How to interpret nlparci?

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Learner
Learner el 21 de Sept. de 2014
Respondida: Fritz Ulysse el 3 de Abr. de 2017
Hi,
I am just curious to know, most of the peoples use "nlparci" for estimating confidence intervals.
Suppose, we have data points:
x = [0.5 0.387 0.24 0.136 0.04 0.011];
y = [1.255 1.25 1.189 1.124 0.783 0.402];
& the function is as follows:
f = @(pars,x) pars(1)*x./(pars(2)+x);
With initial guess of parameters:
parguess = [ 1.3 0.03];
For fitting this function is used:
[pars, resid, J] = nlinfit(x,y,f,parguess)
After running the above program, we get:
pars =
1.3275 0.0265
resid =
-0.0058 0.0074 -0.0067 0.0127 -0.0160 0.0122
J =
0.9497 -2.3949
0.9360 -3.0053
0.9007 -4.4873
0.8371 -6.8404
0.6019 -12.0216
0.2936 -10.4056
Now here we go for "nlparci":
alpha = 0.05; % this is for 95% confidence intervals
pars_ci = nlparci(pars,resid,'jacobian',J,'alpha',alpha)
We get:
pars_ci =
1.3005 1.3545
0.0236 0.0293
This means:
pars(1) is in the range of [1.3005 1.3545] at the 95% confidence level, &
pars(2) is in the range of [0.0236 0.0293] at the 95% confidence level.
^^ BUT WHAT ACTUALLY DOES IT MEANS; I MEAN HOW CAN YOU INTERPRET IT; WHAT ARE THESE RANGES FOR?
Thanks in advance.

Respuesta aceptada

Star Strider
Star Strider el 21 de Sept. de 2014
‘^^ BUT WHAT ACTUALLY DOES IT MEANS; I MEAN HOW CAN YOU INTERPRET IT; WHAT ARE THESE RANGES FOR?’
In formal terms, the 95% confidence intervals test the hypothesis that the individual parameters are equal to zero, and so not needed in the model. So for instance, in a linear model (not yours here), y=m*x+b, it would test to see if the intercept b was different from zero, so tests the hypothesis that the data could be explained by a line that went through the origin. It would separately test to see if the slope m was different from zero, so tests whether the slope could be explained by a line parallel to the x-axis at the mean of the y-values. If both those tests fail (both parameters are significantly different from zero), the linear model (in this illustration) is a valid explanation of the data.
In your particular situation, the 95% confidence intervals do not include zero, so: (1) the parameters are needed in the model, and (2) your model explains your data as well as it is able.
  2 comentarios
Learner
Learner el 21 de Sept. de 2014
Thanks for such a clear explanation.
I just want to know, suppose in my above problem the values of "pars_ci" is:
pars_ci =
-10 100
-0.02 0.5
1. Then this means both parameters are not needed in the model because limits have zero in between?
2. Do huge difference (from -10 to 100) has any significance over smaller difference (from -0.02 to 0.5)?
Star Strider
Star Strider el 21 de Sept. de 2014
My pleasure!
  1. Correct. They would not be significantly different from zero.
  2. If you’re discussing parameter confidence intervals, no. The huge difference simply means the degrees-of-freedom are greater than in the example with the narrower confidence intervals. (The possibilities are that there are either fewer data pairs or more parameters — or both — in the second situation than the first. This has to do with ‘degrees-of-freedom’, calculated by the number of data pairs minus the number of parameters being estimated, i.e. n-p.)

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Fritz Ulysse
Fritz Ulysse el 3 de Abr. de 2017
how to test if confidence interval covers ground truth parameters

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