I am trying to create a specialized summary 'matrix' for my supervisor, and would like R to export it in a clean, readable form. As such, I am creating it from scratch basically, to tailor it to our project. My problem is I can't figure out how to get a created data frame to behave like an imported one, specifically headers.
I am most comfortable dealing with imported data frames with headers, and calling specific rows by name instead of column number:
iris$Sepal.Length with(iris,Sepal.Length) iris['Sepal.Length']
Now, if I want to create a data frame (or matrix, I'm not entirely sure what the difference is), I have tried the following:
groups<-c("Group 1", "Group 2") factors<-c("Fac 1", "Fac 2", "Fac 3","Fac 4", "Fac 5") x<-1:10 y<-11:20 z<-21-30 data<-cbind(groups, factors, x, y, z) names(data) #returns NULL data$x #clearly doesn't return the column 'x' since the matrix 'data' has no names data<-data.frame(cbind(groups, factors, x, y, z)) names(data) #confirms that there are header names
So, I have created a data frame that has the columns x, y and z, but in reality I don't have a premade column to start off with. If I knew how many rows of data there would be I could simply do:
data<-data.frame(1:10) data$x<-x data$y<-y data$z<-z
I tried creating an empty data frame, but it is one element big, and if I try to append a vector to it (of any length greater than 1), I get an error:
data<-data.frame(0) data$x<-x #returns an error
My best guess at what to do is to pass through the data once to find out how long many rows of data I will have (there are several factor levels, and the summary matrix will have a row for each possible combination of factors). Then I can get the data frame started with a simple:
data<-data.frame(length(n)) #where n would be how many rows of data I would have
And follow through by creating individual vectors for each summary statistic I want and appending it to the data frame with ~$~.
Another solution I tried to play with was creating a matrix and filling in each element as I calculate it within a loop. I know the apply family is better than a loop, but to make my summary table tailored to my needs I would need to run an apply function then try to pull the individual data:
means<-with(iris,tapply(iris[,4],Species,mean)) means #This returns the species and the mean petal width. What I need is the numeric part of this, as I will have my own headers, or possibly a separate summary table for each species.
I'm not sure if extracting the numerical information from the apply output is better / any easier than simply constructing my own loop to calculate the required statistics. It would be a nested loop that would first sort by group (2 runs), then an internal loop that would run by factors (5 runs) for a total of 10 runs through the data. I was thinking of creating an empty martix, and simply saving the data in the appropriate cell when it is calculated. My problem, again, is calling a specific row in a matrix. I have tried:
m<-matrix(0,ncol=5) m[1,1]<-'Groups' m[1,2]<-'Factors' m[1,3]<-'Mean.x' m[1,4]<-'Mean.y' m[1,5]<-'Mean.z' names(m) #Returns NULL
My desired output would look like:
Groups Factors Mean.x Mean.y Mean.z Group 1 Fac 1 Group 1 Fac 2 Group 1 Fac 3
Etc, for all combinations of groups and factors.