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This is code used to compute descriptive statistics

densities <- abs(rnorm(100,mean = 15000, sd = 11600)) #just a vector of nonzero normal data

#run through descriptive statistics

function.names <- c("mean","quantile","IQR","sd","max","min","median")
for (i in 1:length(function.names)){
  assign("fun1", get(function.names[i]) )
  assign(paste("data_", function.names[i], sep=""), fun1(densities))
  rm(fun1) #start over
}

range <- max(densities)-min(densities) #range
pearson_mode_skewness = (mean(densities)- median(densities)/sd(densities))
df_desc <- data.frame(function.names, paste("data_", function.names, sep="")) #plot in a dataframe/cell array


df_desc

> df_desc
  function.names paste..data_...function.names..sep......
1           mean                                data_mean
2       quantile                            data_quantile
3            IQR                                 data_IQR
4             sd                                  data_sd
5            max                                 data_max
6            min                                 data_min
7         median                              data_median

==========

I'm looking to loop through all of these descriptive statistics. I may need to include more functions later, so I made it an expandable function vector. How can I make an effective summary slide that hosts the values in the 2nd column, as shown above. I would like the values of each function (and for multi-result stats it'd be nice to be truncated into a string.) I plan on turning this into a function for use on multiple vectors of densities (and their subsamples).

\ Thanks in advance!

EDIT: current working code based on answer

#DESCRIPTIVE STATS
descriptive_table <- function(data){
  funlist <- list(mean,quantile,IQR,sd,max,min,median)
  temp <- cbind(c("mean","quantile","IQR","sd","max","min","median"), lapply(funlist, function(fn) fn(data)))
  colnames(temp) <- c("Statistic", "Value")
  descriptives <- rbind(temp, c("range",max(data)-min(data)),
                        c("Pearson Mode Skewness", (mean(data)- median(data)/sd(data))) )
  print(descriptives)
}
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1 Answer 1

up vote 2 down vote accepted

Here's a better strategy:

> funlist <- list(mean,quantile,IQR,sd,max,min,median)
> vals <-lapply(funlist, function(fn) fn(densities) )
[[1]]
[1] 16291.04

[[2]]
       0%       25%       50%       75%      100% 
  195.831  7080.740 16736.867 23635.907 46913.716 

[[3]]
[1] 16555.17

[[4]]
[1] 10831.34

[[5]]
[1] 46913.72

[[6]]
[1] 195.831

[[7]]
[1] 16736.87

If you wanted to later name those functions you would be out of luck since you (or I) didn't name them comeing in. so this might be more careful:

funlist2 <- list(mean=mean,quantile=quantile,IQR=IQR, 
                sd=sd,max=max,min=min,median=median)
vals <- lapply(funlist2, function(fn) fn(densities) )
names(vals) <- names( funlist2)
share|improve this answer
    
very helpful! thanks –  user2438134 Jun 29 '13 at 7:48

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