I've found this issue with t-tests and chi-squared in R but I assume this issue applies generally to other tests. If I do:

```
a <- 1:10
b <- 100:110
t.test(a,b)
```

I get: `t = -64.6472, df = 18.998, p-value < 2.2e-16`

. I know from the comments that `2.2e-16`

is the value of `.Machine$double.eps`

- the smallest floating point number such that `1 + x != 1`

, but of course R can represent numbers much smaller than that. I know also from the R FAQ that R has to round floats to 53 binary digits accuracy: R FAQ.

A few questions: (1) am I correct in reading that as 53 binary digits of *precision* or are values in R `< .Machine$double.eps`

not calculated accurately? (2) Why, when doing such calculations does R not provide a means to display a smaller value for the p-value, even with some loss of precision? (3) Is there a way to display a smaller p-value, even if I lose some precision? For a single test 2 decimal significant figures would be fine, for values I am going to Bonferroni correct I'll need more. When I say "lose some precision" I think < 53 binary digits, but (4) am I completely mistaken and any p-value `< .Machine$double.eps`

is wildly inaccurate? (5) Is R just being honest and other stats packages are not?

In my field very small p-values are the norm, some examples: http://www.ncbi.nlm.nih.gov/pubmed/20154341, http://www.plosgenetics.org/article/info%3Adoi%2F10.1371%2Fjournal.pgen.1002215 and this is why I want to represent such small p-values.

Thanks for your help, sorry for such a tortuous question.