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665 lines
28 KiB
Plaintext
[section:sf_implementation Additional Implementation Notes]
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The majority of the implementation notes are included with the documentation
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of each function or distribution. The notes here are of a more general nature,
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and reflect more the general implementation philosophy used.
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[h4 Implementation philosophy]
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"First be right, then be fast."
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There will always be potential compromises
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to be made between speed and accuracy.
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It may be possible to find faster methods,
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particularly for certain limited ranges of arguments,
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but for most applications of math functions and distributions,
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we judge that speed is rarely as important as accuracy.
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So our priority is accuracy.
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To permit evaluation of accuracy of the special functions,
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production of extremely accurate tables of test values
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has received considerable effort.
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(It also required much CPU effort -
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there was some danger of molten plastic dripping from the bottom of JM's laptop,
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so instead, PAB's Dual-core desktop was kept 50% busy for [*days]
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calculating some tables of test values!)
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For a specific RealType, say `float` or `double`,
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it may be possible to find approximations for some functions
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that are simpler and thus faster, but less accurate
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(perhaps because there are no refining iterations,
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for example, when calculating inverse functions).
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If these prove accurate enough to be "fit for his purpose",
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then a user may substitute his custom specialization.
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For example, there are approximations dating back from times
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when computation was a [*lot] more expensive:
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H Goldberg and H Levine, Approximate formulas for
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percentage points and normalisation of t and chi squared,
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Ann. Math. Stat., 17(4), 216 - 225 (Dec 1946).
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A H Carter, Approximations to percentage points of the z-distribution,
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Biometrika 34(2), 352 - 358 (Dec 1947).
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These could still provide sufficient accuracy for some speed-critical applications.
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[h4 Accuracy and Representation of Test Values]
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In order to be accurate enough for as many as possible real types,
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constant values are given to 50 decimal digits if available
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(though many sources proved only accurate near to 64-bit double precision).
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Values are specified as long double types by appending L,
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unless they are exactly representable, for example integers, or binary fractions like 0.125.
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This avoids the risk of loss of accuracy converting from double, the default type.
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Values are used after `static_cast<RealType>(1.2345L)`
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to provide the appropriate RealType for spot tests.
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Functions that return constants values, like kurtosis for example, are written as
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`static_cast<RealType>(-3) / 5;`
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to provide the most accurate value
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that the compiler can compute for the real type.
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(The denominator is an integer and so will be promoted exactly).
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So tests for one third, *not* exactly representable with radix two floating-point,
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(should) use, for example:
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`static_cast<RealType>(1) / 3;`
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If a function is very sensitive to changes in input,
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specifying an inexact value as input (such as 0.1) can throw
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the result off by a noticeable amount: 0.1f is "wrong"
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by ~1e-7 for example (because 0.1 has no exact binary representation).
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That is why exact binary values - halves, quarters, and eighths etc -
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are used in test code along with the occasional fraction `a/b` with `b`
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a power of two (in order to ensure that the result is an exactly
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representable binary value).
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[h4 Tolerance of Tests]
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The tolerances need to be set to the maximum of:
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* Some epsilon value.
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* The accuracy of the data (often only near 64-bit double).
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Otherwise when long double has more digits than the test data, then no
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amount of tweaking an epsilon based tolerance will work.
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A common problem is when tolerances that are suitable for implementations
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like Microsoft VS.NET where double and long double are the same size:
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tests fail on other systems where long double is more accurate than double.
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Check first that the suffix L is present, and then that the tolerance is big enough.
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[h4 Handling Unsuitable Arguments]
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In
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[@http://www.open-std.org/jtc1/sc22/wg21/docs/papers/2004/n1665.pdf Errors in Mathematical Special Functions], J. Marraffino & M. Paterno
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it is proposed that signalling a domain error is mandatory
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when the argument would give an mathematically undefined result.
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*Guideline 1
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[:A mathematical function is said to be defined at a point a = (a1, a2, . . .)
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if the limits as x = (x1, x2, . . .) 'approaches a from all directions agree'.
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The defined value may be any number, or +infinity, or -infinity.]
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Put crudely, if the function goes to + infinity
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and then emerges 'round-the-back' with - infinity,
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it is NOT defined.
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[:The library function which approximates a mathematical function shall signal a domain error
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whenever evaluated with argument values for which the mathematical function is undefined.]
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*Guideline 2
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[:The library function which approximates a mathematical function
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shall signal a domain error whenever evaluated with argument values
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for which the mathematical function obtains a non-real value.]
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This implementation is believed to follow these proposals and to assist compatibility with
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['ISO/IEC 9899:1999 Programming languages - C]
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and with the
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[@http://www.open-std.org/jtc1/sc22/wg21/docs/papers/2005/n1836.pdf Draft Technical Report on C++ Library Extensions, 2005-06-24, section 5.2.1, paragraph 5].
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[link math_toolkit.error_handling See also domain_error].
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See __policy_ref for details of the error handling policies that should allow
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a user to comply with any of these recommendations, as well as other behaviour.
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See [link math_toolkit.error_handling error handling]
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for a detailed explanation of the mechanism, and
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[link math_toolkit.stat_tut.weg.error_eg error_handling example]
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and
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[@../../example/error_handling_example.cpp error_handling_example.cpp]
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[caution If you enable throw but do NOT have try & catch block,
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then the program will terminate with an uncaught exception and probably abort.
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Therefore to get the benefit of helpful error messages, enabling *all* exceptions
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*and* using try&catch is recommended for all applications.
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However, for simplicity, this is not done for most examples.]
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[h4 Handling of Functions that are Not Mathematically defined]
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Functions that are not mathematically defined,
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like the Cauchy mean, fail to compile by default.
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A [link math_toolkit.pol_ref.assert_undefined policy]
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allows control of this.
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If the policy is to permit undefined functions, then calling them
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throws a domain error, by default. But the error policy can be set
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to not throw, and to return NaN instead. For example,
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`#define BOOST_MATH_DOMAIN_ERROR_POLICY ignore_error`
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appears before the first Boost include,
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then if the un-implemented function is called,
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mean(cauchy<>()) will return std::numeric_limits<T>::quiet_NaN().
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[warning If `std::numeric_limits<T>::has_quiet_NaN` is false
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(for example, if T is a User-defined type without NaN support),
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then an exception will always be thrown when a domain error occurs.
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Catching exceptions is therefore strongly recommended.]
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[h4 Median of distributions]
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There are many distributions for which we have been unable to find an analytic formula,
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and this has deterred us from implementing
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[@http://en.wikipedia.org/wiki/Median median functions], the mid-point in a list of values.
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However a useful numerical approximation for distribution `dist`
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is available as usual as an accessor non-member function median using `median(dist)`,
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that may be evaluated (in the absence of an analytic formula) by calling
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`quantile(dist, 0.5)` (this is the /mathematical/ definition of course).
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[@http://www.amstat.org/publications/jse/v13n2/vonhippel.html Mean, Median, and Skew, Paul T von Hippel]
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[@http://documents.wolfram.co.jp/teachersedition/MathematicaBook/24.5.html Descriptive Statistics,]
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[@http://documents.wolfram.co.jp/v5/Add-onsLinks/StandardPackages/Statistics/DescriptiveStatistics.html and ]
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[@http://documents.wolfram.com/v5/TheMathematicaBook/AdvancedMathematicsInMathematica/NumericalOperationsOnData/3.8.1.html
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Mathematica Basic Statistics.] give more detail, in particular for discrete distributions.
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[h4 Handling of Floating-Point Infinity]
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Some functions and distributions are well defined with + or - infinity as
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argument(s), but after some experiments with handling infinite arguments
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as special cases, we concluded that it was generally more useful to forbid this,
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and instead to return the result of __domain_error.
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Handling infinity as special cases is additionally complicated
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because, unlike built-in types on most - but not all - platforms,
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not all User-Defined Types are
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specialized to provide `std::numeric_limits<RealType>::infinity()`
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and would return zero rather than any representation of infinity.
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The rationale is that non-finiteness may happen because of error
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or overflow in the users code, and it will be more helpful for this
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to be diagnosed promptly rather than just continuing.
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The code also became much more complicated, more error-prone,
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much more work to test, and much less readable.
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However in a few cases, for example normal, where we felt it obvious,
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we have permitted argument(s) to be infinity,
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provided infinity is implemented for the `RealType` on that implementation,
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and it is supported and tested by the distribution.
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The range for these distributions is set to infinity if supported by the platform,
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(by testing `std::numeric_limits<RealType>::has_infinity`)
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else the maximum value provided for the `RealType` by Boost.Math.
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Testing for has_infinity is obviously important for arbitrary precision types
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where infinity makes much less sense than for IEEE754 floating-point.
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So far we have not set `support()` function (only range)
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on the grounds that the PDF is uninteresting/zero for infinities.
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Users who require special handling of infinity (or other specific value) can,
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of course, always intercept this before calling a distribution or function
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and return their own choice of value, or other behavior.
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This will often be simpler than trying to handle the aftermath of the error policy.
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Overflow, underflow, denorm can be handled using __error_policy.
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We have also tried to catch boundary cases where the mathematical specification
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would result in divide by zero or overflow and signalling these similarly.
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What happens at (and near), poles can be controlled through __error_policy.
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[h4 Scale, Shape and Location]
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We considered adding location and scale to the list of functions, for example:
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template <class RealType>
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inline RealType scale(const triangular_distribution<RealType>& dist)
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{
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RealType lower = dist.lower();
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RealType mode = dist.mode();
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RealType upper = dist.upper();
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RealType result; // of checks.
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if(false == detail::check_triangular(BOOST_CURRENT_FUNCTION, lower, mode, upper, &result))
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{
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return result;
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}
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return (upper - lower);
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}
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but found that these concepts are not defined (or their definition too contentious)
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for too many distributions to be generally applicable.
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Because they are non-member functions, they can be added if required.
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[h4 Notes on Implementation of Specific Functions & Distributions]
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* Default parameters for the Triangular Distribution.
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We are uncertain about the best default parameters.
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Some sources suggest that the Standard Triangular Distribution has
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lower = 0, mode = half and upper = 1.
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However as a approximation for the normal distribution,
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the most common usage, lower = -1, mode = 0 and upper = 1 would be more suitable.
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[h4 Rational Approximations Used]
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Some of the special functions in this library are implemented via
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rational approximations. These are either taken from the literature,
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or devised by John Maddock using
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[link math_toolkit.internals.minimax our Remez code].
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Rational rather than Polynomial approximations are used to ensure
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accuracy: polynomial approximations are often wonderful up to
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a certain level of accuracy, but then quite often fail to provide much greater
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accuracy no matter how many more terms are added.
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Our own approximations were devised either for added accuracy
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(to support 128-bit long doubles for example), or because
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literature methods were unavailable or under non-BSL
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compatible license. Our Remez code is known to produce good
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agreement with literature results in fairly simple "toy" cases.
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All approximations were checked
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for convergence and to ensure that
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they were not ill-conditioned (the coefficients can give a
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theoretically good solution, but the resulting rational function
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may be un-computable at fixed precision).
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Recomputing using different
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Remez implementations may well produce differing coefficients: the
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problem is well known to be ill conditioned in general, and our Remez implementation
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often found a broad and ill-defined minima for many of these approximations
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(of course for simple "toy" examples like approximating `exp` the minima
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is well defined, and the coefficients should agree no matter whose Remez
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implementation is used). This should not in general effect the validity
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of the approximations: there's good literature supporting the idea that
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coefficients can be "in error" without necessarily adversely effecting
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the result. Note that "in error" has a special meaning in this context,
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see [@http://front.math.ucdavis.edu/0101.5042
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"Approximate construction of rational approximations and the effect
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of error autocorrection.", Grigori Litvinov, eprint arXiv:math/0101042].
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Therefore the coefficients still need to be accurately calculated, even if they can
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be in error compared to the "true" minimax solution.
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[h4 Representation of Mathematical Constants]
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A macro BOOST_DEFINE_MATH_CONSTANT in constants.hpp is used
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to provide high accuracy constants to mathematical functions and distributions,
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since it is important to provide values uniformly for both built-in
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float, double and long double types,
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and for User Defined types in __multiprecision like __cpp_dec_float.
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and others like NTL::quad_float and NTL::RR.
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To permit calculations in this Math ToolKit and its tests, (and elsewhere)
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at about 100 decimal digits with NTL::RR type,
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it is obviously necessary to define constants to this accuracy.
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However, some compilers do not accept decimal digits strings as long as this.
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So the constant is split into two parts, with the 1st containing at least
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long double precision, and the 2nd zero if not needed or known.
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The 3rd part permits an exponent to be provided if necessary (use zero if none) -
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the other two parameters may only contain decimal digits (and sign and decimal point),
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and may NOT include an exponent like 1.234E99 (nor a trailing F or L).
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The second digit string is only used if T is a User-Defined Type,
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when the constant is converted to a long string literal and lexical_casted to type T.
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(This is necessary because you can't use a numeric constant
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since even a long double might not have enough digits).
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For example, pi is defined:
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BOOST_DEFINE_MATH_CONSTANT(pi,
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3.141592653589793238462643383279502884197169399375105820974944,
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5923078164062862089986280348253421170679821480865132823066470938446095505,
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0)
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And used thus:
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using namespace boost::math::constants;
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double diameter = 1.;
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double radius = diameter * pi<double>();
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or boost::math::constants::pi<NTL::RR>()
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Note that it is necessary (if inconvenient) to specify the type explicitly.
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So you cannot write
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double p = boost::math::constants::pi<>(); // could not deduce template argument for 'T'
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Neither can you write:
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double p = boost::math::constants::pi; // Context does not allow for disambiguation of overloaded function
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double p = boost::math::constants::pi(); // Context does not allow for disambiguation of overloaded function
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[h4 Thread safety]
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Reporting of error by setting `errno` should be thread-safe already
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(otherwise none of the std lib math functions would be thread safe?).
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If you turn on reporting of errors via exceptions, `errno` gets left unused anyway.
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For normal C++ usage, the Boost.Math `static const` constants are now thread-safe so
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for built-in real-number types: `float`, `double` and `long double` are all thread safe.
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For User_defined types, for example, __cpp_dec_float,
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the Boost.Math should also be thread-safe,
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(thought we are unsure how to rigorously prove this).
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(Thread safety has received attention in the C++11 Standard revision,
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so hopefully all compilers will do the right thing here at some point.)
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[h4 Sources of Test Data]
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We found a large number of sources of test data.
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We have assumed that these are /"known good"/
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if they agree with the results from our test
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and only consulted other sources for their /'vote'/
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in the case of serious disagreement.
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The accuracy, actual and claimed, vary very widely.
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Only [@http://functions.wolfram.com/ Wolfram Mathematica functions]
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provided a higher accuracy than
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C++ double (64-bit floating-point) and was regarded as
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the most-trusted source by far.
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The __R provided the widest range of distributions,
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but the usual Intel X86 distribution uses 64-but doubles,
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so our use was limited to the 15 to 17 decimal digit accuracy.
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A useful index of sources is:
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[@http://www.sal.hut.fi/Teaching/Resources/ProbStat/table.html
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Web-oriented Teaching Resources in Probability and Statistics]
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[@http://espse.ed.psu.edu/edpsych/faculty/rhale/hale/507Mat/statlets/free/pdist.htm Statlet]:
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Is a Javascript application that calculates and plots probability distributions,
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and provides the most complete range of distributions:
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[:Bernoulli, Binomial, discrete uniform, geometric, hypergeometric,
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negative binomial, Poisson, beta, Cauchy-Lorentz, chi-sequared, Erlang,
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exponential, extreme value, Fisher, gamma, Laplace, logistic,
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lognormal, normal, Parteo, Student's t, triangular, uniform, and Weibull.]
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It calculates pdf, cdf, survivor, log survivor, hazard, tail areas,
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& critical values for 5 tail values.
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It is also the only independent source found for the Weibull distribution;
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unfortunately it appears to suffer from very poor accuracy in areas where
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the underlying special function is known to be difficult to implement.
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[h4 Testing for Invalid Parameters to Functions and Constructors]
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After finding that some 'bad' parameters (like NaN) were not throwing
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a `domain_error` exception as they should, a function
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`check_out_of_range` (in `test_out_of_range.hpp`)
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was devised by JM to check
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(using Boost.Test's BOOST_CHECK_THROW macro)
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that bad parameters passed to constructors and functions throw `domain_error` exceptions.
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Usage is `check_out_of_range< DistributionType >(list-of-params);`
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Where list-of-params is a list of *valid* parameters from which the distribution can be constructed
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- ie the same number of args are passed to the function,
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as are passed to the distribution constructor.
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The values of the parameters are not important, but must be *valid* to pass the constructor checks;
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the default values are suitable, but must be explicitly provided, for example:
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check_out_of_range<extreme_value_distribution<RealType> >(1, 2);
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Checks made are:
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* Infinity or NaN (if available) passed in place of each of the valid params.
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* Infinity or NaN (if available) as a random variable.
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* Out-of-range random variable passed to pdf and cdf
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(ie outside of "range(DistributionType)").
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* Out-of-range probability passed to quantile function and complement.
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but does *not* check finite but out-of-range parameters to the constructor
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because these are specific to each distribution, for example:
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BOOST_CHECK_THROW(pdf(pareto_distribution<RealType>(0, 1), 0), std::domain_error);
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BOOST_CHECK_THROW(pdf(pareto_distribution<RealType>(1, 0), 0), std::domain_error);
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checks `scale` and `shape` parameters are both > 0
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by checking that `domain_error` exception is thrown if either are == 0.
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(Use of `check_out_of_range` function may mean that some previous tests are now redundant).
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It was also noted that if more than one parameter is bad,
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then only the first detected will be reported by the error message.
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[h4 Creating and Managing the Equations]
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Equations that fit on a single line can most easily be produced by inline Quickbook code
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using templates for Unicode Greek and Unicode Math symbols.
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All Greek letter and small set of Math symbols is available at
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/boost-path/libs/math/doc/sf_and_dist/html4_symbols.qbk
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Where equations need to use more than one line, real Math editors were used.
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The primary source for the equations is now
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[@http://www.w3.org/Math/ MathML]: see the
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*.mml files in libs\/math\/doc\/sf_and_dist\/equations\/.
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These are most easily edited by a GUI editor such as
|
|
[@http://mathcast.sourceforge.net/home.html Mathcast],
|
|
please note that the equation editor supplied with Open Office
|
|
currently mangles these files and should not currently be used.
|
|
|
|
Conversion to SVG was achieved using
|
|
[@https://sourceforge.net/projects/svgmath/ SVGMath] and a command line
|
|
such as:
|
|
|
|
[pre
|
|
$for file in *.mml; do
|
|
>/cygdrive/c/Python25/python.exe 'C:\download\open\SVGMath-0.3.1\math2svg.py' \\
|
|
>>$file > $(basename $file .mml).svg
|
|
>done
|
|
]
|
|
|
|
See also the section on "Using Python to run Inkscape" and
|
|
"Using inkscape to convert scalable vector SVG files to Portable Network graphic PNG".
|
|
|
|
Note that SVGMath requires that the mml files are *not* wrapped in an XHTML
|
|
XML wrapper - this is added by Mathcast by default - one workaround is to
|
|
copy an existing mml file and then edit it with Mathcast: the existing
|
|
format should then be preserved. This is a bug in the XML parser used by
|
|
SVGMath which the author is aware of.
|
|
|
|
If necessary the XHTML wrapper can be removed with:
|
|
|
|
[pre cat filename | tr -d "\\r\\n" \| sed -e 's\/.*\\(<math\[^>\]\*>.\*<\/math>\\).\*\/\\1\/' > newfile]
|
|
|
|
Setting up fonts for SVGMath is currently rather tricky, on a Windows XP system
|
|
JM's font setup is the same as the sample config file provided with SVGMath
|
|
but with:
|
|
|
|
[pre
|
|
<!\-\- Double\-struck \-\->
|
|
<mathvariant name\="double\-struck" family\="Mathematica7, Lucida Sans Unicode"\/>
|
|
]
|
|
|
|
changed to:
|
|
|
|
[pre
|
|
<!\-\- Double\-struck \-\->
|
|
<mathvariant name\="double\-struck" family\="Lucida Sans Unicode"\/>
|
|
]
|
|
|
|
Note that unlike the sample config file supplied with SVGMath, this does not
|
|
make use of the [@http://support.wolfram.com/technotes/fonts/windows/latestfonts.html Mathematica 7 font]
|
|
as this lacks sufficient Unicode information
|
|
for it to be used with either SVGMath or XEP "as is".
|
|
|
|
Also note that the SVG files in the repository are almost certainly
|
|
Windows-specific since they reference various Windows Fonts.
|
|
|
|
PNG files can be created from the SVGs using
|
|
[@http://xmlgraphics.apache.org/batik/tools/rasterizer.html Batik]
|
|
and a command such as:
|
|
|
|
[pre java -jar 'C:\download\open\batik-1.7\batik-rasterizer.jar' -dpi 120 *.svg]
|
|
|
|
Or using Inkscape (File, Export bitmap, Drawing tab, bitmap size (default size, 100 dpi), Filename (default). png)
|
|
|
|
or Using Cygwin, a command such as:
|
|
|
|
[pre for file in *.svg; do
|
|
/cygdrive/c/progra~1/Inkscape/inkscape -d 120 -e $(cygpath -a -w $(basename $file .svg).png) $(cygpath -a -w $file);
|
|
done]
|
|
|
|
Using BASH
|
|
|
|
[pre # Convert single SVG to PNG file.
|
|
# /c/progra~1/Inkscape/inkscape -d 120 -e a.png a.svg
|
|
]
|
|
|
|
or to convert All files in folder SVG to PNG.
|
|
|
|
[pre
|
|
for file in *.svg; do
|
|
/c/progra~1/Inkscape/inkscape -d 120 -e $(basename $file .svg).png $file
|
|
done
|
|
]
|
|
|
|
Currently Inkscape seems to generate the better looking PNGs.
|
|
|
|
The PDF is generated into \pdf\math.pdf
|
|
using a command from a shell or command window with current directory
|
|
\math_toolkit\libs\math\doc\sf_and_dist, typically:
|
|
|
|
[pre bjam -a pdf >math_pdf.log]
|
|
|
|
Note that XEP will have to be configured to *use and embed*
|
|
whatever fonts are used by the SVG equations
|
|
(almost certainly editing the sample xep.xml provided by the XEP installation).
|
|
If you fail to do this you will get XEP warnings in the log file like
|
|
|
|
[pre \[warning\]could not find any font family matching "Times New Roman"; replaced by Helvetica]
|
|
|
|
(html is the default so it is generated at libs\math\doc\html\index.html
|
|
using command line >bjam -a > math_toolkit.docs.log).
|
|
|
|
<!-- Sample configuration for Windows TrueType fonts. -->
|
|
is provided in the xep.xml downloaded, but the Windows TrueType fonts are commented out.
|
|
|
|
JM's XEP config file \xep\xep.xml has the following font configuration section added:
|
|
|
|
[pre
|
|
<font\-group xml:base\="file:\/C:\/Windows\/Fonts\/" label\="Windows TrueType" embed\="true" subset\="true">
|
|
<font\-family name\="Arial">
|
|
<font><font\-data ttf\="arial.ttf"\/><\/font>
|
|
<font style\="oblique"><font\-data ttf\="ariali.ttf"\/><\/font>
|
|
<font weight\="bold"><font\-data ttf\="arialbd.ttf"\/><\/font>
|
|
<font weight\="bold" style\="oblique"><font\-data ttf\="arialbi.ttf"\/><\/font>
|
|
<\/font\-family>
|
|
|
|
<font\-family name\="Times New Roman" ligatures\="fi fl">
|
|
<font><font\-data ttf\="times.ttf"\/><\/font>
|
|
<font style\="italic"><font\-data ttf\="timesi.ttf"\/><\/font>
|
|
<font weight\="bold"><font\-data ttf\="timesbd.ttf"\/><\/font>
|
|
<font weight\="bold" style\="italic"><font\-data ttf\="timesbi.ttf"\/><\/font>
|
|
<\/font\-family>
|
|
|
|
<font\-family name\="Courier New">
|
|
<font><font\-data ttf\="cour.ttf"\/><\/font>
|
|
<font style\="oblique"><font\-data ttf\="couri.ttf"\/><\/font>
|
|
<font weight\="bold"><font\-data ttf\="courbd.ttf"\/><\/font>
|
|
<font weight\="bold" style\="oblique"><font\-data ttf\="courbi.ttf"\/><\/font>
|
|
<\/font\-family>
|
|
|
|
<font\-family name\="Tahoma" embed\="true">
|
|
<font><font\-data ttf\="tahoma.ttf"\/><\/font>
|
|
<font weight\="bold"><font\-data ttf\="tahomabd.ttf"\/><\/font>
|
|
<\/font\-family>
|
|
|
|
<font\-family name\="Verdana" embed\="true">
|
|
<font><font\-data ttf\="verdana.ttf"\/><\/font>
|
|
<font style\="oblique"><font\-data ttf\="verdanai.ttf"\/><\/font>
|
|
<font weight\="bold"><font\-data ttf\="verdanab.ttf"\/><\/font>
|
|
<font weight\="bold" style\="oblique"><font\-data ttf\="verdanaz.ttf"\/><\/font>
|
|
<\/font\-family>
|
|
|
|
<font\-family name\="Palatino" embed\="true" ligatures\="ff fi fl ffi ffl">
|
|
<font><font\-data ttf\="pala.ttf"\/><\/font>
|
|
<font style\="italic"><font\-data ttf\="palai.ttf"\/><\/font>
|
|
<font weight\="bold"><font\-data ttf\="palab.ttf"\/><\/font>
|
|
<font weight\="bold" style\="italic"><font\-data ttf\="palabi.ttf"\/><\/font>
|
|
<\/font\-family>
|
|
|
|
<font-family name="Lucida Sans Unicode">
|
|
<!-- <font><font-data ttf="lsansuni.ttf"></font> -->
|
|
<!-- actually called l_10646.ttf on Windows 2000 and Vista Sp1 -->
|
|
<font><font-data ttf="l_10646.ttf"/></font>
|
|
</font-family>
|
|
]
|
|
|
|
PAB had to alter his because the Lucida Sans Unicode font had a different name.
|
|
Other changes are very likely to be required if you are not using Windows.
|
|
|
|
XZ authored his equations using the venerable Latex, JM converted these to
|
|
MathML using [@http://gentoo-wiki.com/HOWTO_Convert_LaTeX_to_HTML_with_MathML mxlatex].
|
|
This process is currently unreliable and required some manual intervention:
|
|
consequently Latex source is not considered a viable route for the automatic
|
|
production of SVG versions of equations.
|
|
|
|
Equations are embedded in the quickbook source using the /equation/
|
|
template defined in math.qbk. This outputs Docbook XML that looks like:
|
|
|
|
[pre
|
|
<inlinemediaobject>
|
|
<imageobject role="html">
|
|
<imagedata fileref="../equations/myfile.png"></imagedata>
|
|
</imageobject>
|
|
<imageobject role="print">
|
|
<imagedata fileref="../equations/myfile.svg"></imagedata>
|
|
</imageobject>
|
|
</inlinemediaobject>
|
|
]
|
|
|
|
MathML is not currently present in the Docbook output, or in the
|
|
generated HTML: this needs further investigation.
|
|
|
|
[h4 Producing Graphs]
|
|
|
|
Graphs were produced in SVG format and then converted to PNG's using the same
|
|
process as the equations.
|
|
|
|
The programs
|
|
`/libs/math/doc/sf_and_dist/graphs/dist_graphs.cpp`
|
|
and `/libs/math/doc/sf_and_dist/graphs/sf_graphs.cpp`
|
|
generate the SVG's directly using the
|
|
[@http://code.google.com/soc/2007/boost/about.html Google Summer of Code 2007]
|
|
project of Jacob Voytko (whose work so far,
|
|
considerably enhanced and now reasonably mature and usable, by Paul A. Bristow,
|
|
is at .\boost-sandbox\SOC\2007\visualization).
|
|
|
|
[endsect] [/section:sf_implementation Implementation Notes]
|
|
|
|
[/
|
|
Copyright 2006, 2007, 2010 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).
|
|
]
|
|
|
|
|