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I'm new to plotting in R so I ask for your help. Say I have the following matrix.

mat1 <- matrix(seq(1:6), 3)
dimnames(mat1)[[2]] <- c("x", "y")
dimnames(mat1)[[1]] <- c("a", "b", "c")
  x y
a 1 4
b 2 5
c 3 6

I want to plot this, where the x-axis contains each rowname (a, b, c) and the y-axis is the value of each rowname (a = 1 and 4, b = 2 and 5, c = 3 and 6). Any help would be appreciated!

|     o
|   o x
| o x
| x
  a b c
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BTW, good job on reading the links I gave you and rewriting your question in a much better form. As you can see below from the answers below and your upvotes, it paid dividends! :) – joran Nov 26 '12 at 21:31
I will get the hang of it :) Thank you for the guidance. – Stephen Nov 26 '12 at 21:38

Here's one way using base graphics:

plot(c(1,3),range(mat1),type = "n",xaxt ="n")
points(1:3,mat1[,1],pch = "x")
axis(1,at = 1:3,labels = rownames(mat1))

enter image description here

Edited to include different plotting symbol

share|improve this answer
Is there any way to make the x-axis labels vertical? – Stephen Nov 26 '12 at 21:50
@user1854603 Do you mean the y axis labels? Otherwise I'm note sure what you mean. – joran Nov 26 '12 at 21:50
@user1854603 Play around with the las argument, like this: plot(1:3, las=1); plot(1:3, las=2) and so on up to las=4. (FWIW, axis() also takes an las argument.) – Josh O'Brien Nov 26 '12 at 21:52
@joran Like, the "a" would look like it's on its side. The rownames of the actual matrix I'm using are several letters long, and cramming it as is causes overlap. – Stephen Nov 26 '12 at 21:53
@user1854603 Josh's comment has got you covered, then. – joran Nov 26 '12 at 21:57

matplot() was designed for data in just this format:

matplot(y = mat1, pch = c(4,1), col = "black", xaxt ="n",
        xlab = "x-axis", ylab = "y-axis")
axis(1, at = 1:nrow(mat1), labels = rownames(mat1))             ## Thanks, Joran

enter image description here

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...and you can do the same thing as I did with xaxt and axis to label the x axis with letters. – joran Nov 26 '12 at 21:30
@joran -- Good. I added that and a hat-tip to you. – Josh O'Brien Nov 26 '12 at 21:37
So something like matplot(mat1, xaxt='n'); axis(1, at=1:nrow(mat1), labels=rownames(mat1)); – user295691 Nov 26 '12 at 21:39

And finally, a lattice solution

dfmat <- as.data.frame(mat1)
xyplot( x + y ~ factor(rownames(dfmat)), data=dfmat, pch=c(4,1), cex=2)

enter image description here

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+1 for poor old neglected lattice--which I still find to be the best data-exploration tool for plots. – Ari B. Friedman Nov 27 '12 at 3:20
@AriB.Friedman - For my personal education, what does lattice have over ggplot as a data-exploration tool? – Drew Steen Nov 27 '12 at 14:21
@DrewSteen I find the syntax to be a little more intuitive for slicing and dicing up data. ggplot has qplot, but I still find lattice functions faster to add grouping-by-color and grouping-by-trellising. Also shingles are brilliant: dfmat <- data.frame( x=seq(18), y=seq(18), z= rep(seq(3),6), a=runif(18) ); xyplot( x+y~factor(z)|equal.count(a,3),data=dfmat ) – Ari B. Friedman Nov 27 '12 at 15:31
Good to know, thanks. – Drew Steen Nov 27 '12 at 16:23
@DrewSteen lattice is also faster than ggplot, especially for faceted plots, at least for the time being ... – Ben Bolker Nov 28 '12 at 16:28

You could do it in base graphics, but if you're going to use R for much more than this I think it is worth getting to know the ggplot2 package. Note that ggplot2 only takes data frames - but then, it is often more useful to keep your data in data frames rather than matrices.

d <- as.data.frame(mat1) #convert to a data frame
d$cat <- rownames(d) #add the 'cat' column
dm <- melt(d, id.vars)
dm #look at dm to get an idea of what melt is doing

ggplot(dm, aes(x=cat, y=value, shape=variable)) #define the data the plot will use, and the 'aesthetics' (i.e., how the data are mapped to visible space)
  + geom_point() #represent the data with points

enter image description here

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