I have a dataframe with lots of possible combinations of variables and for exploratory purposes I need to see univariate distributions from these combinations of variables. I succeeded doing it with for loops but would like to find a better and a faster way of doing it. Anybody has an idea?
I have produced a following code:
library(ggplot2)
library(dplyr)
SubjectID <- c(3772113,3772468)
Group <- c("Easy","Hard")
Object <- c("A","B")
dat <- data.frame(expand.grid(SubjectID,Group,Object))
dat$RT <- rnorm(8,1500,700)
colnames(dat) <- c("SubjectID","Group","Object","RT")
# GGplot function
pl <- function(x,group, object){
x <- filter(x, Group==group, Object==object)
print(ggplot(x,aes(x=RT)) +
geom_histogram(binwidth = 0.05) +
xlab("Reactions per second") +
ggtitle(paste(as.character(group),"_",as.character(object)), sep=""))
ggsave(paste(as.character(group),"_",as.character(object),".png"), path = "...")
}
for (group in unique(dat$Group)){
for (object in unique(dat$Object)){
pl(dat,group,object)
}
}
How can I replace the nested for loops in this graph printing?
dat
instead ofsp
(otherwise not reproducible). Also, I think yourpaste
line should finish with,".png", sep="")
orpaste
be turned intopaste0
otherwise spaces are added in the filenames.