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1// boost\math\special_functions\negative_binomial.hpp
2
3// Copyright Paul A. Bristow 2007.
4// Copyright John Maddock 2007.
5
6// Use, modification and distribution are subject to the
7// Boost Software License, Version 1.0.
8// (See accompanying file LICENSE_1_0.txt
9// or copy at http://www.boost.org/LICENSE_1_0.txt)
10
11// http://en.wikipedia.org/wiki/negative_binomial_distribution
12// http://mathworld.wolfram.com/NegativeBinomialDistribution.html
13// http://documents.wolfram.com/teachersedition/Teacher/Statistics/DiscreteDistributions.html
14
15// The negative binomial distribution NegativeBinomialDistribution[n, p]
16// is the distribution of the number (k) of failures that occur in a sequence of trials before
17// r successes have occurred, where the probability of success in each trial is p.
18
19// In a sequence of Bernoulli trials or events
20// (independent, yes or no, succeed or fail) with success_fraction probability p,
21// negative_binomial is the probability that k or fewer failures
f67539c2 22// precede the r th trial's success.
7c673cae
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23// random variable k is the number of failures (NOT the probability).
24
25// Negative_binomial distribution is a discrete probability distribution.
26// But note that the negative binomial distribution
27// (like others including the binomial, Poisson & Bernoulli)
28// is strictly defined as a discrete function: only integral values of k are envisaged.
29// However because of the method of calculation using a continuous gamma function,
f67539c2 30// it is convenient to treat it as if a continuous function,
7c673cae
FG
31// and permit non-integral values of k.
32
33// However, by default the policy is to use discrete_quantile_policy.
34
35// To enforce the strict mathematical model, users should use conversion
36// on k outside this function to ensure that k is integral.
37
38// MATHCAD cumulative negative binomial pnbinom(k, n, p)
39
40// Implementation note: much greater speed, and perhaps greater accuracy,
41// might be achieved for extreme values by using a normal approximation.
42// This is NOT been tested or implemented.
43
44#ifndef BOOST_MATH_SPECIAL_NEGATIVE_BINOMIAL_HPP
45#define BOOST_MATH_SPECIAL_NEGATIVE_BINOMIAL_HPP
46
47#include <boost/math/distributions/fwd.hpp>
48#include <boost/math/special_functions/beta.hpp> // for ibeta(a, b, x) == Ix(a, b).
49#include <boost/math/distributions/complement.hpp> // complement.
50#include <boost/math/distributions/detail/common_error_handling.hpp> // error checks domain_error & logic_error.
51#include <boost/math/special_functions/fpclassify.hpp> // isnan.
52#include <boost/math/tools/roots.hpp> // for root finding.
53#include <boost/math/distributions/detail/inv_discrete_quantile.hpp>
54
55#include <boost/type_traits/is_floating_point.hpp>
56#include <boost/type_traits/is_integral.hpp>
57#include <boost/type_traits/is_same.hpp>
58#include <boost/mpl/if.hpp>
59
60#include <limits> // using std::numeric_limits;
61#include <utility>
62
63#if defined (BOOST_MSVC)
64# pragma warning(push)
65// This believed not now necessary, so commented out.
66//# pragma warning(disable: 4702) // unreachable code.
67// in domain_error_imp in error_handling.
68#endif
69
70namespace boost
71{
72 namespace math
73 {
74 namespace negative_binomial_detail
75 {
76 // Common error checking routines for negative binomial distribution functions:
77 template <class RealType, class Policy>
78 inline bool check_successes(const char* function, const RealType& r, RealType* result, const Policy& pol)
79 {
80 if( !(boost::math::isfinite)(r) || (r <= 0) )
81 {
82 *result = policies::raise_domain_error<RealType>(
83 function,
84 "Number of successes argument is %1%, but must be > 0 !", r, pol);
85 return false;
86 }
87 return true;
88 }
89 template <class RealType, class Policy>
90 inline bool check_success_fraction(const char* function, const RealType& p, RealType* result, const Policy& pol)
91 {
92 if( !(boost::math::isfinite)(p) || (p < 0) || (p > 1) )
93 {
94 *result = policies::raise_domain_error<RealType>(
95 function,
96 "Success fraction argument is %1%, but must be >= 0 and <= 1 !", p, pol);
97 return false;
98 }
99 return true;
100 }
101 template <class RealType, class Policy>
102 inline bool check_dist(const char* function, const RealType& r, const RealType& p, RealType* result, const Policy& pol)
103 {
104 return check_success_fraction(function, p, result, pol)
105 && check_successes(function, r, result, pol);
106 }
107 template <class RealType, class Policy>
108 inline bool check_dist_and_k(const char* function, const RealType& r, const RealType& p, RealType k, RealType* result, const Policy& pol)
109 {
110 if(check_dist(function, r, p, result, pol) == false)
111 {
112 return false;
113 }
114 if( !(boost::math::isfinite)(k) || (k < 0) )
115 { // Check k failures.
116 *result = policies::raise_domain_error<RealType>(
117 function,
118 "Number of failures argument is %1%, but must be >= 0 !", k, pol);
119 return false;
120 }
121 return true;
122 } // Check_dist_and_k
123
124 template <class RealType, class Policy>
125 inline bool check_dist_and_prob(const char* function, const RealType& r, RealType p, RealType prob, RealType* result, const Policy& pol)
126 {
127 if((check_dist(function, r, p, result, pol) && detail::check_probability(function, prob, result, pol)) == false)
128 {
129 return false;
130 }
131 return true;
132 } // check_dist_and_prob
133 } // namespace negative_binomial_detail
134
135 template <class RealType = double, class Policy = policies::policy<> >
136 class negative_binomial_distribution
137 {
138 public:
139 typedef RealType value_type;
140 typedef Policy policy_type;
141
142 negative_binomial_distribution(RealType r, RealType p) : m_r(r), m_p(p)
143 { // Constructor.
144 RealType result;
145 negative_binomial_detail::check_dist(
146 "negative_binomial_distribution<%1%>::negative_binomial_distribution",
147 m_r, // Check successes r > 0.
148 m_p, // Check success_fraction 0 <= p <= 1.
149 &result, Policy());
150 } // negative_binomial_distribution constructor.
151
152 // Private data getter class member functions.
153 RealType success_fraction() const
154 { // Probability of success as fraction in range 0 to 1.
155 return m_p;
156 }
157 RealType successes() const
158 { // Total number of successes r.
159 return m_r;
160 }
161
162 static RealType find_lower_bound_on_p(
163 RealType trials,
164 RealType successes,
165 RealType alpha) // alpha 0.05 equivalent to 95% for one-sided test.
166 {
167 static const char* function = "boost::math::negative_binomial<%1%>::find_lower_bound_on_p";
168 RealType result = 0; // of error checks.
169 RealType failures = trials - successes;
170 if(false == detail::check_probability(function, alpha, &result, Policy())
171 && negative_binomial_detail::check_dist_and_k(
172 function, successes, RealType(0), failures, &result, Policy()))
173 {
174 return result;
175 }
176 // Use complement ibeta_inv function for lower bound.
177 // This is adapted from the corresponding binomial formula
178 // here: http://www.itl.nist.gov/div898/handbook/prc/section2/prc241.htm
179 // This is a Clopper-Pearson interval, and may be overly conservative,
180 // see also "A Simple Improved Inferential Method for Some
181 // Discrete Distributions" Yong CAI and K. KRISHNAMOORTHY
182 // http://www.ucs.louisiana.edu/~kxk4695/Discrete_new.pdf
183 //
184 return ibeta_inv(successes, failures + 1, alpha, static_cast<RealType*>(0), Policy());
185 } // find_lower_bound_on_p
186
187 static RealType find_upper_bound_on_p(
188 RealType trials,
189 RealType successes,
190 RealType alpha) // alpha 0.05 equivalent to 95% for one-sided test.
191 {
192 static const char* function = "boost::math::negative_binomial<%1%>::find_upper_bound_on_p";
193 RealType result = 0; // of error checks.
194 RealType failures = trials - successes;
195 if(false == negative_binomial_detail::check_dist_and_k(
196 function, successes, RealType(0), failures, &result, Policy())
197 && detail::check_probability(function, alpha, &result, Policy()))
198 {
199 return result;
200 }
201 if(failures == 0)
202 return 1;
203 // Use complement ibetac_inv function for upper bound.
204 // Note adjusted failures value: *not* failures+1 as usual.
205 // This is adapted from the corresponding binomial formula
206 // here: http://www.itl.nist.gov/div898/handbook/prc/section2/prc241.htm
207 // This is a Clopper-Pearson interval, and may be overly conservative,
208 // see also "A Simple Improved Inferential Method for Some
209 // Discrete Distributions" Yong CAI and K. KRISHNAMOORTHY
210 // http://www.ucs.louisiana.edu/~kxk4695/Discrete_new.pdf
211 //
212 return ibetac_inv(successes, failures, alpha, static_cast<RealType*>(0), Policy());
213 } // find_upper_bound_on_p
214
215 // Estimate number of trials :
216 // "How many trials do I need to be P% sure of seeing k or fewer failures?"
217
218 static RealType find_minimum_number_of_trials(
219 RealType k, // number of failures (k >= 0).
220 RealType p, // success fraction 0 <= p <= 1.
221 RealType alpha) // risk level threshold 0 <= alpha <= 1.
222 {
223 static const char* function = "boost::math::negative_binomial<%1%>::find_minimum_number_of_trials";
224 // Error checks:
225 RealType result = 0;
226 if(false == negative_binomial_detail::check_dist_and_k(
227 function, RealType(1), p, k, &result, Policy())
228 && detail::check_probability(function, alpha, &result, Policy()))
229 { return result; }
230
231 result = ibeta_inva(k + 1, p, alpha, Policy()); // returns n - k
232 return result + k;
233 } // RealType find_number_of_failures
234
235 static RealType find_maximum_number_of_trials(
236 RealType k, // number of failures (k >= 0).
237 RealType p, // success fraction 0 <= p <= 1.
238 RealType alpha) // risk level threshold 0 <= alpha <= 1.
239 {
240 static const char* function = "boost::math::negative_binomial<%1%>::find_maximum_number_of_trials";
241 // Error checks:
242 RealType result = 0;
243 if(false == negative_binomial_detail::check_dist_and_k(
244 function, RealType(1), p, k, &result, Policy())
245 && detail::check_probability(function, alpha, &result, Policy()))
246 { return result; }
247
248 result = ibetac_inva(k + 1, p, alpha, Policy()); // returns n - k
249 return result + k;
250 } // RealType find_number_of_trials complemented
251
252 private:
253 RealType m_r; // successes.
254 RealType m_p; // success_fraction
255 }; // template <class RealType, class Policy> class negative_binomial_distribution
256
257 typedef negative_binomial_distribution<double> negative_binomial; // Reserved name of type double.
258
259 template <class RealType, class Policy>
260 inline const std::pair<RealType, RealType> range(const negative_binomial_distribution<RealType, Policy>& /* dist */)
261 { // Range of permissible values for random variable k.
262 using boost::math::tools::max_value;
263 return std::pair<RealType, RealType>(static_cast<RealType>(0), max_value<RealType>()); // max_integer?
264 }
265
266 template <class RealType, class Policy>
267 inline const std::pair<RealType, RealType> support(const negative_binomial_distribution<RealType, Policy>& /* dist */)
268 { // Range of supported values for random variable k.
269 // This is range where cdf rises from 0 to 1, and outside it, the pdf is zero.
270 using boost::math::tools::max_value;
271 return std::pair<RealType, RealType>(static_cast<RealType>(0), max_value<RealType>()); // max_integer?
272 }
273
274 template <class RealType, class Policy>
275 inline RealType mean(const negative_binomial_distribution<RealType, Policy>& dist)
276 { // Mean of Negative Binomial distribution = r(1-p)/p.
277 return dist.successes() * (1 - dist.success_fraction() ) / dist.success_fraction();
278 } // mean
279
280 //template <class RealType, class Policy>
281 //inline RealType median(const negative_binomial_distribution<RealType, Policy>& dist)
282 //{ // Median of negative_binomial_distribution is not defined.
283 // return policies::raise_domain_error<RealType>(BOOST_CURRENT_FUNCTION, "Median is not implemented, result is %1%!", std::numeric_limits<RealType>::quiet_NaN());
284 //} // median
285 // Now implemented via quantile(half) in derived accessors.
286
287 template <class RealType, class Policy>
288 inline RealType mode(const negative_binomial_distribution<RealType, Policy>& dist)
289 { // Mode of Negative Binomial distribution = floor[(r-1) * (1 - p)/p]
290 BOOST_MATH_STD_USING // ADL of std functions.
291 return floor((dist.successes() -1) * (1 - dist.success_fraction()) / dist.success_fraction());
292 } // mode
293
294 template <class RealType, class Policy>
295 inline RealType skewness(const negative_binomial_distribution<RealType, Policy>& dist)
296 { // skewness of Negative Binomial distribution = 2-p / (sqrt(r(1-p))
297 BOOST_MATH_STD_USING // ADL of std functions.
298 RealType p = dist.success_fraction();
299 RealType r = dist.successes();
300
301 return (2 - p) /
302 sqrt(r * (1 - p));
303 } // skewness
304
305 template <class RealType, class Policy>
306 inline RealType kurtosis(const negative_binomial_distribution<RealType, Policy>& dist)
307 { // kurtosis of Negative Binomial distribution
308 // http://en.wikipedia.org/wiki/Negative_binomial is kurtosis_excess so add 3
309 RealType p = dist.success_fraction();
310 RealType r = dist.successes();
311 return 3 + (6 / r) + ((p * p) / (r * (1 - p)));
312 } // kurtosis
313
314 template <class RealType, class Policy>
315 inline RealType kurtosis_excess(const negative_binomial_distribution<RealType, Policy>& dist)
316 { // kurtosis excess of Negative Binomial distribution
317 // http://mathworld.wolfram.com/Kurtosis.html table of kurtosis_excess
318 RealType p = dist.success_fraction();
319 RealType r = dist.successes();
320 return (6 - p * (6-p)) / (r * (1-p));
321 } // kurtosis_excess
322
323 template <class RealType, class Policy>
324 inline RealType variance(const negative_binomial_distribution<RealType, Policy>& dist)
325 { // Variance of Binomial distribution = r (1-p) / p^2.
326 return dist.successes() * (1 - dist.success_fraction())
327 / (dist.success_fraction() * dist.success_fraction());
328 } // variance
329
330 // RealType standard_deviation(const negative_binomial_distribution<RealType, Policy>& dist)
331 // standard_deviation provided by derived accessors.
332 // RealType hazard(const negative_binomial_distribution<RealType, Policy>& dist)
333 // hazard of Negative Binomial distribution provided by derived accessors.
334 // RealType chf(const negative_binomial_distribution<RealType, Policy>& dist)
335 // chf of Negative Binomial distribution provided by derived accessors.
336
337 template <class RealType, class Policy>
338 inline RealType pdf(const negative_binomial_distribution<RealType, Policy>& dist, const RealType& k)
339 { // Probability Density/Mass Function.
340 BOOST_FPU_EXCEPTION_GUARD
341
342 static const char* function = "boost::math::pdf(const negative_binomial_distribution<%1%>&, %1%)";
343
344 RealType r = dist.successes();
345 RealType p = dist.success_fraction();
346 RealType result = 0;
347 if(false == negative_binomial_detail::check_dist_and_k(
348 function,
349 r,
350 dist.success_fraction(),
351 k,
352 &result, Policy()))
353 {
354 return result;
355 }
356
357 result = (p/(r + k)) * ibeta_derivative(r, static_cast<RealType>(k+1), p, Policy());
358 // Equivalent to:
359 // return exp(lgamma(r + k) - lgamma(r) - lgamma(k+1)) * pow(p, r) * pow((1-p), k);
360 return result;
361 } // negative_binomial_pdf
362
363 template <class RealType, class Policy>
364 inline RealType cdf(const negative_binomial_distribution<RealType, Policy>& dist, const RealType& k)
365 { // Cumulative Distribution Function of Negative Binomial.
366 static const char* function = "boost::math::cdf(const negative_binomial_distribution<%1%>&, %1%)";
367 using boost::math::ibeta; // Regularized incomplete beta function.
368 // k argument may be integral, signed, or unsigned, or floating point.
369 // If necessary, it has already been promoted from an integral type.
370 RealType p = dist.success_fraction();
371 RealType r = dist.successes();
372 // Error check:
373 RealType result = 0;
374 if(false == negative_binomial_detail::check_dist_and_k(
375 function,
376 r,
377 dist.success_fraction(),
378 k,
379 &result, Policy()))
380 {
381 return result;
382 }
383
384 RealType probability = ibeta(r, static_cast<RealType>(k+1), p, Policy());
385 // Ip(r, k+1) = ibeta(r, k+1, p)
386 return probability;
387 } // cdf Cumulative Distribution Function Negative Binomial.
388
389 template <class RealType, class Policy>
390 inline RealType cdf(const complemented2_type<negative_binomial_distribution<RealType, Policy>, RealType>& c)
391 { // Complemented Cumulative Distribution Function Negative Binomial.
392
393 static const char* function = "boost::math::cdf(const negative_binomial_distribution<%1%>&, %1%)";
394 using boost::math::ibetac; // Regularized incomplete beta function complement.
395 // k argument may be integral, signed, or unsigned, or floating point.
396 // If necessary, it has already been promoted from an integral type.
397 RealType const& k = c.param;
398 negative_binomial_distribution<RealType, Policy> const& dist = c.dist;
399 RealType p = dist.success_fraction();
400 RealType r = dist.successes();
401 // Error check:
402 RealType result = 0;
403 if(false == negative_binomial_detail::check_dist_and_k(
404 function,
405 r,
406 p,
407 k,
408 &result, Policy()))
409 {
410 return result;
411 }
412 // Calculate cdf negative binomial using the incomplete beta function.
413 // Use of ibeta here prevents cancellation errors in calculating
414 // 1-p if p is very small, perhaps smaller than machine epsilon.
415 // Ip(k+1, r) = ibetac(r, k+1, p)
416 // constrain_probability here?
417 RealType probability = ibetac(r, static_cast<RealType>(k+1), p, Policy());
418 // Numerical errors might cause probability to be slightly outside the range < 0 or > 1.
419 // This might cause trouble downstream, so warn, possibly throw exception, but constrain to the limits.
420 return probability;
421 } // cdf Cumulative Distribution Function Negative Binomial.
422
423 template <class RealType, class Policy>
424 inline RealType quantile(const negative_binomial_distribution<RealType, Policy>& dist, const RealType& P)
425 { // Quantile, percentile/100 or Percent Point Negative Binomial function.
426 // Return the number of expected failures k for a given probability p.
427
428 // Inverse cumulative Distribution Function or Quantile (percentile / 100) of negative_binomial Probability.
429 // MAthCAD pnbinom return smallest k such that negative_binomial(k, n, p) >= probability.
430 // k argument may be integral, signed, or unsigned, or floating point.
431 // BUT Cephes/CodeCogs says: finds argument p (0 to 1) such that cdf(k, n, p) = y
432 static const char* function = "boost::math::quantile(const negative_binomial_distribution<%1%>&, %1%)";
433 BOOST_MATH_STD_USING // ADL of std functions.
434
435 RealType p = dist.success_fraction();
436 RealType r = dist.successes();
437 // Check dist and P.
438 RealType result = 0;
439 if(false == negative_binomial_detail::check_dist_and_prob
440 (function, r, p, P, &result, Policy()))
441 {
442 return result;
443 }
444
445 // Special cases.
446 if (P == 1)
447 { // Would need +infinity failures for total confidence.
448 result = policies::raise_overflow_error<RealType>(
449 function,
450 "Probability argument is 1, which implies infinite failures !", Policy());
451 return result;
452 // usually means return +std::numeric_limits<RealType>::infinity();
453 // unless #define BOOST_MATH_THROW_ON_OVERFLOW_ERROR
454 }
455 if (P == 0)
456 { // No failures are expected if P = 0.
457 return 0; // Total trials will be just dist.successes.
458 }
459 if (P <= pow(dist.success_fraction(), dist.successes()))
460 { // p <= pdf(dist, 0) == cdf(dist, 0)
461 return 0;
462 }
463 if(p == 0)
464 { // Would need +infinity failures for total confidence.
465 result = policies::raise_overflow_error<RealType>(
466 function,
467 "Success fraction is 0, which implies infinite failures !", Policy());
468 return result;
469 // usually means return +std::numeric_limits<RealType>::infinity();
470 // unless #define BOOST_MATH_THROW_ON_OVERFLOW_ERROR
471 }
472 /*
473 // Calculate quantile of negative_binomial using the inverse incomplete beta function.
474 using boost::math::ibeta_invb;
475 return ibeta_invb(r, p, P, Policy()) - 1; //
476 */
477 RealType guess = 0;
478 RealType factor = 5;
479 if(r * r * r * P * p > 0.005)
480 guess = detail::inverse_negative_binomial_cornish_fisher(r, p, RealType(1-p), P, RealType(1-P), Policy());
481
482 if(guess < 10)
483 {
484 //
485 // Cornish-Fisher Negative binomial approximation not accurate in this area:
486 //
487 guess = (std::min)(RealType(r * 2), RealType(10));
488 }
489 else
490 factor = (1-P < sqrt(tools::epsilon<RealType>())) ? 2 : (guess < 20 ? 1.2f : 1.1f);
491 BOOST_MATH_INSTRUMENT_CODE("guess = " << guess);
492 //
493 // Max iterations permitted:
494 //
495 boost::uintmax_t max_iter = policies::get_max_root_iterations<Policy>();
496 typedef typename Policy::discrete_quantile_type discrete_type;
497 return detail::inverse_discrete_quantile(
498 dist,
499 P,
500 false,
501 guess,
502 factor,
503 RealType(1),
504 discrete_type(),
505 max_iter);
506 } // RealType quantile(const negative_binomial_distribution dist, p)
507
508 template <class RealType, class Policy>
509 inline RealType quantile(const complemented2_type<negative_binomial_distribution<RealType, Policy>, RealType>& c)
510 { // Quantile or Percent Point Binomial function.
511 // Return the number of expected failures k for a given
512 // complement of the probability Q = 1 - P.
513 static const char* function = "boost::math::quantile(const negative_binomial_distribution<%1%>&, %1%)";
514 BOOST_MATH_STD_USING
515
516 // Error checks:
517 RealType Q = c.param;
518 const negative_binomial_distribution<RealType, Policy>& dist = c.dist;
519 RealType p = dist.success_fraction();
520 RealType r = dist.successes();
521 RealType result = 0;
522 if(false == negative_binomial_detail::check_dist_and_prob(
523 function,
524 r,
525 p,
526 Q,
527 &result, Policy()))
528 {
529 return result;
530 }
531
532 // Special cases:
533 //
534 if(Q == 1)
535 { // There may actually be no answer to this question,
536 // since the probability of zero failures may be non-zero,
537 return 0; // but zero is the best we can do:
538 }
539 if(Q == 0)
540 { // Probability 1 - Q == 1 so infinite failures to achieve certainty.
541 // Would need +infinity failures for total confidence.
542 result = policies::raise_overflow_error<RealType>(
543 function,
544 "Probability argument complement is 0, which implies infinite failures !", Policy());
545 return result;
546 // usually means return +std::numeric_limits<RealType>::infinity();
547 // unless #define BOOST_MATH_THROW_ON_OVERFLOW_ERROR
548 }
549 if (-Q <= boost::math::powm1(dist.success_fraction(), dist.successes(), Policy()))
550 { // q <= cdf(complement(dist, 0)) == pdf(dist, 0)
551 return 0; //
552 }
553 if(p == 0)
554 { // Success fraction is 0 so infinite failures to achieve certainty.
555 // Would need +infinity failures for total confidence.
556 result = policies::raise_overflow_error<RealType>(
557 function,
558 "Success fraction is 0, which implies infinite failures !", Policy());
559 return result;
560 // usually means return +std::numeric_limits<RealType>::infinity();
561 // unless #define BOOST_MATH_THROW_ON_OVERFLOW_ERROR
562 }
563 //return ibetac_invb(r, p, Q, Policy()) -1;
564 RealType guess = 0;
565 RealType factor = 5;
566 if(r * r * r * (1-Q) * p > 0.005)
567 guess = detail::inverse_negative_binomial_cornish_fisher(r, p, RealType(1-p), RealType(1-Q), Q, Policy());
568
569 if(guess < 10)
570 {
571 //
572 // Cornish-Fisher Negative binomial approximation not accurate in this area:
573 //
574 guess = (std::min)(RealType(r * 2), RealType(10));
575 }
576 else
577 factor = (Q < sqrt(tools::epsilon<RealType>())) ? 2 : (guess < 20 ? 1.2f : 1.1f);
578 BOOST_MATH_INSTRUMENT_CODE("guess = " << guess);
579 //
580 // Max iterations permitted:
581 //
582 boost::uintmax_t max_iter = policies::get_max_root_iterations<Policy>();
583 typedef typename Policy::discrete_quantile_type discrete_type;
584 return detail::inverse_discrete_quantile(
585 dist,
586 Q,
587 true,
588 guess,
589 factor,
590 RealType(1),
591 discrete_type(),
592 max_iter);
593 } // quantile complement
594
595 } // namespace math
596} // namespace boost
597
598// This include must be at the end, *after* the accessors
599// for this distribution have been defined, in order to
600// keep compilers that support two-phase lookup happy.
601#include <boost/math/distributions/detail/derived_accessors.hpp>
602
603#if defined (BOOST_MSVC)
604# pragma warning(pop)
605#endif
606
607#endif // BOOST_MATH_SPECIAL_NEGATIVE_BINOMIAL_HPP