# Summary statistics of numerial and 2 factor variables (what would these commands in SAS be in R?)

I am new to R - I am used to using SAS.I have a dataset with a lot of variables, where three variables are, age, sex, and agegroup. I am trying to generate summary statistics (mean, median, Q1-Q3, sd) of the variable age, in the sex and agegroup variables. I.e. the summary statistics for age in females (sex=0) in agegroup 1, and then agegroup 2 etc, and the same for males (sex=1).

In SAS, I would use:

``````proc univariate data=mydata;
var age;
class agegroup;
class sex;
run;
``````

What would this be in R?

Also, what's equal to SAS' `npar1way` in R? e.g.

``````proc npar1way data=mydata;
where minutes ne 9;
var minutes;
class sex;
run;`
``````

where minutes not equal to 9 because 9 are missing values. How do I do this in R?

-
look at `?ddply` in the `plyr` package and `?summarise` –  user1317221_G Sep 23 '12 at 12:12
Also look at `[` and `! is.na()` for eliminating the missings. –  Ari B. Friedman Sep 23 '12 at 12:34
What have you done in R already, and what are the problems you are facing? Please provide a reproducible R example. –  Paul Hiemstra Sep 23 '12 at 12:35

``````# In R, missing values are denoted by "NA" instead of the number 9.

# save this data in a text file
age agegroup sex
1 agegroup1 male
2 agegroup2 female
3 agegroup3 male
5 agegroup1 female
7 agegroup2 male
8 agegroup3 female
1 agegroup3 male
2 agegroup2 female
3 agegroup1 male

# Set the working directory to the location of the data file using the function
setwd("PATH OF THE DIRECTORY")

data
data\$sex <- factor(data\$sex, levels = c('male', 'female'), ordered=TRUE)
data\$agegroup <- factor(data\$agegroup, levels = c('agegroup1', 'agegroup2', 'agegroup3'), ordered=TRUE)

# Know the structure of your data
str(data)

# Summary of the data
summary(data)

# Std. Dev. of the variable "age"
std.dev.age <- sd(data\$age)
std.dev.age

# Summary of three variables in a table form
table(data)

# Plot a dodged bar chart with age ~ sex + agegroup
library("ggplot2")

ggplot(data = data, aes(x = sex, y = age, ymin=0, ymax=8, fill = agegroup)) + geom_bar(position="dodge", stat="identity", width=0.50) + scale_fill_manual(values=c("red", "green", "blue")) + labs (x = "", y= "age(years)",  fill=" ")
``````
-

You can use `aggregate` function in `R` to split the data into subsets, to compute summary statistics for each subset, and to return the result in a convenient form.

``````> age <- runif(100, 20, 60)
> sex <- sample(c(0, 1), 100, replace = T)
> agegroup <- sample(1:3, 100, replace = T)
# create some data
``````

You then can compute the quantiles for subsets grouped by `sex` and `agegroup` as

``````> aggregate(x=age, by=list(sex=sex, agegroup=agegroup), FUN="quantile")
sex agegroup     x.0%    x.25%    x.50%    x.75%   x.100%
1   0        1 26.70523 31.75807 37.09244 46.49449 59.77582
2   1        1 20.68903 34.49182 45.66960 48.69480 54.90620
3   0        2 20.22123 33.22948 40.57074 47.32490 58.85273
4   1        2 23.50579 31.38165 35.69254 45.13376 50.68572
5   0        3 23.46469 29.72909 42.53047 46.93867 58.30279
6   1        3 20.64256 27.22600 39.70127 48.66251 59.61565
``````

or compute the mean

``````> aggregate(x=age, by=list(sex=sex, agegroup=agegroup), FUN="mean")
sex agegroup        x
1   0        1 39.95470
2   1        1 41.53341
3   0        2 40.53606
4   1        2 37.32189
5   0        3 40.68784
6   1        3 38.74829
``````

Similar for standard deviation or variance or other statistics you want to compute for each subset.

-
``````# make some test data
age <- runif(100, 20, 60)
sex <- sample(c(0, 1), 100, replace = T)
agegroup <- sample(1:3, 100, replace = T)
test <- data.frame(age,sex,agegroup)

# define a new summary function to include the SD as well
# otherwise you will just get mean,median,min,max,Q1-Q3.
newsummary <- function(x) {c(summary(x),SD=sd(x))}

# get the summary stats by each agegroup/sex combo
by(test\$age,test[c("sex","agegroup")],newsummary)
``````

Results look like this, which is an output in a list format.

``````> by(test\$age,test[c("sex","agegroup")],newsummary)
sex: 0
agegroup: 1
Min.  1st Qu.   Median     Mean  3rd Qu.     Max.       SD
22.07000 27.72000 38.36000 38.41000 48.02000 54.93000 11.50681
------------------------------------------------------------
sex: 1
agegroup: 1
Min.  1st Qu.   Median     Mean  3rd Qu.     Max.       SD
24.36000 38.20000 44.96000 44.55000 52.95000 58.03000 10.70105
------------------------------------------------------------
sex: 0
agegroup: 2
Min.  1st Qu.   Median     Mean  3rd Qu.     Max.       SD
21.52000 28.54000 36.75000 38.52000 49.45000 57.12000 12.26674
------------------------------------------------------------
sex: 1
agegroup: 2
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.      SD
20.0900 26.9900 31.7700 35.9800 44.6200 57.3500 11.9548
------------------------------------------------------------
sex: 0
agegroup: 3
Min. 1st Qu.  Median    Mean 3rd Qu.    Max.      SD
20.5100 30.4300 39.6300 39.4100 47.4100 57.6000 11.9816
------------------------------------------------------------
sex: 1
agegroup: 3
Min.  1st Qu.   Median     Mean  3rd Qu.     Max.       SD
20.04000 25.01000 36.03000 37.58000 47.81000 59.65000 13.14822
``````
-
`with(test,by(age,c(sex,agegroup),newsummary))` might work (but not tested) –  Ben Bolker Sep 23 '12 at 23:33
@BenBolker - close, the grouping variables need to be a list so `with(test,by(age,list(sex,agegroup),newsummary))` will work. –  thelatemail Sep 24 '12 at 1:04