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Please bear with me if this is rather tenuous, and feel free to ask questions if I have left anything out...

I'm attempting to do some 50 year extreme wind calculations based on the following link

http://www.wasp.dk/Products/weng/ExtremeWinds.htm

They seem to use the gumbel distribution, so I have used function gumbel in package "evir" to fit the distribution to the data, and function dgumbel in package "evd" as the plotting function.

package("evd")
package("evir")

speeds2 <- data.frame(speed=sample(10:50,1000,rep=TRUE))
gumbel(speeds2$speed)

I have then tried to plot this using ggplot2's stat_function, like so (except for now I have put in dummy values for loc and scale.

library(ggplot2)
ggplot(data=speeds2, aes(x=speed)) + 
  stat_function(fun=dgumbel, args=list(loc=1, scale=0.5))

I get the following error:

Error in dgev(x, loc = loc, scale = scale, shape = 0, log = log) : 
  unused argument(s) (loc = loc, scale = scale, shape = 0, log = log)

I am unsure if I am doing this the right way. Any pointers would be much appreciated.

share|improve this question
    
Where are you getting dgumbel? It's not a r-base distribution. And the gumbel() call throws an error even with VGAM loaded. –  BondedDust Jul 27 '11 at 16:00
    
@DWin Getting dgumbel from package evd (See: tiny.cc/8izrk). Is there a base function? –  Chris Jul 27 '11 at 16:02
    
There's no gumbel function in Contents of package:evd. –  BondedDust Jul 27 '11 at 16:05
    
@DWin gumbel is a function of package evir. The question is not really about this function as I am actually trying to plot the function dgumbel, which does belong to package evd, no? –  Chris Jul 27 '11 at 16:07
1  
That might be true if the problem were not related to the evir functions overwriting the evd functions. Try a clean session. Don't load evir (which does not have a NAMESPACE so you cannot use the ':::' operator. and then run your plot. Also you should edit you question to indicate what library or require calls are needed. –  BondedDust Jul 27 '11 at 16:17

3 Answers 3

up vote 4 down vote accepted

Earlier session showed that the parameter estimates from the gumbel call were near 24 and 11.

library(evd)
library(ggplot2)
 speeds2 <- data.frame(speed=sample(10:50,1000,rep=TRUE))
 ggplot(data=speeds2, aes(x=speed), geom="density") + 
   stat_function(fun=dgumbel, args=list(loc=24, scale=11))

If you only used the parameters of 1 and 0.5, you got a straight flat line. Loading only evd prevents conflicts with the dgumbel-related functions in evir. When you load evir second you get:

> speeds2 <- data.frame(speed=sample(10:50,1000,rep=TRUE))
> ggplot(data=speeds2, aes(x=speed), geom="density") + 
+   stat_function(fun=dgumbel, args=list(loc=24, scale=11))
Error in dgev(x, loc = loc, scale = scale, shape = 0, log = log) : 
  unused argument(s) (loc = loc, scale = scale, shape = 0, log = log)

Demonstrating how to make a call to a dgumbel function in a particular (better behaved) package:

library(VGAM)
ggplot(data = speeds2, aes(x = speed)) + 
   stat_function(fun = VGAM::dgumbel, args = list(location = 24, scale = 11))

I think Ramnath's suggestion to add the empiric 'density' is good but I prefer to use geom_histogram:

ggplot(data=speeds2, aes(x=speed)) + geom_histogram(aes(y = ..density..) , binwidth=5 ) + 
                            stat_function(fun=dgumbel, args=list(loc=24, scale=11))

enter image description here

share|improve this answer
    
Okay, so you're right about the package conflict. I have edited the question to reflect the needed packages. I was hoping to fit the gumbel distribution to my data, hence attempting to use the function from evir. Does that make sense? Is there an alternative? –  Chris Jul 27 '11 at 16:26
    
Makes sense to me. In fact, I used the knowledge gained from the earlier session's use of gumbel to substitute more meaningful values for the dgumbel call. You probably need to run 'gumbel' call, note the parameter estimates, then detach package evir, then load package evd and do you plotting. Or you could use a package with dgumbel that has a NAMESPACE. –  BondedDust Jul 27 '11 at 16:31
    
I tried gum.fit in package ismev, which seems to do the job too. Thanks for solving that one! –  Chris Jul 27 '11 at 17:01
1  
@DWin. your first solution does not plot the empirical density. you probably need to call it as ggplot(data=speeds2, aes(x=speed)) + geom_density() + stat_function(fun=dgumbel, args=list(loc=24, scale=11)). –  Ramnath Jul 27 '11 at 19:28
    
@Ramnath. Agree. Added code to do something like that, except it doesn't smooth as much as the default setting for geom_density. –  BondedDust Jul 27 '11 at 21:51

With a small, modification to your code (adding a geom) it works fine for me.

library(evd)
speeds2 <- data.frame(speed = sample(10:50, 1000, rep = TRUE))

ggplot(data = speeds2, aes(x = speed)) + 
  stat_function(fun = dgumbel, args = list(loc = 1, scale = 0.5)) +
  geom_histogram()
share|improve this answer

Here is a generic function that I wrote to simplify plotting of data with fitted and empirical densities.

# FUNCTION TO DRAW HISTOGRAM OF DATA WITH EMPIRICAL AND FITTED DENSITITES
# data  = values to be fitted
# func  = name of function to fit (e.g., 'norm', 'gumbel' etc.)
# start = named list of parameters to pass to fitting function 
hist_with_density = function(data, func, start = NULL){
    # load libraries
    library(VGAM); library(fitdistrplus); library(ggplot2)

    # fit density to data
    fit   = fitdist(data, func, start = start)
    args  = as.list(fit$estimate)
    dfunc = match.fun(paste('d', func, sep = ''))

    # plot histogram, empirical and fitted densities
    p0 = qplot(data, geom = 'blank') +
       geom_line(aes(y = ..density..,colour = 'Empirical'),stat = 'density') +
       stat_function(fun = dfunc, args = args, aes(colour = func))  +
       geom_histogram(aes(y = ..density..), alpha = 0.4) +
       scale_colour_manual(name = '', values = c('red', 'blue')) + 
       opts(legend.position = 'top', legend.direction = 'horizontal')
    return(p0)  
}

Here are two examples of how you would use it Example 1: Fit a Gumbel

data1 = sample(10:50,1000,rep=TRUE)
(hist_with_density(data1, 'gumbel', start = list(location = 0, scale = 1)))

enter image description here

Example 2: Fit a Normal Distribution

data2 = rnorm(1000, 2, 1)
(hist_with_density(data2, 'norm'))

enter image description here

share|improve this answer
    
+1 Great answer. "ops" is deprecated since ggplot2 version 0.9.1, use "theme" instead: theme(legend.position = 'top', legend.direction = 'horizontal') –  Eduardo Jul 4 at 11:00

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