# fitting a distribution graphically

I am running some tests to try and determine what distribution my data follows. By the look of the density of my data I thought it looked a bit like a logistic distribution. I than used the package MASS to estimate the parameters of the distribution. However when I graph them together although better than the normal, the logistic is still not very good..Is there a way to find what distribution would go better? Thank you for the help !

``````library(quantmod)
getSymbols("^NDX",src="yahoo", from='1997-6-01', to='2012-6-01')
daily<- allReturns(NDX) [,c('daily')]
dailySerieTemporel<-ts(data=daily)
x<-na.omit(dailySerieTemporel)

library(MASS)
(xFit<-fitdistr(x,"logistic"))
#      location        scale
#   0.0005210570   0.0106366354
#  (0.0002941922) (0.0001444678)
xFitEst<-coef(xFit)

plot(density(x))
set.seed(125)
lines(density(rlogis(length(x), xFitEst['location'], xFitEst['scale'])), col=3)
lines(density(rnorm(length(x), mean(x), sd(x))), col=2)
``````
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Please add `library()` statements for all required packages in your code. I guess you also use `xts` or `quantmod` in here? –  Andrie Aug 6 '12 at 14:27
Thanks for the reminder! I believe quantmod automaticly loads the other ones it uses! I modified a bit my question, as I managed to graph what I have done sofar! –  jeremy.staub Aug 6 '12 at 14:32
Here is a similar question stats.stackexchange.com/questions/33115/… –  Seth Aug 6 '12 at 15:42

This is elementary R: `plot()` creates a new plotting canvas by default, and you should use a command such as `lines()` to add to an existing plot.

``````plot(density(x))