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i tried to find a built-in for geometric mean but couldn't.

(Obviously a built-in isn't going to save me any time while working in the shell, nor do i suspect there's any difference in accuracy; for scripts i try to use built-ins as often as possible, where the (cumulative) performance gain is often noticeable.

In case there isn't one (which i doubt is the case) here's mine.

gm_mean = function(a){prod(a)^(1/length(a))}
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Careful about negative numbers and overflows. prod(a) will under or overflow very quickly. I tried to time this using a big list and quickly got Inf using your method vs 1.4 with exp(mean(log(x))); the rounding problem can be quite severe. –  Tristan Apr 8 '10 at 22:12
i just wrote the function above quickly because i was sure that 5 min after posting this Q, someone would tell me R's built-in for gm. So no built-in so it's certain worth taking the time to re-code in light of your remarks. + 1 from me. –  doug Apr 8 '10 at 23:12

6 Answers 6

up vote 8 down vote accepted

Here is a vectorized, zero- and NA-tolerant function for calculating geometric mean in R. The verbose mean calculation involving length(x) is necessary for the cases where x contains non-positive values.

gm_mean = function(x, na.rm=TRUE){
  exp(sum(log(x[x > 0]), na.rm=na.rm) / length(x))

Thanks to @ben-bolker for noting the na.rm pass-through and @Gregor for making sure it works correctly.

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wouldn't it be better to pass na.rm through as an argument (i.e. let the user decide whether they want to be NA-tolerant or not, for consistency with other R summary functions)? I'm nervous about automatically excluding zeroes -- I would make that an option as well. –  Ben Bolker Aug 28 at 19:21
Perhaps you're right about passing na.rm as an option. I'll update my answer. As for excluding zeroes, the geometric mean is undefined for non-positive values, including zeroes. The above is a common fix for geometric mean, in which zeroes (or in this case all non-zeroes) are given a dummy value of 1, which has no effect on the product (or equivalently, zero in the logarithmic sum). –  Paul McMurdie Aug 28 at 20:01
*I meant a common fix for non-positive values, zero being the most common when geometric mean is being used. –  Paul McMurdie Aug 28 at 20:09
I thought the effect of a zero would be (as pointed out by @Alan-James-Salmoni below) to force the GM to zero, i.e. result <- if(any(x==0)) 0 else exp(sum(...)) –  Ben Bolker Aug 28 at 20:16
Your na.rm pass-through doesn't work as coded... see gm_mean(c(1:3, NA), na.rm = T). You need to remove the & !is.na(x) from the vector subset, and since the first arg of sum is ..., you need to pass na.rm = na.rm by name, and you also need to exclude 0's and NA's from the vector in the length call. –  Gregor Aug 28 at 20:53

No, but there are a few people who have written one, such as here.

Another possibility is to use this:

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will work unless there is a 0 in x. If so, the log will produce -Inf (-Infinite) which always results in a geometric mean of 0.

One solution is to remove the -Inf value before calculating the mean:

geo_mean <- function(data) {
    log_data <- log(data)
    gm <- exp(mean(log_data[is.finite(log_data)]))

You can use a one-liner to do this but it means calculating the log twice which is inefficient.

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why calculate the log twice when you can do: exp(mean(x[x!=0])) –  zzk Jul 25 at 20:54
both approaches get the mean wrong, because the denominator for the mean, sum(x) / length(x) is wrong if you filter x and then pass it to mean. –  Paul McMurdie Aug 28 at 17:46
I think filtering is a bad idea unless you explicitly mean to do it (e.g. if I were writing a general-purpose function I would not make filtering the default) -- OK if this is a one-off piece of code and you've thought very carefully about what filtering zeroes out actually means in the context of your problem (!) –  Ben Bolker Aug 28 at 20:18

you can use psych package and call geometric.mean function in that.

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I use exactly what Mark says. This way, even with tapply, you can use the built-in mean function, no need to define yours! For example, to compute per-group geometric means of data$value:

exp(tapply(log(data$value), data$group, mean))
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In case there is missing values in your data, this is not a rare case. you need to add one more argument. You may try following codes.

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