Comparisons of floating point numbers are problematic due to errors associated with the binary representation of decimal numbers. Computer scientists and programmers are aware of these problems and yet people still use numerical methods which fail to account for floating point errors (this pitfall is the first to be highlighted in Circle 1 of Burns (2012) The R Inferno).
To avoid these and other numerical rounding issues, R’s help file for relational operators (e.g., ?'>'
) suggests using identical
and all.equal
when making numerical comparisons:
x1 <- 0.5 - 0.3
x2 <- 0.3 - 0.1
x1 == x2 # FALSE on most machines
identical(all.equal(x1, x2), TRUE) # TRUE everywhere
Inspired by R FAQ 7.31 and this Stack Overflow answer, this package provides new relational operators useful for performing floating point number comparisons with a set tolerance:
fpCompare 1 |
base |
---|---|
%>=% |
>= |
%>>% |
> |
%<=% |
<= |
%<<% |
< |
%==% |
== |
%!=% |
!= |
These functions use the base
relational operators to make comparisons, but incorporate a tolerance value (fpCompare.tolerance
) similar to all.equal
. The default fpCompare.tolerance
value is .Machine$double.eps^0.5
, set via options
. This is the same default used in all.equal
for numeric comparisons.
# set telorance value
tol = .Machine$double.eps^0.5 # default value
options(fpCompare.tolerance = tol)
# perform comparisons
x1 <- 0.5 - 0.3
x2 <- 0.3 - 0.1
x1 == x2 # FALSE on most machines
x1 %==% x2 # TRUE everywhere
https://github.com/PredictiveEcology/fpCompare/issues
The %<<%
and %>>%
symbols are used instead of %<%
and %>%
to avoid a conflict with magrittr
’s pipe operator (%>%
).↩︎