to extract the R^2 value from an 'lm' object named 'm'

`summary(m)$r.squared`

you can always view the structure of an object in R by using the `str()`

function; in this situation you want `str(summary(m))`

However, it's not clear what you're trying to accomplish here. In the formula argument of the `lm()`

function you specify `selectionArray ~ 0`

, which doesn't make sense for two reasons: 1) as previously hinted at, a 0 on the right side of the formula corresponds to a model where your predictor variable is a vector of zeros and the beta coefficient corresponding to this predictor cannot be defined. 2) Your outcome, selectionArray, is a matrix. As far as I know, `lm()`

isn't set up to have multiple outcomes.

Are you attempting to test the significance that each column of selectionArray differs from a 0? If so, ANY column with at least one success (1) in it is significantly different from a 0 column. If you're interested in the confidence intervals for the probability of success in each column, use the following code. Note that this does not adjust for multiple comparisons.

First let's start with a toy example to demonstrate the concept

```
v1 <- rbinom(100,size=1,p=.25)
#create a vector, length 100,
#where each entry corresponds to the
#result of a bernoulli trial with probability p
binom.test(sum(v1), n=length(v1), p = 0)
##let's pretend we didn't just generate v1 ourselves,
##we can use binom.test to determine the 95% CI for p
#now in terms of what you want to do...
#here's a dataset that might be something like yours:
selectionArray <- sapply(runif(10), FUN=function(.p) rbinom(100,size=1,p=.p))
#I'm just generating 10 vectors from a binomial distribution
#where each entry corresponds to 1 trial and each column
#has a randomly generated p between 0 and 1
#using a for loop
#run a binomial test on each column, store the results in binom.test.results
binom.test.results <- list()
for(i in 1:ncol(selectionArray)){
binom.test.results[[i]] <- binom.test(sum(selectionArray[,i]),
n=nrow(selectionArray), p=0)
}
#for loops are considered bad programming in r, so here's the "right" way to do it:
binom.test.results1 <- lapply(as.data.frame(selectionArray), function(.v){
binom.test(sum(.v), n=nrow(selectionArray), p = 0)
})
#using str() on a single element of binom.test.result will help you
#identify what results you'd like to extract from each test
```