# Why does this code not optimize for all three points?

Background

I am trying to fit a distribution to a 95% CI and mode. The cost function that I am using solves three functions for 0: P(X=2.5 | mu, sigma)=0.025, P(X=7.5|mu, sigma)=0.975, and the mode of log-N(mu, sigma) = 3.3. note: mode of a lognormal is = $e^{\mu-\sigma^2)}$:

Approach

First I write a cost function, prior

prior <- function(parms) {
a <- abs(plnorm(2.5, parms[1], parms[2]) - 0.025)
b <- abs(plnorm(7.5, parms[1], parms[2]) - 0.975)
mode <- exp(parms[1] - parms[2]^2)
c <- abs(mode-3.3)
return(a + b + c)
}


And then I seek parameters that minimize the cost function

v = nlm(prior,c(log(3.3),0.14))


It is apparent that the function is maximized for the mode an LCL but not the UCL.

abs(plnorm(7.5, parms[1], parms[2]) - 0.975)
> [1] 0.02499989


Here is a plot with dotted lines at the desired 95%CI:

x <- seq(0,10,0.1)
plot(x,dlnorm(x, v$estimate[1],v$estimate[2]),type='l')
abline(v=c(2.5,7.5), lty=2) #95%CI


Question

The optimization two points closely and all of the error is in the third. However, I would like it to fit the points evenly.

How can I get the function to give equal weight to the magnitude of the a, b, and c terms? It appears that the function is only fitting a and c.

note: This question is based on one asked at [cross validated][1] except that this version is specifically about the function of R's nlm() optimization algorithm whereas the CV question is about finding the a more appropriate distribution.

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Perhaps I am missing something, but I don't see how the argument X is used in the cost function named Prior. –  Samsdram Dec 6 '10 at 16:19
@Samsdram, you are correct and I have fixed the error. In the original code, x was used to set the CI, i.e. x = c(2.5, 7.5), but I decided to fix the values in the post to simplify it. –  David LeBauer Dec 6 '10 at 16:26
I question whether you have been interpreting what you are getting back correctly. If you take the mode out of the prior function, there is very little difference in the result. –  BondedDust Dec 10 '10 at 5:59
@DWin I see that, but it is not clear to me why this happens. Is it to you? –  David LeBauer Dec 10 '10 at 6:14
Try plotting your function across the range of interest:plot(seq(0,10,0.1), abs(plnorm(seq(0,10,0.1), 1.3197251, 0.3546866) - 0.025) + abs(plnorm(seq(0,10,0.1), 1.3197251, 0.3546866) - 0.975)+ exp(1.3197251 - 0.3546866^2) ) –  BondedDust Dec 10 '10 at 6:20

The reason your optimization "does not work" is that the scale of the three parameters, a, b, and c does not match. a and b measure a difference in probabilities, and can always be set to be no larger then 0.025 by chosing a really small value for the standard deviation (parms[2]), since then plnorm(2.5, parms[1], parms[2]) will be 0 (same for 7.5). The same amount of error (0.025) would be unnoticable for c - this is the scaling mismatch.

You can rewrite your optimization function so that the errors are measured on the x scale for all three criteria by comparing the quantiles to 2.5 and 7.5:

prior2 <- function(parms) {
a <- abs(qlnorm(0.025, parms[1], parms[2]) - 2.5)
b <- abs(qlnorm(0.975, parms[1], parms[2]) - 7.5)
mode <- exp(parms[1] - parms[2]^2)
c <- abs(mode-3.3)
return(a + b + c)
}


This is similar to what Ramnath suggested, except not on the log scale. This approach does not really do well on the left tail because the distribution is skewed right: small changes in the location of the lower 2.5th percentile lead to large changes of the percentile at 2.5, while this is not the case at 7.5. Ramnath's suggestion of working on the log scale solves this problem, since the log-normal distriburion is symmetric on the log-scale.

Another way to improve your fit is to change the optimization criterion. Right now you are minimizing the average absolute error. This means that one large error is OK-ish as long as the other two error terms are really small. You can impose a bigger penalty on large errors by minimizing the mean squared error (a^2+b^2_c^2) instead. This latest version (on the log scale) produces the best-looking estimate from my point of view.

prior3 <- function(parms) {
a <- abs(parms[1] - 1.96*parms[2] - log(2.5))
b <- abs(parms[1] + 1.96*parms[2] - log(7.5))
c <- abs(parms[1] - parms[2]^2 - log(3.3))
return(a^2 + b^2 + c^2)
}

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try an alternate formulation of your optimization function. the log of the 95% confidence interval for the lognormal distribution is given by mu - 2*sigma and mu + 2*sigma. so you can basically try to minimize abs(mu - 2*sigma - log(2.5)) + abs(mu + 2*sigma - log(7.5)) + abs(mu - sigma^2 - log(3.3)).

when i minimized this, i find that the confidence intervals are fit very closely, while the mode is a little off. depending on the nature of your application, you might want to weight the three terms differently

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