Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I am using the fitdist function in the fitdistrplus package in R. I have the following data (that I read using read.table):

A <- structure(list(V1 = c(-0.00707717, -0.000947418, -0.00189753, 
-0.000474947, -0.00190205, -0.000476077, 0.00237812, 0.000949668, 
0.000474496, 0.00284226, -0.000473149, -0.000473373, 0, 0, 0.00283688, 
-0.0037843, -0.0047506, -0.00238379, -0.00286807, 0.000478583, 
0.000478354, -0.00143575, 0.00143575, 0.00238835, 0.0042847, 
0.00237248, -0.00142281, -0.00142484, 0, 0.00142484, 0.000948767, 
0.00378609, -0.000472478, 0.000472478, -0.0014181, 0, -0.000946522, 
-0.00284495, 0, 0.00331832, 0.00283554, 0.00141476, -0.00141476, 
-0.00188947, 0.00141743, -0.00236351, 0.00236351, 0.00235794, 
0.00235239, -0.000940292, -0.0014121, -0.00283019, 0.000472255, 
0.000472032, 0.000471809, -0.0014161, 0.0014161, -0.000943842, 
0.000472032, -0.000944287, -0.00094518, -0.00189304, -0.000473821, 
-0.000474046, 0.00331361, -0.000472701, -0.000946074, 0.00141878, 
-0.000945627, -0.00189394, -0.00189753, -0.0057143, -0.00143369, 
-0.00383326, 0.00143919, 0.000479272, -0.00191847, -0.000480192, 
0.000960154, 0.000479731, 0, 0.000479501, 0.000958313, -0.00383878, 
-0.00240674, 0.000963391, 0.000962464, -0.00192586, 0.000481812, 
-0.00241138, -0.00144963)), .Names = "V1", row.names = c(NA, 
-91L), class = "data.frame")

I ran the following command:

fitdist(A$V1,"norm",method="mge",gof="CvM")

and it generates the following:

Fitting of the distribution ' norm ' by maximum goodness-of-fit 
Parameters:
  estimate
1       NA
2       NA
Warning message:
In pnorm(q, mean, sd, lower.tail, log.p) : NaNs produced

given the above error message, I ran the below:

> mu=mean(A$V1)
> sigma=sd(A$V1)
> mu
[1] -0.0003091273
> sigma
[1] 0.002051825
> pnorm(A$V1,mu,sigma)
 [1] 0.0004859313 0.3778682282 0.2194235651 0.4677942525 0.2187728328
 [6] 0.4675752645 0.9048490462 0.7302272325 0.6487379052 0.9377179215
[11] 0.4681427154 0.4680993016 0.5598779146 0.5598779146 0.9373956798
[16] 0.0451612910 0.0152074342 0.1559769817 0.1061704134 0.6494763806
[21] 0.6494350178 0.2914741494 0.8024493726 0.9056899734 0.9874187360
[26] 0.9043830715 0.2936417791 0.2933012328 0.5598779146 0.8009684336
[31] 0.7300820807 0.9770270687 0.4682727654 0.6483730677 0.2944326177
[36] 0.5598779146 0.3780342225 0.1082503682 0.5598779146 0.9614622560
[41] 0.9373152170 0.7995942319 0.2949940199 0.2205866970 0.7999587855
[46] 0.1583537921 0.9036385181 0.9031740418 0.9027096003 0.3791890228
[51] 0.2954414771 0.1095934742 0.6483327428 0.6482924162 0.6482520879
[56] 0.2947687275 0.7997772412 0.3785308577 0.6482924162 0.3784483801
[61] 0.3782828856 0.2200710780 0.4680124750 0.4679688685 0.9612699580
[66] 0.4682295443 0.3781172281 0.8001429585 0.3782000541 0.2199411992
[71] 0.2194235651 0.0042152418 0.2918187280 0.0429384302 0.8029149383
[76] 0.6496008197 0.2164182554 0.4667778828 0.7319136560 0.6496837100
[81] 0.5598779146 0.6496421754 0.7316179594 0.0426934572 0.1533157552
[86] 0.7324331764 0.7322844499 0.2153633562 0.6500594259 0.1527813896
[91] 0.2891573876

So now I am confused why I got the above error message regarding NaN. Anyone have any suggestions what might be the reason and the fix?

for the cauchy distribution, I have tried the following:

`> fitdist(A$V1*10^9,"cauchy",method="mle")
Error in fitdist(A$V1 * 10^9, "cauchy", method = "mle") : 
  the function mle failed to estimate the parameters, 
                with the error code 100
In addition: Warning message:
In dcauchy(x, location, scale, log) : NaNs produced
> fitdist(A$V1*10^5,"cauchy",method="mle")
Error in fitdist(A$V1 * 10^5, "cauchy", method = "mle") : 
  the function mle failed to estimate the parameters, 
                with the error code 100
In addition: Warning message:
In dcauchy(x, location, scale, log) : NaNs produced
> fitdist(A$V1*10^5,"cauchy",method="mge",gof="CvM")
Fitting of the distribution ' cauchy ' by maximum goodness-of-fit 
Parameters:
  estimate
1       NA
2       NA
Warning message:
In pcauchy(q, location, scale, lower.tail, log.p) : NaNs produced
> fitdist(A$V1*10^5,"cauchy",method="mge",gof="AD")
Fitting of the distribution ' cauchy ' by maximum goodness-of-fit 
Parameters:
  estimate
1       NA
2       NA
Warning message:
In pcauchy(q, location, scale, lower.tail, log.p) : NaNs produced
> fitdist(A$V1*10^9,"cauchy",method="mge",gof="AD")
Fitting of the distribution ' cauchy ' by maximum goodness-of-fit 
Parameters:
  estimate
1       NA
2       NA
Warning message:
In pcauchy(q, location, scale, lower.tail, log.p) : NaNs produced
> fitdist(A$V1+10^3,"cauchy",method="mle")
Error in fitdist(A$V1 + 10^3, "cauchy", method = "mle") : 
  the function mle failed to estimate the parameters, 
                with the error code 100
In addition: Warning message:
In dcauchy(x, location, scale, log) : NaNs produced

Any suggestions on the fix for this...thanks!

share|improve this question
    
If you're going to cross-post, please have the courtesy to explicitly say so. Otherwise, answers to your question may be scattered across multiple sites. – Joshua Ulrich Jan 3 '12 at 3:36
    
alright, I'd be happy to do so. what would be helpful is a solution :-) – itcplpl Jan 3 '12 at 3:41
    
you're free to rollback my edit, but I didn't materially change your question. I just made it easier for others to reproduce your results. – Joshua Ulrich Jan 3 '12 at 3:52
up vote 5 down vote accepted

Answer below.

library(fitdistrplus)


A <- structure(list(V1 = c(-0.00707717, -0.000947418, -0.00189753, 
-0.000474947, -0.00190205, -0.000476077, 0.00237812, 0.000949668, 
0.000474496, 0.00284226, -0.000473149, -0.000473373, 0, 0, 0.00283688, 
-0.0037843, -0.0047506, -0.00238379, -0.00286807, 0.000478583, 
0.000478354, -0.00143575, 0.00143575, 0.00238835, 0.0042847, 
0.00237248, -0.00142281, -0.00142484, 0, 0.00142484, 0.000948767, 
0.00378609, -0.000472478, 0.000472478, -0.0014181, 0, -0.000946522, 
-0.00284495, 0, 0.00331832, 0.00283554, 0.00141476, -0.00141476, 
-0.00188947, 0.00141743, -0.00236351, 0.00236351, 0.00235794, 
0.00235239, -0.000940292, -0.0014121, -0.00283019, 0.000472255, 
0.000472032, 0.000471809, -0.0014161, 0.0014161, -0.000943842, 
0.000472032, -0.000944287, -0.00094518, -0.00189304, -0.000473821, 
-0.000474046, 0.00331361, -0.000472701, -0.000946074, 0.00141878, 
-0.000945627, -0.00189394, -0.00189753, -0.0057143, -0.00143369, 
-0.00383326, 0.00143919, 0.000479272, -0.00191847, -0.000480192, 
0.000960154, 0.000479731, 0, 0.000479501, 0.000958313, -0.00383878, 
-0.00240674, 0.000963391, 0.000962464, -0.00192586, 0.000481812, 
-0.00241138, -0.00144963)), .Names = "V1", row.names = c(NA, 
-91L), class = "data.frame")

#your data are very small 
summary(A$V1)

#fit dist does not converge with parameter
fitdist(A$V1,"norm",method="mge",gof="CvM")

#arguments are correctly specified
?fitdist

#equivalent call of mgedist -> same problem
mgedist(A$V1,"norm",gof="CvM")

#with uniform distribution it works
fitdist(A$V1,"unif",method="mge")

#as well as with mme and mle
fitdist(A$V1,"norm",method="mme")
fitdist(A$V1,"norm",method="mle")

#so the problem comes with the mean or the sd parameters of the normal distribution.
#as returns a result, sd is the problem
mgedist(A$V1,"norm",gof="CvM", fix.arg=list(sd=sd(A$V1)), start=list(mean=0))

#fixing a lower bound for sd returns a result
mgedist(A$V1,"norm",gof="CvM", lower=c(-1, .01))

#but the appropriate answer to your problem is to rescale your data.
#it works perfectly.
mgedist(1000*A$V1,"norm",gof="CvM", lower=c(-1, 1e-3))
#we don't even need to use lower bounds.
mgedist(1000*A$V1,"norm",gof="CvM")


#looking at the source code of mgedist, one can see, that the distance
#of Cramer von Mises is defined as follows.
fnobj <- function(par, fix.arg, obs, pdistnam) {
                n <- length(obs)
                s <- sort(obs)
                theop <- do.call(pdistnam, c(list(q = s), as.list(par), 
                  as.list(fix.arg)))
                1/(12 * n) + sum((theop - (2 * seq(1:n) - 1)/(2 * 
                  n))^2)
            }

#a NaN is produced with negative sd            
fnobj(c(1,1), NULL, A$V1, pnorm)
fnobj(c(mean=1,sd=1), NULL, A$V1, pnorm)
fnobj(c(mean=0,sd=0), NULL, A$V1, pnorm)
fnobj(c(mean=0,sd=-1), NULL, A$V1, pnorm)
share|improve this answer
    
thanks Christophe, I am trying to run the cauchy on a slightly different data set, and I have tried diff. combinations as below, but no luck. can you please let me know the fix- thanks! I have updated my original post with that info. – itcplpl Jan 3 '12 at 17:40

Looks to me as a bug inside the function mgedist called by fitdist: look at the line

if (!cens) 
    opttryerror <- try(opt <- optim(par = vstart, fn = fnobj, 
      fix.arg = fix.arg, obs = data, pdistnam = pdistname, hessian = TRUE, 
      method = meth, lower = lower, upper = upper, ...), silent = TRUE) 
else 
    stop("Maximum goodness-of-fit estimation is not yet available for censored data.")

In fact, you raise an error because the method argument is passed twice, once as a named argument, another time at the ... . The error is catched and what you receive as output is just a "default" return.

Talk to the maintainer to have it fixed.

share|improve this answer
    
that's interesting....it's the problem with mge as mme and mle work fine – itcplpl Jan 3 '12 at 4:03
    
any thoughts on what is the issue with cauchy as I tried that: fitdist(A$V1,"cauchy") Error in fitdist(A$V1, "cauchy") : the function mle failed to estimate the parameters, with the error code 100 In addition: Warning message: In dcauchy(x, location, scale, log) : NaNs produced – itcplpl Jan 3 '12 at 5:09

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.