Constraints on Parameter Estimation

I am trying to fit linear regression model and predict parameters without intercept. I have written my code as under;
tbl=table(yobs,x1,x2,x3);
mdl = fitlm(tbl,'yobs ~ x1 + x2 + x3 - 1')
but I am getting the estimates which are negative but in my model all parameters should be positive. LB>=0 and UB=inf. How to set these constraints while doing the prediction.

 Accepted Answer

Torsten
Torsten on 11 Mar 2023
Use lsqlin instead of fitlm.

6 Comments

I am using lsqlin with lb=[0.5 0 0] and ub=[inf inf inf], but it is not changing the 1st parameter. I mean whatever I give the value as lb it it spitting out same for Beta1, but changing the values of other two betas.
C = [x1 x2 x3];
d = yobs;
lb = [0.5 0 0];
ub = [inf inf inf];
sol = lsqlin(C,d,[],[],[],[],lb,ub)
where x1, x2, x3 and yobs are column vectors of the same length doesn't work ?
Perhaps the columns of C need to be normalized.
C = [x1 x2 x3];
c=vecnorm(C,2,1);
d = yobs+1;
lb = [0.5 0 0];
ub = [inf inf inf];
sol = lsqlin(C./c,d,[],[],[],[],lb,ub);
sol=sol./c(:)
Thank you, it worked. but it is not giving me the estimates with low SE. I mean the parameter estimates are way different from global values and it is not giving the best fit.
This is the best fit you can get without intercept and the constraints you want to impose on the parameters.
According to the documentation,
yobs ~ x1 + x2 + x3 - 1
means a three-variable linear model without intercept.
Thus the "-1" just means: no constant term, not
yobs = p1*x1 + p2*x2 + p3*x3 - 1
Very confusing.

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R2022a

Asked:

on 11 Mar 2023

Commented:

on 13 Mar 2023

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