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I want to summarise a very large data table by applying a list of statistical functions to every column. I want to use data.table as the previous version with plyr was working but quite slow and I read this should be much faster. I tried the following but I get

Error in { : 
task 1 failed - "task 1 failed - "second argument must be a list""

Here are the functions I tried

library(data.table)
library(e1071)
library(nortest)    

statistical_tests = list(mean, sd, kurtosis, skewness,
                        lillie.test, shapiro.test)          

summary = function(column) {
    result = mapply(do.call, statistical_tests, column)
    print(result)
    return(result)
}

analyse_fits = function(fit_df) {
    #get mean and standard deviation for the three parameters
    print(fit_df)
    setkey(fit_df, type)
    return(fit_df[, lapply(.SD, summary),
        by=type])
}                                

analyse_fits(fit_df)

example data for fit_df:

    constant         phase visibility type
1: 49927.22 -2.609797e-03  0.8690605  fft
2: 49965.89 -6.783609e-05  0.8702492  fft
3: 50026.44 -1.109387e-03  0.8680235  fft
4: 50063.78  2.640915e-04  0.8697564  fft
5: 50074.89  9.999202e-04  0.8684974  fft
6: 49964.89 -2.075373e-03  0.8708830  fft
7: 50063.56 -9.737554e-04  0.8721360  fft
8: 50044.11 -1.920089e-03  0.8722035  fft
9: 50100.67 -7.487811e-04  0.8706438  fft
10: 49962.11  4.163415e-03  0.8713016  fft
11: 49926.63 -1.473941e-03  0.8687753   ls
12: 49964.98  1.794244e-03  0.8710003   ls
13: 50025.89 -1.315459e-03  0.8698475   ls
14: 50063.40  2.891339e-04  0.8699723   ls
15: 50074.70  1.859353e-03  0.8684841   ls
16: 49964.43 -6.426037e-04  0.8706581   ls
17: 50063.47 -1.646874e-03  0.8715316   ls
18: 50043.48 -1.435637e-03  0.8713584   ls
19: 50100.36 -2.261318e-03  0.8699203   ls
20: 49961.76  3.659428e-03  0.8704063   ls

I'm sure there a good way of formatting the output to make it work, can you help me?

share|improve this question
    
As Carl said, it seems that you're calling one of the functions incorrectly. For the base functions, this works, anyway: DT[,c(list(stat=c('mean','sd')),lapply(.SD,function(x)c(mean(x),sd(x)))),by=typ‌​e]. –  Frank Aug 26 '13 at 12:08

2 Answers 2

First: use traceback() to find out which function you are calling incorrectly. That will help you properly format the inputs.

Second: if you are always calling the same set of stats functions, it'll be easier just to write a "wrapper" function (see, e.g., my cgwtools::mystat toy) which explicitly calls each stats function in turn.

share|improve this answer

I combined the approaches from Frank and Carl to write a named wrapper function and a list of names, and adding a "stat" column which I think is a neat idea.

statistical_tests = function(x) {
    return(c(
                mean(x),
                sd(x),
                kurtosis(x),
                skewness(x),
                lillie.test(x)$p.value,
                shapiro.test(x)$p.value))
}

names = c("mean", "sd",
        "kurtosis", "skewness",
        "normality.p.value.lilliefors",
        "normality.p.value.shapiro")

analyse_fits = function(fit_df) {
    #get mean and standard deviation for the three parameters
    setkey(fit_df, type)
    result = fit_df[, c(list(stat=names), lapply(.SD, statistical_tests)), by=type]
    setkeyv(result, c("stat", "type"))
    return(result)
}                                      
share|improve this answer
    
+1 I haven't run or tested but just looking at it, for speed, it's normally best to keep j as simple as possible and take out any constants from it (e.g. the stat=names part), then reshape/name afterwards. Or maybe just see how much faster fit_df[,lapply(.SD,statistical_tests),by=type] is first to see if it's worth rearranging it. –  Matt Dowle Aug 27 '13 at 8:44

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