WSJT-X/boost/libs/math/doc/sf/igamma_inv.qbk

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[section:igamma_inv Incomplete Gamma Function Inverses]
[h4 Synopsis]
``
#include <boost/math/special_functions/gamma.hpp>
``
namespace boost{ namespace math{
template <class T1, class T2>
``__sf_result`` gamma_q_inv(T1 a, T2 q);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_q_inv(T1 a, T2 q, const ``__Policy``&);
template <class T1, class T2>
``__sf_result`` gamma_p_inv(T1 a, T2 p);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_p_inv(T1 a, T2 p, const ``__Policy``&);
template <class T1, class T2>
``__sf_result`` gamma_q_inva(T1 x, T2 q);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_q_inva(T1 x, T2 q, const ``__Policy``&);
template <class T1, class T2>
``__sf_result`` gamma_p_inva(T1 x, T2 p);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_p_inva(T1 x, T2 p, const ``__Policy``&);
}} // namespaces
[h4 Description]
There are four [@http://mathworld.wolfram.com/IncompleteGammaFunction.html incomplete gamma function]
inverses which either compute
/x/ given /a/ and /p/ or /q/,
or else compute /a/ given /x/ and either /p/ or /q/.
The return type of these functions is computed using the __arg_promotion_rules
when T1 and T2 are different types, otherwise the return type is simply T1.
[optional_policy]
[tip When people normally talk about the inverse of the incomplete
gamma function, they are talking about inverting on parameter /x/.
These are implemented here as gamma_p_inv and gamma_q_inv, and are by
far the most efficient of the inverses presented here.
The inverse on the /a/ parameter finds use in some statistical
applications but has to be computed by rather brute force numerical
techniques and is consequently several times slower.
These are implemented here as gamma_p_inva and gamma_q_inva.]
template <class T1, class T2>
``__sf_result`` gamma_q_inv(T1 a, T2 q);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_q_inv(T1 a, T2 q, const ``__Policy``&);
Returns a value x such that: `q = gamma_q(a, x);`
Requires: /a > 0/ and /1 >= p,q >= 0/.
template <class T1, class T2>
``__sf_result`` gamma_p_inv(T1 a, T2 p);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_p_inv(T1 a, T2 p, const ``__Policy``&);
Returns a value x such that: `p = gamma_p(a, x);`
Requires: /a > 0/ and /1 >= p,q >= 0/.
template <class T1, class T2>
``__sf_result`` gamma_q_inva(T1 x, T2 q);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_q_inva(T1 x, T2 q, const ``__Policy``&);
Returns a value a such that: `q = gamma_q(a, x);`
Requires: /x > 0/ and /1 >= p,q >= 0/.
template <class T1, class T2>
``__sf_result`` gamma_p_inva(T1 x, T2 p);
template <class T1, class T2, class ``__Policy``>
``__sf_result`` gamma_p_inva(T1 x, T2 p, const ``__Policy``&);
Returns a value a such that: `p = gamma_p(a, x);`
Requires: /x > 0/ and /1 >= p,q >= 0/.
[h4 Accuracy]
The accuracy of these functions doesn't vary much by platform or by
the type T. Given that these functions are computed by iterative methods,
they are deliberately "detuned" so as not to be too accurate: it is in
any case impossible for these function to be more accurate than the
regular forward incomplete gamma functions. In practice, the accuracy
of these functions is very similar to that of __gamma_p and __gamma_q
functions:
[table_gamma_p_inv]
[table_gamma_q_inv]
[table_gamma_p_inva]
[table_gamma_q_inva]
[h4 Testing]
There are two sets of tests:
* Basic sanity checks attempt to "round-trip" from
/a/ and /x/ to /p/ or /q/ and back again. These tests have quite
generous tolerances: in general both the incomplete gamma, and its
inverses, change so rapidly that round tripping to more than a couple
of significant digits isn't possible. This is especially true when
/p/ or /q/ is very near one: in this case there isn't enough
"information content" in the input to the inverse function to get
back where you started.
* Accuracy checks using high precision test values. These measure
the accuracy of the result, given exact input values.
[h4 Implementation]
The functions gamma_p_inv and [@http://functions.wolfram.com/GammaBetaErf/InverseGammaRegularized/ gamma_q_inv]
share a common implementation.
First an initial approximation is computed using the methodology described
in:
[@http://portal.acm.org/citation.cfm?id=23109&coll=portal&dl=ACM
A. R. Didonato and A. H. Morris, Computation of the Incomplete Gamma
Function Ratios and their Inverse, ACM Trans. Math. Software 12 (1986), 377-393.]
Finally, the last few bits are cleaned up using Halley iteration, the iteration
limit is set to 2/3 of the number of bits in T, which by experiment is
sufficient to ensure that the inverses are at least as accurate as the normal
incomplete gamma functions. In testing, no more than 3 iterations are required
to produce a result as accurate as the forward incomplete gamma function, and
in many cases only one iteration is required.
The functions gamma_p_inva and gamma_q_inva also share a common implementation
but are handled separately from gamma_p_inv and gamma_q_inv.
An initial approximation for /a/ is computed very crudely so that
/gamma_p(a, x) ~ 0.5/, this value is then used as a starting point
for a generic derivative-free root finding algorithm. As a consequence,
these two functions are rather more expensive to compute than the
gamma_p_inv or gamma_q_inv functions. Even so, the root is usually found
in fewer than 10 iterations.
[endsect][/section The Incomplete Gamma Function Inverses]
[/
Copyright 2006 John Maddock and Paul A. Bristow.
Distributed under the Boost Software License, Version 1.0.
(See accompanying file LICENSE_1_0.txt or copy at
http://www.boost.org/LICENSE_1_0.txt).
]