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I want to generate graphs between variables (columns) that have a correlation above and below a certain point as well as having a pvalue < 0.01. The graphs would be ggplot2 (line or bar) graphs plotting the two columns (variables) that correlate.

Here is the gist of my approach so far, with some dummy data, I would love a pointer in where to go next.

# Create some dummy data
df <- data.frame(sample(1:50), sample(1:50), sample(1:50), sample(1:50))
colnames(df) <- c("var1", "var2", "var3", "var4")

# Find correlations in the dummy data
df.cor <- cor(df)

# Make up some random pvalues for this example
x <- 0:1000
df.cor.pvals <- data.frame(sample(x/1000, 4), sample(x/1000, 4), sample(x/1000, 4), sample(x/1000,4))
colnames(df.cor.pvals) <- c("var1", "var2", "var3", "var4")

# Find the significant correlations
df.cor.extreme <- ((df.cor < -0.01 | df.cor > 0.01) & df.cor.pvals < 0.5)

# Ready data to for plotting
df$rownames <- rownames(df)
df.melt <- melt(df, id="rownames")

# I want to plot the combinations of variables that have a TRUE value
# in the df.cor.extreme matrix 

Below is hardcoded example if var1 and var2 had a value of TRUE. I assume this is where I need some sort of loop to generate multiple plots where varA and varB are correlated.

ggplot(df.melt[(df.melt$variable=="var1" | df.melt$variable=="var2"),], aes(x=rownames, y=value, group=variable, colour=variable)) +
  geom_line()

Example plot

share|improve this question
3  
I don't understand why your data frame of p-values, df.cor.pvals, has 50 rows - shouldn't it be the same shape as df.cor? –  Drew Steen Dec 28 '12 at 5:31
1  
You can get the matrix of correlations you're looking for using df.cor.extreme <- df.cor < -0.01 | df.cor > 0.01 –  Drew Steen Dec 28 '12 at 5:38
    
Fixed my dummy data and incorporated your suggestion using the single logical operators. Have also put in the first steps of graphing, just can't automate graphs for those TRUE values in the df.cor.extreme matrix. –  themartinmcfly Dec 28 '12 at 5:59
    
@themartinmcfly I still confused about your final plot. You want to plot the original values when certain condition is satisfied. if cond(v1,v2) is ok , plot(what?) plot(v1)? plot(v1 vs v2)?? –  agstudy Dec 28 '12 at 8:47
    
@agstudy My final plot is just an example if var1 and var2 happened to correlate. I want to plot every correlation that is significant. By multiple plots I mean a separate plot that compares the two correlating variables. The matrix df.cor.extreme (or df.core.sig in your example) contains the data saying which correlations are significant, but I am stuck on how to transfer this data into code that will generate plots for all of the correlations (the data set I am looking at will have 150+ plots). –  themartinmcfly Dec 28 '12 at 9:59

2 Answers 2

up vote 8 down vote accepted

As said in the comment by @DrewSteen , p-avlue must be the same shape of cor.

Here I supply a function that compute p-value matrix( it should exist a build-in function, in stats package)

pvalue.matrix <- function(x,...){
  ncx <- ncol(x)
  r <- matrix(0, nrow = ncx, ncol = ncx)
  for (i in seq_len(ncx)) {
    for (j in seq_len(i)) {
      x2 <- x[, i]
      y2 <- x[, j]
      r[i, j] <-  cor.test(x2,y2,...)$p.value
    }
  }
  r <- r + t(r) - diag(diag(r))
  rownames(r) <- colnames(x)
  colnames(r) <- colnames(x)
  r
}

Then you use the vectorize version of | and & like this

df.cor.sig <- (df.cor > 0.01 | df.cor < -0.01) & pvalue.matrix(df) < 0.5

the plot is classic with geom_tile

library(reshape2) ## melt
library(plyr)     ## round_any
 library(ggplot2) 
dat <- expand.grid(var1=1:4, var2=1:4)
dat$value <- melt(df.cor.sig)$value
dat$labels <- paste(round_any(df.cor,0.01) ,'(', round_any(pvalue.matrix(df),0.01),')',sep='')
ggplot(dat, aes(x=var1,y=var2,label=labels))+ 
  geom_tile(aes(fill = value),colour='white')+
 geom_text()

enter image description here

Edit after OP clarification

plots <- apply(dat,1,function(x){
    plot.grob <- nullGrob()
    if(length(grep(pattern='TRUE',x[3])) >0 ){
      gg <- paste('var',c(x[1],x[2]),sep='')
      p <- ggplot(subset(df.melt,variable %in% gg ), 
            aes(x=rownames, y=value, group=variable, colour=variable)) +
            geom_line()
      plot.grob <- ggplotGrob(p)
    }
    plot.grob

})


library(gridExtra)
do.call(grid.arrange,  plots)

enter image description here

share|improve this answer
    
This is so close to what I am looking for, I am going to experiment into expand.grid more. I think if I could get a data frame like variable1, variable2, significant; var1, var2, TRUE; var1, var3, FALSE I would have a list of which correlations to graph and just need to loop or similar –  themartinmcfly Dec 28 '12 at 6:34
    
@themartinmcfly you prefer to get data not the plot? can you append your answer with what you expect as data.frame? –  agstudy Dec 28 '12 at 6:35
1  
Nice answer. I was not familiar with the 'round_any' function. So, I would only add for others in the same boat that you appear to be using the ggplot2, reshape2 and plyr packages to create the plot. –  Mark Miller Dec 28 '12 at 6:37
    
@agstudy, I am looking for multiple plots, one for each significant correlation between variables. I was surmising that a data frame with that data could be the next step –  themartinmcfly Dec 28 '12 at 6:37
    
@MarkMiller thanks! I use the 3 packages! I forget to add it because I use it wasn't the origin question. I add the text just to check my answer. I update my answer . –  agstudy Dec 28 '12 at 6:40

Just wanted to add an addition to @agstudy 's answer if you are doing this yourself.

If you play with the results of the function that generates a table of matrix indexes that you can apply the significance to. I.e. this line:

dat <- expand.grid(var1=1:4, var2=1:4)

Also remember that the hardcoded 4's in the line above are the length of your (square) grid. Anyway, you can ignore the generation of any duplicate graphs by doing some code like so:

# Find redunant pairs
dat <- data.frame(t(apply(dat, 1, function(x){
  if(x[1]-x[2] <= 0) {    # If > zero than pair has come before.
    -x                    # If = zero than pair is same 
  } else x
})))

# Remove redundant pairs
dat <- dat[dat$var1>0,]

Enjoy!

share|improve this answer
    
+1 gladthat this helps! –  agstudy Feb 26 '13 at 7:01

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