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 would like to get equal length output using:

sapply(df, summary)

where

df = data.frame(x = 1:10 , y = rep(10:11, 5) , z = c(1:4, NA, NA, NA, 3:5))

With sapply(dd, summary) I got

$x
   Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 
   1.00    3.25    5.50    5.50    7.75   10.00 
$y
   Min. 1st Qu.  Median    Mean 3rd Qu.    Max. 
   10.0    10.0    10.5    10.5    11.0    11.0 
$z
   Min. 1st Qu.  Median    Mean 3rd Qu.    Max.    NA's 
  1.000   2.500   3.000   3.143   4.000   5.000       3 

My problem is that it provides the length of NA's for columns with at least one NA and nothing otherwise. I would like to get equal length output, preferably with the number of NA's being 0 if a column has no missing.

I would like to get something like this>

          x     y      z        
 Min.    1.00   10.0   1.000  
 1st Qu. 3.25   10.0   2.500  
 Median  5.50   10.5   3.000  
 Mean    5.50   10.5   3.143  
 3rd Qu. 7.75   11.0   4.000  
 Max.    10.00  11.0   5.000  
 NA's    0      0      3    
share|improve this question
up vote 2 down vote accepted

Adapt the summary function (enter summary.default to see it):

mysummary <- function (object, ..., digits = max(3L, getOption("digits") - 
                                                   3L)) 
{
  if (is.factor(object)) 
    return(summary.factor(object, ...))
  else if (is.matrix(object)) 
    return(summary.matrix(object, digits = digits, ...))
  value <- if (is.logical(object)) 
    c(Mode = "logical", {
      tb <- table(object, exclude = NULL)
      if (!is.null(n <- dimnames(tb)[[1L]]) && any(iN <- is.na(n))) dimnames(tb)[[1L]][iN] <- "NA's"
      tb
    })
  else if (is.numeric(object)) {
    nas <- is.na(object)
    object <- object[!nas]
    qq <- stats::quantile(object)
    qq <- signif(c(qq[1L:3L], mean(object), qq[4L:5L]), digits)
    names(qq) <- c("Min.", "1st Qu.", "Median", "Mean", "3rd Qu.", 
                   "Max.")
   # if (any(nas)) 
      c(qq, `NA's` = sum(nas))
   # else qq
  }
  else if (is.recursive(object) && !is.language(object) && 
             (n <- length(object))) {
    sumry <- array("", c(n, 3L), list(names(object), c("Length", 
                                                       "Class", "Mode")))
    ll <- numeric(n)
    for (i in 1L:n) {
      ii <- object[[i]]
      ll[i] <- length(ii)
      cls <- oldClass(ii)
      sumry[i, 2L] <- if (length(cls)) 
        cls[1L]
      else "-none-"
      sumry[i, 3L] <- mode(ii)
    }
    sumry[, 1L] <- format(as.integer(ll))
    sumry
  }
  else c(Length = length(object), Class = class(object), Mode = mode(object))
  class(value) <- c("summaryDefault", "table")
  value
}

and use

lapply(df, mysummary)

or

sapply(df, mysummary)
share|improve this answer

I would simply do

temp <- sapply(df, function(x) summary(c(x, NA)))
temp[dim(temp)[1], ] <- temp[dim(temp)[1], ] - 1 

            x    y     z
Min.     1.00 10.0 1.000
1st Qu.  3.25 10.0 2.500
Median   5.50 10.5 3.000
Mean     5.50 10.5 3.143
3rd Qu.  7.75 11.0 4.000
Max.    10.00 11.0 5.000
NA's     0.00  0.0 3.000
share|improve this answer

This could work too.

> s <- sapply(df, summary)
> sapply(s, function(x){
      if(!length(x)==7) x[7] <- 0; names(x)[7] <- "NA's"; x 
  })
#             x    y     z
# Min.     1.00 10.0 1.000
# 1st Qu.  3.25 10.0 2.500
# Median   5.50 10.5 3.000
# Mean     5.50 10.5 3.143
# 3rd Qu.  7.75 11.0 4.000
# Max.    10.00 11.0 5.000
# NA's     0.00  0.0 3.000
share|improve this answer
    
I think this is simple and pretty straight forward. – Duna Jun 23 '14 at 11:18

Without using a loop:

s1 <- summary(df)
library(stringr)
#Extract numeric values with regular expression
val <- as.numeric(gsub(".*\\: ?","",s1))
val[is.na(val)] <- 0 #change NAs' to 0
#Extract string up to `:` and remove the leading and trailing space with ?str_trim
rowNm <- str_trim(gsub("^(.* ?)\\:.*","\\1",s1)[,3])
colNm <-  str_trim(colnames(s1))
#Create matrix with extracted values
s2 <- matrix(val,7,3, dimnames=list(rowNm,colNm))
 s2
            x    y     z
Min.     1.00 10.0 1.000
1st Qu.  3.25 10.0 2.500
Median   5.50 10.5 3.000
Mean     5.50 10.5 3.143
3rd Qu.  7.75 11.0 4.000
Max.    10.00 11.0 5.000
NA's     0.00  0.0 3.000
share|improve this answer

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.