# calculate mean and standard deviation from a vector of samples in C++ using boost

Is there a way to calculate mean and standard deviation for a vector containing samples using boost? Or do I have to create an accumulator and feed the vector into it?

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Unclear question. –  phaedrus Sep 30 '11 at 22:05
–  David Nehme Sep 30 '11 at 23:21

Using accumulators is the way to compute means and standard deviations in boost.

``````  accumulator_set<double, stats<tag::variance> > acc;
for_each(a_vec.begin(), a_vec.end(), bind<void>(ref(acc), _1));

cout << mean(acc) << endl;
cout << sqrt(variance(acc)) << endl;
``````
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I don't know if Boost has more specific functions, but you can do it with the standard library.

Given `std::vector<double> v`, this is the naive way:

``````double sum = std::accumulate(v.begin(), v.end(), 0.0);
double mean = sum / v.size();

double sq_sum = std::inner_product(v.begin(), v.end(), v.begin(), 0.0);
double stdev = std::sqrt(sq_sum / v.size() - mean * mean);
``````

This is susceptible to overflow or underflow for huge or tiny values. A slightly better way to calculate the standard deviation is:

``````std::vector<double> diff(v.size());
std::transform(v.begin(), v.end(), diff.begin(),
std::bind2nd(std::minus<double>(), mean));
double sq_sum = std::inner_product(diff.begin(), diff.end(), diff.begin(), 0.0);
double stdev = std::sqrt(sq_sum / v.size());
``````
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Does the bottom section of code depend on top? I.e, is mean in the second section same as mean defined in first section? –  drb Nov 16 '11 at 20:30
Yes; obviously, the bottom part depends on the value of `mean` calculated in the top part. –  musiphil Nov 23 '11 at 7:31
Note that to use std::accumulate one must also #include <numeric> –  Jason Parham Dec 16 '14 at 18:07
The first set of equations does not work. I put int 10 & 2, and got an output of 4. At a glance I think it's b/c it assumes that (a-b)^2 = a^2-b^2 –  Charles L. Feb 4 at 7:06
@StudentT: No, but you can substitute `(v.size() - 1)` for `v.size()` in the last line above: `std::sqrt(sq_sum / (v.size() - 1))`. (For the first method, it's a little complicated: `std::sqrt(sq_sum / (v.size() - 1) - mean * mean * v.size() / (v.size() - 1))`. –  musiphil Apr 23 at 7:25

If performance is important to you, and your compiler supports lambdas, the stdev calculation can be made faster and simpler: In tests with VS 2012 I've found that the following code is over 10 X quicker than the Boost code given in the chosen answer; it's also 5 X quicker than the safer version of the answer using standard libraries given by musiphil.

Note I'm using sample standard deviation, so the below code gives slightly different results (Why there is a Minus One in Standard Deviations)

``````double sum = std::accumulate(std::begin(v), std::end(v), 0.0);
double m =  sum / v.size();

double accum = 0.0;
std::for_each (std::begin(v), std::end(v), [&](const double d) {
accum += (d - m) * (d - m);
});

double stdev = sqrt(accum / (v.size()-1));
``````
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Thanks for sharing this answer even a year later. Now I come another year later and made this one generic for both the value type and the container type. See here (Note: I guess that my range-based for loop is as fast as your lambda code.) –  leemes Feb 3 '14 at 3:07
what is the difference between using std::end(v) instead of v.end()? –  BananaCode May 3 '14 at 20:28
The `std::end()` function was added by C++11 standard for cases when there is nothing like `v.end()`. The `std::end` can be overloaded for the less standard container -- see en.cppreference.com/w/cpp/iterator/end –  pepr Jun 22 '14 at 19:16
Can you explain why is this faster? –  dev_nut Feb 24 at 18:25
Well for one thing, the "safe" answer (which is like my answer) makes 3 passes through the array: Once for the sum, once for the diff-mean, and once for the squaring. In my code there's only 2 passes -- It's conflating the second two passes into one. And (when I last looked, quite a while ago now!) the inner_product calls were not optimized away. In addition the "safe" code copies v into an entirely new array of diffs, which adds more delay. In my opinion my code is more readable too - and is easily ported to JavaScript and other languages :) –  Josh Greifer Mar 4 at 20:44

My answer is similar as Josh Greifer but generalised to sample covariance. Sample variance is just sample covariance but with the two inputs identical. This includes bessel's correlation.

``````    template <class Iter> typename Iter::value_type cov(const Iter &x, const Iter &y)
{
double sum_x = std::accumulate(std::begin(x), std::end(x), 0.0);
double sum_y = std::accumulate(std::begin(y), std::end(y), 0.0);

double mx =  sum_x / x.size();
double my =  sum_y / y.size();

double accum = 0.0;

for (auto i = 0; i < x.size(); i++)
{
accum += (x.at(i) - mx) * (y.at(i) - my);
}

return accum / (x.size() - 1);
}
``````
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