepted by the 'x2fx' function. See x2fx for a description of this matrix and for a description of the order in which terms appear. You can use this matrix to specify other models including ones without a constant term.

• I think this is the right answer, but I am still not sure how to do this in matlab. model parameter can be at most 'quadratic', but in my case I want cubic polynomials – sosruko Jan 30 '12 at 15:18
• The link for x2fx explains it pretty well: for high-order terms you have to specify a matrix, instead of 'quadratic', etc. – Kavka Jan 31 '12 at 4:40
• 3rd order polynomials are given herehttp://www.itl.nist.gov/div898/handbook/pri/section3/pri336.htm – sosruko Feb 2 '12 at 3:59
modelMatrix = [0 0 0;
1 0 0;
0 1 0;
0 0 1;
1 1 0;
1 0 1;
0 1 1;
2 0 0;
0 2 0;
0 0 2;
1 1 1;
2 1 0;
2 0 1;
1 2 0;
1 0 2;
0 2 1;
3 0 0;
0 3 0;
0 0 3];
stats = regstats(rsmOutput,rsmMatrix,modelMatrix,'beta');