mirror of
https://codeberg.org/anoncontributorxmr/monero.git
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360 lines
9.5 KiB
Text
360 lines
9.5 KiB
Text
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#include <math.h>
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#include <limits>
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#include <algorithm>
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#include "stats.h"
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enum
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{
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bit_min = 0,
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bit_max,
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bit_median,
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bit_mean,
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bit_standard_deviation,
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bit_standard_error,
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bit_variance,
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bit_kurtosis,
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};
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static inline double square(double x)
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{
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return x * x;
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}
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template<typename T>
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static inline double interpolate(T v, T v0, double i0, T v1, double i1)
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{
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return i0 + (i1 - i0) * (v - v0) / (v1 - v0);
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}
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template<typename T, typename Tpod>
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inline bool Stats<T, Tpod>::is_cached(int bit) const
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{
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return cached & (1<<bit);
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}
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template<typename T, typename Tpod>
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inline void Stats<T, Tpod>::set_cached(int bit) const
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{
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cached |= 1<<bit;
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}
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template<typename T, typename Tpod>
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size_t Stats<T, Tpod>::get_size() const
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{
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return values.size();
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}
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template<typename T, typename Tpod>
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Tpod Stats<T, Tpod>::get_min() const
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{
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if (!is_cached(bit_min))
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{
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min = std::numeric_limits<Tpod>::max();
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for (const T &v: values)
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min = std::min<Tpod>(min, v);
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set_cached(bit_min);
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}
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return min;
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}
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template<typename T, typename Tpod>
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Tpod Stats<T, Tpod>::get_max() const
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{
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if (!is_cached(bit_max))
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{
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max = std::numeric_limits<Tpod>::min();
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for (const T &v: values)
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max = std::max<Tpod>(max, v);
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set_cached(bit_max);
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}
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return max;
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}
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template<typename T, typename Tpod>
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Tpod Stats<T, Tpod>::get_median() const
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{
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if (!is_cached(bit_median))
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{
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std::vector<Tpod> sorted;
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sorted.reserve(values.size());
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for (const T &v: values)
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sorted.push_back(v);
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std::sort(sorted.begin(), sorted.end());
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if (sorted.size() & 1)
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{
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median = sorted[sorted.size() / 2];
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}
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else
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{
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median = (sorted[(sorted.size() - 1) / 2] + sorted[sorted.size() / 2]) / 2;
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}
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set_cached(bit_median);
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}
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return median;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_mean() const
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{
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if (values.empty())
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return 0.0;
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if (!is_cached(bit_mean))
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{
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mean = 0.0;
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for (const T &v: values)
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mean += v;
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mean /= values.size();
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set_cached(bit_mean);
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}
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return mean;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_cdf95(size_t df) const
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{
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static const double p[101] = {
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-1, 12.706, 4.3027, 3.1824, 2.7765, 2.5706, 2.4469, 2.3646, 2.3060, 2.2622, 2.2281, 2.2010, 2.1788, 2.1604, 2.1448, 2.1315,
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2.1199, 2.1098, 2.1009, 2.0930, 2.0860, 2.0796, 2.0739, 2.0687, 2.0639, 2.0595, 2.0555, 2.0518, 2.0484, 2.0452, 2.0423, 2.0395,
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2.0369, 2.0345, 2.0322, 2.0301, 2.0281, 2.0262, 2.0244, 2.0227, 2.0211, 2.0195, 2.0181, 2.0167, 2.0154, 2.0141, 2.0129, 2.0117,
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2.0106, 2.0096, 2.0086, 2.0076, 2.0066, 2.0057, 2.0049, 2.0040, 2.0032, 2.0025, 2.0017, 2.0010, 2.0003, 1.9996, 1.9990, 1.9983,
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1.9977, 1.9971, 1.9966, 1.9960, 1.9955, 1.9949, 1.9944, 1.9939, 1.9935, 1.9930, 1.9925, 1.9921, 1.9917, 1.9913, 1.9908, 1.9905,
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1.9901, 1.9897, 1.9893, 1.9890, 1.9886, 1.9883, 1.9879, 1.9876, 1.9873, 1.9870, 1.9867, 1.9864, 1.9861, 1.9858, 1.9855, 1.9852,
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1.9850, 1.9847, 1.9845, 1.9842, 1.9840,
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};
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if (df <= 100)
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return p[df];
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if (df <= 120)
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return interpolate<size_t>(df, 100, 1.9840, 120, 1.98);
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return 1.96;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_cdf95(const Stats<T> &other) const
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{
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return get_cdf95(get_size() + other.get_size() - 2);
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_cdf99(size_t df) const
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{
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static const double p[101] = {
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-1, 9.9250, 5.8408, 4.6041, 4.0321, 3.7074, 3.4995, 3.3554, 3.2498, 3.1693, 3.1058, 3.0545, 3.0123, 2.9768, 2.9467, 2.9208, 2.8982,
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2.8784, 2.8609, 2.8453, 2.8314, 2.8188, 2.8073, 2.7970, 2.7874, 2.7787, 2.7707, 2.7633, 2.7564, 2.7500, 2.7440, 2.7385, 2.7333,
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2.7284, 2.7238, 2.7195, 2.7154, 2.7116, 2.7079, 2.7045, 2.7012, 2.6981, 2.6951, 2.6923, 2.6896, 2.6870, 2.6846, 2.6822, 2.6800,
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2.6778, 2.6757, 2.6737, 2.6718, 2.6700, 2.6682, 2.6665, 2.6649, 2.6633, 2.6618, 2.6603, 2.6589, 2.6575, 2.6561, 2.6549, 2.6536,
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2.6524, 2.6512, 2.6501, 2.6490, 2.6479, 2.6469, 2.6458, 2.6449, 2.6439, 2.6430, 2.6421, 2.6412, 2.6403, 2.6395, 2.6387, 2.6379,
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2.6371, 2.6364, 2.6356, 2.6349, 2.6342, 2.6335, 2.6329, 2.6322, 2.6316, 2.6309, 2.6303, 2.6297, 2.6291, 2.6286, 2.6280, 2.6275,
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2.6269, 2.6264, 2.6259,
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};
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if (df <= 100)
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return p[df];
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if (df <= 120)
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return interpolate<size_t>(df, 100, 2.6529, 120, 2.617);
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return 2.576;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_cdf99(const Stats<T> &other) const
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{
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return get_cdf99(get_size() + other.get_size() - 2);
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_confidence_interval_95() const
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{
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const size_t df = get_size() - 1;
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return get_standard_error() * get_cdf95(df);
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_confidence_interval_99() const
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{
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const size_t df = get_size() - 1;
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return get_standard_error() * get_cdf99(df);
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}
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template<typename T, typename Tpod>
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bool Stats<T, Tpod>::is_same_distribution_95(size_t npoints, double mean, double stddev) const
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{
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return fabs(get_t_test(npoints, mean, stddev)) < get_cdf95(get_size() + npoints - 2);
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}
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template<typename T, typename Tpod>
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bool Stats<T, Tpod>::is_same_distribution_95(const Stats<T> &other) const
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{
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return fabs(get_t_test(other)) < get_cdf95(other);
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}
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template<typename T, typename Tpod>
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bool Stats<T, Tpod>::is_same_distribution_99(size_t npoints, double mean, double stddev) const
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{
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return fabs(get_t_test(npoints, mean, stddev)) < get_cdf99(get_size() + npoints - 2);
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}
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template<typename T, typename Tpod>
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bool Stats<T, Tpod>::is_same_distribution_99(const Stats<T> &other) const
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{
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return fabs(get_t_test(other)) < get_cdf99(other);
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_standard_deviation() const
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{
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if (values.size() <= 1)
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return 0.0;
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if (!is_cached(bit_standard_deviation))
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{
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Tpod m = get_mean(), t = 0;
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for (const T &v: values)
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t += ((T)v - m) * ((T)v - m);
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standard_deviation = sqrt(t / ((double)values.size() - 1));
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set_cached(bit_standard_deviation);
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}
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return standard_deviation;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_standard_error() const
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{
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if (!is_cached(bit_standard_error))
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{
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standard_error = get_standard_deviation() / sqrt(get_size());
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set_cached(bit_standard_error);
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}
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return standard_error;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_variance() const
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{
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if (!is_cached(bit_variance))
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{
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double stddev = get_standard_deviation();
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variance = stddev * stddev;
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set_cached(bit_variance);
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}
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return variance;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_kurtosis() const
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{
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if (values.empty())
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return 0.0;
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if (!is_cached(bit_kurtosis))
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{
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double m = get_mean();
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double n = 0, d = 0;
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for (const T &v: values)
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{
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T p2 = (v - m) * (v - m);
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T p4 = p2 * p2;
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n += p4;
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d += p2;
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}
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n /= values.size();
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d /= values.size();
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d *= d;
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kurtosis = n / d;
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set_cached(bit_kurtosis);
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}
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return kurtosis;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_non_parametric_skew() const
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{
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return (get_mean() - get_median()) / get_standard_deviation();
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_t_test(T t) const
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{
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const double n = get_mean() - t;
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const double d = get_standard_deviation() / sqrt(get_size());
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return n / d;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_t_test(size_t npoints, double mean, double stddev) const
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{
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const double n = get_mean() - mean;
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const double d = sqrt(get_variance() / get_size() + square(stddev) / npoints);
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return n / d;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_t_test(const Stats<T> &other) const
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{
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const double n = get_mean() - other.get_mean();
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const double d = sqrt(get_variance() / get_size() + other.get_variance() / other.get_size());
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return n / d;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_z_test(const Stats<T> &other) const
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{
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const double m0 = get_mean();
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const double m1 = other.get_mean();
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const double sd0 = get_standard_deviation();
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const double sd1 = other.get_standard_deviation();
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const size_t s0 = get_size();
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const size_t s1 = other.get_size();
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const double n = m0 - m1;
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const double d = sqrt(square(sd0 / sqrt(s0)) + square(sd1 / sqrt(s1)));
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return n / d;
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}
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template<typename T, typename Tpod>
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double Stats<T, Tpod>::get_test(const Stats<T> &other) const
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{
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if (get_size() >= 30 && other.get_size() >= 30)
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return get_z_test(other);
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else
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return get_t_test(other);
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}
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template<typename T, typename Tpod>
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std::vector<Tpod> Stats<T, Tpod>::get_quantiles(unsigned int quantiles) const
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{
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std::vector<Tpod> sorted;
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sorted.reserve(values.size());
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for (const T &v: values)
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sorted.push_back(v);
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std::sort(sorted.begin(), sorted.end());
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std::vector<Tpod> q(quantiles + 1, 0);
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for (unsigned int i = 1; i <= quantiles; ++i)
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{
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unsigned idx = (unsigned)ceil(values.size() * i / (double)quantiles);
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q[i] = sorted[idx - 1];
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}
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if (!is_cached(bit_min))
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{
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min = sorted.front();
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set_cached(bit_min);
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}
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q[0] = min;
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if (!is_cached(bit_max))
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{
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max = sorted.back();
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set_cached(bit_max);
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}
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return q;
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}
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template<typename T, typename Tpod>
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std::vector<size_t> Stats<T, Tpod>::get_bins(unsigned int bins) const
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{
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std::vector<size_t> b(bins, 0);
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const double scale = 1.0 / (get_max() - get_min());
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const T base = get_min();
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for (const T &v: values)
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{
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unsigned int idx = (v - base) * scale;
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++b[idx];
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}
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return b;
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}
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