# NOT RUN {
set.seed(1)
describe(runif(200),dig=2)    #single variable, continuous
                              #get quantiles .05,.10,\dots
dfr <- data.frame(x=rnorm(400),y=sample(c('male','female'),400,TRUE))
describe(dfr)
# }
# NOT RUN {
options(grType='plotly')
d <- describe(mydata)
p <- plot(d)   # create plots for both types of variables
p[[1]]; p[[2]] # or p$Categorical; p$Continuous
plotly::subplot(p[[1]], p[[2]], nrows=2)  # plot both in one
plot(d, which='categorical')    # categorical ones
d <- sas.get(".","mydata",special.miss=TRUE,recode=TRUE)
describe(d)      #describe entire data frame
attach(d, 1)
describe(relig)  #Has special missing values .D .F .M .R .T
                 #attr(relig,"label") is "Religious preference"
#relig : Religious preference  Format:relig
#    n missing  D  F M R T distinct 
# 4038     263 45 33 7 2 1        8
#
#0:none (251, 6%), 1:Jewish (372, 9%), 2:Catholic (1230, 30%) 
#3:Jehovah's Witnes (25, 1%), 4:Christ Scientist (7, 0%) 
#5:Seventh Day Adv (17, 0%), 6:Protestant (2025, 50%), 7:other (111, 3%) 
# Method for describing part of a data frame:
 describe(death.time ~ age*sex + rcs(blood.pressure))
 describe(~ age+sex)
 describe(~ age+sex, weights=freqs)  # weighted analysis
 fit <- lrm(y ~ age*sex + log(height))
 describe(formula(fit))
 describe(y ~ age*sex, na.action=na.delete)   
# report on number deleted for each variable
 options(na.detail.response=TRUE)  
# keep missings separately for each x, report on dist of y by x=NA
 describe(y ~ age*sex)
 options(na.fun.response="quantile")
 describe(y ~ age*sex)   # same but use quantiles of y by x=NA
 d <- describe(my.data.frame)
 d$age                   # print description for just age
 d[c('age','sex')]       # print description for two variables
 d[sort(names(d))]       # print in alphabetic order by var. names
 d2 <- d[20:30]          # keep variables 20-30
 page(d2)                # pop-up window for these variables
# Test date/time formats and suppression of times when they don't vary
 library(chron)
 d <- data.frame(a=chron((1:20)+.1),
                 b=chron((1:20)+(1:20)/100),
                 d=ISOdatetime(year=rep(2003,20),month=rep(4,20),day=1:20,
                               hour=rep(11,20),min=rep(17,20),sec=rep(11,20)),
                 f=ISOdatetime(year=rep(2003,20),month=rep(4,20),day=1:20,
                               hour=1:20,min=1:20,sec=1:20),
                 g=ISOdate(year=2001:2020,month=rep(3,20),day=1:20))
 describe(d)
# Make a function to run describe, latex.describe, and use the kdvi
# previewer in Linux to view the result and easily make a pdf file
 ldesc <- function(data) {
  options(xdvicmd='kdvi')
  d <- describe(data, desc=deparse(substitute(data)))
  dvi(latex(d, file='/tmp/z.tex'), nomargins=FALSE, width=8.5, height=11)
 }
 ldesc(d)
# }
Run the code above in your browser using DataLab