tvl-depot/absl/random/poisson_distribution_test.cc
Abseil Team 0e7afdcbd2 Export of internal Abseil changes
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62058c9c008e23c787f35c1a5fe05851046a71f1 by Abseil Team <absl-team@google.com>:

Fix some strange usage of INSTANTIATE_TEST_SUITE_P

PiperOrigin-RevId: 264185105

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4400d84027d86415a2f9b81996ff22e7fd7aa30f by Derek Mauro <dmauro@google.com>:

Disable testing std::string_view from nullptr on GCC >= GCC9.

PiperOrigin-RevId: 264150587

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656d5a742ba48d025589709fad33ddae4b02c620 by Matt Calabrese <calabrese@google.com>:

Fix `absl::any_cast` such that it properly works with qualifications.

PiperOrigin-RevId: 263843429

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6ec89214a4ef2170bf069623a56ffd22863b748d by Abseil Team <absl-team@google.com>:

Use macros to enable inline constexpr variables in compare.h when the compiler supports the feature.

PiperOrigin-RevId: 263790677

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a5171e0897195a0367fc08abce9504f813d027ff by Derek Mauro <dmauro@google.com>:

Add the Apache License to files that are missing it.

PiperOrigin-RevId: 263774164

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19e09a7ce8a0aac0a7d534e1799e4d73b63a1bb5 by Abseil Team <absl-team@google.com>:

Update iter.position when moving up the tree in rebalance_after_delete.

This field isn't read after the first iteration in rebalance_after_delete, and I think it's not a correctness issue, but it is read in try_merge_or_rebalance and potentially affects rebalancing decisions so it can affect performance. There's also an extremely unlikely potential for undefined behavior due to signed integer overflow since this field is only ever incremented in try_merge_or_rebalance (and position is an int). Basically though, I just don't think it makes sense to have this invalid iterator floating around here.

PiperOrigin-RevId: 263770305
GitOrigin-RevId: 62058c9c008e23c787f35c1a5fe05851046a71f1
Change-Id: I1e2fb7cbfac7507dddedd181414ee35a5778f8f5
2019-08-19 15:34:07 -04:00

565 lines
20 KiB
C++

// Copyright 2017 The Abseil Authors.
//
// Licensed under the Apache License, Version 2.0 (the "License");
// you may not use this file except in compliance with the License.
// You may obtain a copy of the License at
//
// https://www.apache.org/licenses/LICENSE-2.0
//
// Unless required by applicable law or agreed to in writing, software
// distributed under the License is distributed on an "AS IS" BASIS,
// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
// See the License for the specific language governing permissions and
// limitations under the License.
#include "absl/random/poisson_distribution.h"
#include <algorithm>
#include <cstddef>
#include <cstdint>
#include <iterator>
#include <random>
#include <sstream>
#include <string>
#include <vector>
#include "gmock/gmock.h"
#include "gtest/gtest.h"
#include "absl/base/internal/raw_logging.h"
#include "absl/base/macros.h"
#include "absl/container/flat_hash_map.h"
#include "absl/random/internal/chi_square.h"
#include "absl/random/internal/distribution_test_util.h"
#include "absl/random/internal/sequence_urbg.h"
#include "absl/random/random.h"
#include "absl/strings/str_cat.h"
#include "absl/strings/str_format.h"
#include "absl/strings/str_replace.h"
#include "absl/strings/strip.h"
// Notes about generating poisson variates:
//
// It is unlikely that any implementation of std::poisson_distribution
// will be stable over time and across library implementations. For instance
// the three different poisson variate generators listed below all differ:
//
// https://github.com/ampl/gsl/tree/master/randist/poisson.c
// * GSL uses a gamma + binomial + knuth method to compute poisson variates.
//
// https://github.com/gcc-mirror/gcc/blob/master/libstdc%2B%2B-v3/include/bits/random.tcc
// * GCC uses the Devroye rejection algorithm, based on
// Devroye, L. Non-Uniform Random Variates Generation. Springer-Verlag,
// New York, 1986, Ch. X, Sects. 3.3 & 3.4 (+ Errata!), ~p.511
// http://www.nrbook.com/devroye/
//
// https://github.com/llvm-mirror/libcxx/blob/master/include/random
// * CLANG uses a different rejection method, which appears to include a
// normal-distribution approximation and an exponential distribution to
// compute the threshold, including a similar factorial approximation to this
// one, but it is unclear where the algorithm comes from, exactly.
//
namespace {
using absl::random_internal::kChiSquared;
// The PoissonDistributionInterfaceTest provides a basic test that
// absl::poisson_distribution conforms to the interface and serialization
// requirements imposed by [rand.req.dist] for the common integer types.
template <typename IntType>
class PoissonDistributionInterfaceTest : public ::testing::Test {};
using IntTypes = ::testing::Types<int, int8_t, int16_t, int32_t, int64_t,
uint8_t, uint16_t, uint32_t, uint64_t>;
TYPED_TEST_CASE(PoissonDistributionInterfaceTest, IntTypes);
TYPED_TEST(PoissonDistributionInterfaceTest, SerializeTest) {
using param_type = typename absl::poisson_distribution<TypeParam>::param_type;
const double kMax =
std::min(1e10 /* assertion limit */,
static_cast<double>(std::numeric_limits<TypeParam>::max()));
const double kParams[] = {
// Cases around 1.
1, //
std::nextafter(1.0, 0.0), // 1 - epsilon
std::nextafter(1.0, 2.0), // 1 + epsilon
// Arbitrary values.
1e-8, 1e-4,
0.0000005, // ~7.2e-7
0.2, // ~0.2x
0.5, // 0.72
2, // ~2.8
20, // 3x ~9.6
100, 1e4, 1e8, 1.5e9, 1e20,
// Boundary cases.
std::numeric_limits<double>::max(),
std::numeric_limits<double>::epsilon(),
std::nextafter(std::numeric_limits<double>::min(),
1.0), // min + epsilon
std::numeric_limits<double>::min(), // smallest normal
std::numeric_limits<double>::denorm_min(), // smallest denorm
std::numeric_limits<double>::min() / 2, // denorm
std::nextafter(std::numeric_limits<double>::min(),
0.0), // denorm_max
};
constexpr int kCount = 1000;
absl::InsecureBitGen gen;
for (const double m : kParams) {
const double mean = std::min(kMax, m);
const param_type param(mean);
// Validate parameters.
absl::poisson_distribution<TypeParam> before(mean);
EXPECT_EQ(before.mean(), param.mean());
{
absl::poisson_distribution<TypeParam> via_param(param);
EXPECT_EQ(via_param, before);
EXPECT_EQ(via_param.param(), before.param());
}
// Smoke test.
auto sample_min = before.max();
auto sample_max = before.min();
for (int i = 0; i < kCount; i++) {
auto sample = before(gen);
EXPECT_GE(sample, before.min());
EXPECT_LE(sample, before.max());
if (sample > sample_max) sample_max = sample;
if (sample < sample_min) sample_min = sample;
}
ABSL_INTERNAL_LOG(INFO, absl::StrCat("Range {", param.mean(), "}: ",
+sample_min, ", ", +sample_max));
// Validate stream serialization.
std::stringstream ss;
ss << before;
absl::poisson_distribution<TypeParam> after(3.8);
EXPECT_NE(before.mean(), after.mean());
EXPECT_NE(before.param(), after.param());
EXPECT_NE(before, after);
ss >> after;
EXPECT_EQ(before.mean(), after.mean()) //
<< ss.str() << " " //
<< (ss.good() ? "good " : "") //
<< (ss.bad() ? "bad " : "") //
<< (ss.eof() ? "eof " : "") //
<< (ss.fail() ? "fail " : "");
}
}
// See http://www.itl.nist.gov/div898/handbook/eda/section3/eda366j.htm
class PoissonModel {
public:
explicit PoissonModel(double mean) : mean_(mean) {}
double mean() const { return mean_; }
double variance() const { return mean_; }
double stddev() const { return std::sqrt(variance()); }
double skew() const { return 1.0 / mean_; }
double kurtosis() const { return 3.0 + 1.0 / mean_; }
// InitCDF() initializes the CDF for the distribution parameters.
void InitCDF();
// The InverseCDF, or the Percent-point function returns x, P(x) < v.
struct CDF {
size_t index;
double pmf;
double cdf;
};
CDF InverseCDF(double p) {
CDF target{0, 0, p};
auto it = std::upper_bound(
std::begin(cdf_), std::end(cdf_), target,
[](const CDF& a, const CDF& b) { return a.cdf < b.cdf; });
return *it;
}
void LogCDF() {
ABSL_INTERNAL_LOG(INFO, absl::StrCat("CDF (mean = ", mean_, ")"));
for (const auto c : cdf_) {
ABSL_INTERNAL_LOG(INFO,
absl::StrCat(c.index, ": pmf=", c.pmf, " cdf=", c.cdf));
}
}
private:
const double mean_;
std::vector<CDF> cdf_;
};
// The goal is to compute an InverseCDF function, or percent point function for
// the poisson distribution, and use that to partition our output into equal
// range buckets. However there is no closed form solution for the inverse cdf
// for poisson distributions (the closest is the incomplete gamma function).
// Instead, `InitCDF` iteratively computes the PMF and the CDF. This enables
// searching for the bucket points.
void PoissonModel::InitCDF() {
if (!cdf_.empty()) {
// State already initialized.
return;
}
ABSL_ASSERT(mean_ < 201.0);
const size_t max_i = 50 * stddev() + mean();
const double e_neg_mean = std::exp(-mean());
ABSL_ASSERT(e_neg_mean > 0);
double d = 1;
double last_result = e_neg_mean;
double cumulative = e_neg_mean;
if (e_neg_mean > 1e-10) {
cdf_.push_back({0, e_neg_mean, cumulative});
}
for (size_t i = 1; i < max_i; i++) {
d *= (mean() / i);
double result = e_neg_mean * d;
cumulative += result;
if (result < 1e-10 && result < last_result && cumulative > 0.999999) {
break;
}
if (result > 1e-7) {
cdf_.push_back({i, result, cumulative});
}
last_result = result;
}
ABSL_ASSERT(!cdf_.empty());
}
// PoissonDistributionZTest implements a z-test for the poisson distribution.
struct ZParam {
double mean;
double p_fail; // Z-Test probability of failure.
int trials; // Z-Test trials.
size_t samples; // Z-Test samples.
};
class PoissonDistributionZTest : public testing::TestWithParam<ZParam>,
public PoissonModel {
public:
PoissonDistributionZTest() : PoissonModel(GetParam().mean) {}
// ZTestImpl provides a basic z-squared test of the mean vs. expected
// mean for data generated by the poisson distribution.
template <typename D>
bool SingleZTest(const double p, const size_t samples);
absl::InsecureBitGen rng_;
};
template <typename D>
bool PoissonDistributionZTest::SingleZTest(const double p,
const size_t samples) {
D dis(mean());
absl::flat_hash_map<int32_t, int> buckets;
std::vector<double> data;
data.reserve(samples);
for (int j = 0; j < samples; j++) {
const auto x = dis(rng_);
buckets[x]++;
data.push_back(x);
}
// The null-hypothesis is that the distribution is a poisson distribution with
// the provided mean (not estimated from the data).
const auto m = absl::random_internal::ComputeDistributionMoments(data);
const double max_err = absl::random_internal::MaxErrorTolerance(p);
const double z = absl::random_internal::ZScore(mean(), m);
const bool pass = absl::random_internal::Near("z", z, 0.0, max_err);
if (!pass) {
ABSL_INTERNAL_LOG(
INFO, absl::StrFormat("p=%f max_err=%f\n"
" mean=%f vs. %f\n"
" stddev=%f vs. %f\n"
" skewness=%f vs. %f\n"
" kurtosis=%f vs. %f\n"
" z=%f",
p, max_err, m.mean, mean(), std::sqrt(m.variance),
stddev(), m.skewness, skew(), m.kurtosis,
kurtosis(), z));
}
return pass;
}
TEST_P(PoissonDistributionZTest, AbslPoissonDistribution) {
const auto& param = GetParam();
const int expected_failures =
std::max(1, static_cast<int>(std::ceil(param.trials * param.p_fail)));
const double p = absl::random_internal::RequiredSuccessProbability(
param.p_fail, param.trials);
int failures = 0;
for (int i = 0; i < param.trials; i++) {
failures +=
SingleZTest<absl::poisson_distribution<int32_t>>(p, param.samples) ? 0
: 1;
}
EXPECT_LE(failures, expected_failures);
}
std::vector<ZParam> GetZParams() {
// These values have been adjusted from the "exact" computed values to reduce
// failure rates.
//
// It turns out that the actual values are not as close to the expected values
// as would be ideal.
return std::vector<ZParam>({
// Knuth method.
ZParam{0.5, 0.01, 100, 1000},
ZParam{1.0, 0.01, 100, 1000},
ZParam{10.0, 0.01, 100, 5000},
// Split-knuth method.
ZParam{20.0, 0.01, 100, 10000},
ZParam{50.0, 0.01, 100, 10000},
// Ratio of gaussians method.
ZParam{51.0, 0.01, 100, 10000},
ZParam{200.0, 0.05, 10, 100000},
ZParam{100000.0, 0.05, 10, 1000000},
});
}
std::string ZParamName(const ::testing::TestParamInfo<ZParam>& info) {
const auto& p = info.param;
std::string name = absl::StrCat("mean_", absl::SixDigits(p.mean));
return absl::StrReplaceAll(name, {{"+", "_"}, {"-", "_"}, {".", "_"}});
}
INSTANTIATE_TEST_SUITE_P(All, PoissonDistributionZTest,
::testing::ValuesIn(GetZParams()), ZParamName);
// The PoissonDistributionChiSquaredTest class provides a basic test framework
// for variates generated by a conforming poisson_distribution.
class PoissonDistributionChiSquaredTest : public testing::TestWithParam<double>,
public PoissonModel {
public:
PoissonDistributionChiSquaredTest() : PoissonModel(GetParam()) {}
// The ChiSquaredTestImpl provides a chi-squared goodness of fit test for data
// generated by the poisson distribution.
template <typename D>
double ChiSquaredTestImpl();
private:
void InitChiSquaredTest(const double buckets);
absl::InsecureBitGen rng_;
std::vector<size_t> cutoffs_;
std::vector<double> expected_;
};
void PoissonDistributionChiSquaredTest::InitChiSquaredTest(
const double buckets) {
if (!cutoffs_.empty() && !expected_.empty()) {
return;
}
InitCDF();
// The code below finds cuttoffs that yield approximately equally-sized
// buckets to the extent that it is possible. However for poisson
// distributions this is particularly challenging for small mean parameters.
// Track the expected proportion of items in each bucket.
double last_cdf = 0;
const double inc = 1.0 / buckets;
for (double p = inc; p <= 1.0; p += inc) {
auto result = InverseCDF(p);
if (!cutoffs_.empty() && cutoffs_.back() == result.index) {
continue;
}
double d = result.cdf - last_cdf;
cutoffs_.push_back(result.index);
expected_.push_back(d);
last_cdf = result.cdf;
}
cutoffs_.push_back(std::numeric_limits<size_t>::max());
expected_.push_back(std::max(0.0, 1.0 - last_cdf));
}
template <typename D>
double PoissonDistributionChiSquaredTest::ChiSquaredTestImpl() {
const int kSamples = 2000;
const int kBuckets = 50;
// The poisson CDF fails for large mean values, since e^-mean exceeds the
// machine precision. For these cases, using a normal approximation would be
// appropriate.
ABSL_ASSERT(mean() <= 200);
InitChiSquaredTest(kBuckets);
D dis(mean());
std::vector<int32_t> counts(cutoffs_.size(), 0);
for (int j = 0; j < kSamples; j++) {
const size_t x = dis(rng_);
auto it = std::lower_bound(std::begin(cutoffs_), std::end(cutoffs_), x);
counts[std::distance(cutoffs_.begin(), it)]++;
}
// Normalize the counts.
std::vector<int32_t> e(expected_.size(), 0);
for (int i = 0; i < e.size(); i++) {
e[i] = kSamples * expected_[i];
}
// The null-hypothesis is that the distribution is a poisson distribution with
// the provided mean (not estimated from the data).
const int dof = static_cast<int>(counts.size()) - 1;
// The threshold for logging is 1-in-50.
const double threshold = absl::random_internal::ChiSquareValue(dof, 0.98);
const double chi_square = absl::random_internal::ChiSquare(
std::begin(counts), std::end(counts), std::begin(e), std::end(e));
const double p = absl::random_internal::ChiSquarePValue(chi_square, dof);
// Log if the chi_squared value is above the threshold.
if (chi_square > threshold) {
LogCDF();
ABSL_INTERNAL_LOG(INFO, absl::StrCat("VALUES buckets=", counts.size(),
" samples=", kSamples));
for (size_t i = 0; i < counts.size(); i++) {
ABSL_INTERNAL_LOG(
INFO, absl::StrCat(cutoffs_[i], ": ", counts[i], " vs. E=", e[i]));
}
ABSL_INTERNAL_LOG(
INFO,
absl::StrCat(kChiSquared, "(data, dof=", dof, ") = ", chi_square, " (",
p, ")\n", " vs.\n", kChiSquared, " @ 0.98 = ", threshold));
}
return p;
}
TEST_P(PoissonDistributionChiSquaredTest, AbslPoissonDistribution) {
const int kTrials = 20;
// Large values are not yet supported -- this requires estimating the cdf
// using the normal distribution instead of the poisson in this case.
ASSERT_LE(mean(), 200.0);
if (mean() > 200.0) {
return;
}
int failures = 0;
for (int i = 0; i < kTrials; i++) {
double p_value = ChiSquaredTestImpl<absl::poisson_distribution<int32_t>>();
if (p_value < 0.005) {
failures++;
}
}
// There is a 0.10% chance of producing at least one failure, so raise the
// failure threshold high enough to allow for a flake rate < 10,000.
EXPECT_LE(failures, 4);
}
INSTANTIATE_TEST_SUITE_P(All, PoissonDistributionChiSquaredTest,
::testing::Values(0.5, 1.0, 2.0, 10.0, 50.0, 51.0,
200.0));
// NOTE: absl::poisson_distribution is not guaranteed to be stable.
TEST(PoissonDistributionTest, StabilityTest) {
using testing::ElementsAre;
// absl::poisson_distribution stability relies on stability of
// std::exp, std::log, std::sqrt, std::ceil, std::floor, and
// absl::FastUniformBits, absl::StirlingLogFactorial, absl::RandU64ToDouble.
absl::random_internal::sequence_urbg urbg({
0x035b0dc7e0a18acfull, 0x06cebe0d2653682eull, 0x0061e9b23861596bull,
0x0003eb76f6f7f755ull, 0xFFCEA50FDB2F953Bull, 0xC332DDEFBE6C5AA5ull,
0x6558218568AB9702ull, 0x2AEF7DAD5B6E2F84ull, 0x1521B62829076170ull,
0xECDD4775619F1510ull, 0x13CCA830EB61BD96ull, 0x0334FE1EAA0363CFull,
0xB5735C904C70A239ull, 0xD59E9E0BCBAADE14ull, 0xEECC86BC60622CA7ull,
0x4864f22c059bf29eull, 0x247856d8b862665cull, 0xe46e86e9a1337e10ull,
0xd8c8541f3519b133ull, 0xe75b5162c567b9e4ull, 0xf732e5ded7009c5bull,
0xb170b98353121eacull, 0x1ec2e8986d2362caull, 0x814c8e35fe9a961aull,
0x0c3cd59c9b638a02ull, 0xcb3bb6478a07715cull, 0x1224e62c978bbc7full,
0x671ef2cb04e81f6eull, 0x3c1cbd811eaf1808ull, 0x1bbc23cfa8fac721ull,
0xa4c2cda65e596a51ull, 0xb77216fad37adf91ull, 0x836d794457c08849ull,
0xe083df03475f49d7ull, 0xbc9feb512e6b0d6cull, 0xb12d74fdd718c8c5ull,
0x12ff09653bfbe4caull, 0x8dd03a105bc4ee7eull, 0x5738341045ba0d85ull,
0xf3fd722dc65ad09eull, 0xfa14fd21ea2a5705ull, 0xffe6ea4d6edb0c73ull,
0xD07E9EFE2BF11FB4ull, 0x95DBDA4DAE909198ull, 0xEAAD8E716B93D5A0ull,
0xD08ED1D0AFC725E0ull, 0x8E3C5B2F8E7594B7ull, 0x8FF6E2FBF2122B64ull,
0x8888B812900DF01Cull, 0x4FAD5EA0688FC31Cull, 0xD1CFF191B3A8C1ADull,
0x2F2F2218BE0E1777ull, 0xEA752DFE8B021FA1ull, 0xE5A0CC0FB56F74E8ull,
0x18ACF3D6CE89E299ull, 0xB4A84FE0FD13E0B7ull, 0x7CC43B81D2ADA8D9ull,
0x165FA26680957705ull, 0x93CC7314211A1477ull, 0xE6AD206577B5FA86ull,
0xC75442F5FB9D35CFull, 0xEBCDAF0C7B3E89A0ull, 0xD6411BD3AE1E7E49ull,
0x00250E2D2071B35Eull, 0x226800BB57B8E0AFull, 0x2464369BF009B91Eull,
0x5563911D59DFA6AAull, 0x78C14389D95A537Full, 0x207D5BA202E5B9C5ull,
0x832603766295CFA9ull, 0x11C819684E734A41ull, 0xB3472DCA7B14A94Aull,
});
std::vector<int> output(10);
// Method 1.
{
absl::poisson_distribution<int> dist(5);
std::generate(std::begin(output), std::end(output),
[&] { return dist(urbg); });
}
EXPECT_THAT(output, // mean = 4.2
ElementsAre(1, 0, 0, 4, 2, 10, 3, 3, 7, 12));
// Method 2.
{
urbg.reset();
absl::poisson_distribution<int> dist(25);
std::generate(std::begin(output), std::end(output),
[&] { return dist(urbg); });
}
EXPECT_THAT(output, // mean = 19.8
ElementsAre(9, 35, 18, 10, 35, 18, 10, 35, 18, 10));
// Method 3.
{
urbg.reset();
absl::poisson_distribution<int> dist(121);
std::generate(std::begin(output), std::end(output),
[&] { return dist(urbg); });
}
EXPECT_THAT(output, // mean = 124.1
ElementsAre(161, 122, 129, 124, 112, 112, 117, 120, 130, 114));
}
TEST(PoissonDistributionTest, AlgorithmExpectedValue_1) {
// This tests small values of the Knuth method.
// The underlying uniform distribution will generate exactly 0.5.
absl::random_internal::sequence_urbg urbg({0x8000000000000001ull});
absl::poisson_distribution<int> dist(5);
EXPECT_EQ(7, dist(urbg));
}
TEST(PoissonDistributionTest, AlgorithmExpectedValue_2) {
// This tests larger values of the Knuth method.
// The underlying uniform distribution will generate exactly 0.5.
absl::random_internal::sequence_urbg urbg({0x8000000000000001ull});
absl::poisson_distribution<int> dist(25);
EXPECT_EQ(36, dist(urbg));
}
TEST(PoissonDistributionTest, AlgorithmExpectedValue_3) {
// This variant uses the ratio of uniforms method.
absl::random_internal::sequence_urbg urbg(
{0x7fffffffffffffffull, 0x8000000000000000ull});
absl::poisson_distribution<int> dist(121);
EXPECT_EQ(121, dist(urbg));
}
} // namespace