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			407 lines
		
	
	
		
			14 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
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								[section:nmp Non-Member Properties]
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								Properties that are common to all distributions are accessed via non-member 
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								getter functions: non-membership allows more of these functions to be added over time,
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								as the need arises.  Unfortunately the literature uses many different and
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								confusing names to refer to a rather small number of actual concepts; refer
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								to the [link math_toolkit.dist_ref.nmp.concept_index concept index] to find the property you 
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								want by the name you are most familiar with. 
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								Or use the [link math_toolkit.dist_ref.nmp.function_index function index]
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								to go straight to the function you want if you already know its name.
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								[h4:function_index Function Index]
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								* __cdf.
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								* __ccdf.
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								* __chf.
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								* __hazard.
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								* __kurtosis.
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								* __kurtosis_excess
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								* __mean.
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								* __median.
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								* __mode.
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								* __pdf.
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								* __range.
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								* __quantile.
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								* __quantile_c.
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								* __skewness.
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								* __sd.
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								* __support.
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								* __variance.
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								[h4:concept_index Conceptual Index]
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								* __ccdf.
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								* __cdf.
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								* __chf.
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								* [link math_toolkit.dist_ref.nmp.cdf_inv Inverse Cumulative Distribution Function].
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								* [link math_toolkit.dist_ref.nmp.survival_inv Inverse Survival Function].
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								* __hazard
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								* [link math_toolkit.dist_ref.nmp.lower_critical Lower Critical Value].
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								* __kurtosis.
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								* __kurtosis_excess
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								* __mean.
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								* __median.
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								* __mode.
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								* [link math_toolkit.dist_ref.nmp.cdfPQ P].
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								* [link math_toolkit.dist_ref.nmp.percent Percent Point Function].
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								* __pdf.
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								* [link math_toolkit.dist_ref.nmp.pmf Probability Mass Function].
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								* __range.
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								* [link math_toolkit.dist_ref.nmp.cdfPQ Q].
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								* __quantile.
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								* [link math_toolkit.dist_ref.nmp.quantile_c Quantile from the complement of the probability].
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								* __skewness.
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								* __sd
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								* [link math_toolkit.dist_ref.nmp.survival Survival Function].
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								* [link math_toolkit.dist_ref.nmp.support support].
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								* [link math_toolkit.dist_ref.nmp.upper_critical Upper Critical Value].
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								* __variance.
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								[h4:cdf Cumulative Distribution Function]
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								   template <class RealType, class ``__Policy``>
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								   RealType cdf(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist, const RealType& x);
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								The __cdf is the probability that 
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								the variable takes a value less than or equal to x.  It is equivalent
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								to the integral from -infinity to x of the __pdf.
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								This function may return a __domain_error if the random variable is outside
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								the defined range for the distribution.
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								For example, the following graph shows the cdf for the
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								normal distribution:
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								[$../graphs/cdf.png]
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								[h4:ccdf Complement of the Cumulative Distribution Function]
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								   template <class Distribution, class RealType>
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								   RealType cdf(const ``['Unspecified-Complement-Type]``<Distribution, RealType>& comp);
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								The complement of the __cdf 
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								is the probability that 
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								the variable takes a value greater than x.  It is equivalent
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								to the integral from x to infinity of the __pdf, or 1 minus the __cdf of x. 
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								This is also known as the survival function.
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								This function may return a __domain_error if the random variable is outside
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								the defined range for the distribution.
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								In this library, it is obtained by wrapping the arguments to the `cdf`
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								function in a call to `complement`, for example:
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								   // standard normal distribution object:
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								   boost::math::normal norm;
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								   // print survival function for x=2.0:
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								   std::cout << cdf(complement(norm, 2.0)) << std::endl;
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								For example, the following graph shows the __complement of the cdf for the
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								normal distribution:
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								[$../graphs/survival.png]
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								See __why_complements for why the complement is useful and when it should be used.
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								[h4:hazard Hazard Function]
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								   template <class RealType, class ``__Policy``>
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								   RealType hazard(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist, const RealType& x);
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								Returns the __hazard of /x/ and distibution /dist/.
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								This function may return a __domain_error if the random variable is outside
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								the defined range for the distribution.
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								[equation hazard]
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								[caution
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								Some authors refer to this as the conditional failure 
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								density function rather than the hazard function.]
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								[h4:chf Cumulative Hazard Function]
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								   template <class RealType, class ``__Policy``>
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								   RealType chf(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist, const RealType& x);
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								Returns the __chf of /x/ and distibution /dist/.
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								This function may return a __domain_error if the random variable is outside
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								the defined range for the distribution.
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								[equation chf]
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								[caution 
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								Some authors refer to this as simply the "Hazard Function".]
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								[h4:mean mean]
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								   template<class RealType, class ``__Policy``>
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								   RealType mean(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the mean of the distribution /dist/.
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								This function may return a __domain_error if the distribution does not have
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								a defined mean (for example the Cauchy distribution).
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								[h4:median median]
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								   template<class RealType, class ``__Policy``>
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								   RealType median(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the median of the distribution /dist/.
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								[h4:mode mode]
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								   template<class RealType, ``__Policy``>
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								   RealType mode(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the mode of the distribution /dist/.
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								This function may return a __domain_error if the distribution does not have
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								a defined mode.
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								[h4:pdf Probability Density Function]
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								   template <class RealType, class ``__Policy``>
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								   RealType pdf(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist, const RealType& x);
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								For a continuous function, the probability density function (pdf) returns 
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								the probability that the variate has the value x. 
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								Since for continuous distributions the probability at a single point is actually zero, 
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								the probability is better expressed as the integral of the pdf between two points:
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								see the __cdf.
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								For a discrete distribution, the pdf is the probability that the 
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								variate takes the value x.
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								This function may return a __domain_error if the random variable is outside
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								the defined range for the distribution.
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								For example, for a standard normal distribution the pdf looks like this:
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								[$../graphs/pdf.png]
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								[h4:range Range]
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								   template<class RealType, class ``__Policy``>
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								   std::pair<RealType, RealType> range(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the valid range of the random variable over distribution /dist/.
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								[h4:quantile Quantile]
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								   template <class RealType, class ``__Policy``>
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								   RealType quantile(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist, const RealType& p);
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								The quantile is best viewed as the inverse of the __cdf, it returns
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								a value /x/ such that `cdf(dist, x) == p`.
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								This is also known as the /percent point function/, or /percentile/, or /fractile/,
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								it is also the same as calculating the ['lower critical value] of a distribution.
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								This function returns a __domain_error if the probability lies outside [0,1].
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								The function may return an __overflow_error if there is no finite value
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								that has the specified probability.
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								The following graph shows the quantile function for a standard normal
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								distribution:
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								[$../graphs/quantile.png]
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								[h4:quantile_c Quantile from the complement of the probability.]
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								See also [link math_toolkit.stat_tut.overview.complements complements].
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								   template <class Distribution, class RealType>
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								   RealType quantile(const ``['Unspecified-Complement-Type]``<Distribution, RealType>& comp);
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								This is the inverse of the __ccdf.  It is calculated by wrapping
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								the arguments in a call to the quantile function in a call to
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								/complement/.  For example:
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								   // define a standard normal distribution:
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								   boost::math::normal norm;
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								   // print the value of x for which the complement
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								   // of the probability is 0.05:
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								   std::cout << quantile(complement(norm, 0.05)) << std::endl;
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								The function computes a value /x/ such that
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								`cdf(complement(dist, x)) == q` where /q/ is complement of the
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								probability.
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								[link why_complements Why complements?]
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								This function is also called the inverse survival function, and is the
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								same as calculating the ['upper critical value] of a distribution.
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								This function returns a __domain_error if the probablity lies outside [0,1].
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								The function may return an __overflow_error if there is no finite value
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								that has the specified probability.
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								The following graph show the inverse survival function for the normal
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								distribution:
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								[$../graphs/survival_inv.png]
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								[h4:sd Standard Deviation]
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								   template <class RealType, class ``__Policy``>
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								   RealType standard_deviation(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the standard deviation of distribution /dist/.   
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								This function may return a __domain_error if the distribution does not have
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								a defined standard deviation.
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								[h4:support support]
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								   template<class RealType, class ``__Policy``>
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								   std::pair<RealType, RealType> support(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the supported range of random variable over the distribution /dist/.
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								The distribution is said to be 'supported' over a range that is
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								[@http://en.wikipedia.org/wiki/Probability_distribution
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								 "the smallest closed set whose complement has probability zero"].
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								Non-mathematicians might say it means the 'interesting' smallest range
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								of random variate x that has the cdf going from zero to unity.
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								Outside are uninteresting zones where the pdf is zero, and the cdf zero or unity.
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								[h4:variance Variance]
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								   template <class RealType, class ``__Policy``>
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								   RealType variance(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the variance of the distribution /dist/.
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								This function may return a __domain_error if the distribution does not have
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								a defined variance.
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								[h4:skewness Skewness]
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								   template <class RealType, class ``__Policy``>
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								   RealType skewness(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the skewness of the distribution /dist/.
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								This function may return a __domain_error if the distribution does not have
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								a defined skewness.
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								[h4:kurtosis Kurtosis]
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								   template <class RealType, class ``__Policy``>
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								   RealType kurtosis(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the 'proper' kurtosis (normalized fourth moment) of the distribution /dist/.
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								kertosis = [beta][sub 2][space]= [mu][sub 4][space] / [mu][sub 2][super 2]
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								Where [mu][sub i][space] is the i'th central moment of the distribution, and
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								in particular [mu][sub 2][space] is the variance of the distribution.
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								The kurtosis is a measure of the "peakedness" of a distribution.
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								Note that the literature definition of kurtosis is confusing.
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								The definition used here is that used by for example
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								[@http://mathworld.wolfram.com/Kurtosis.html Wolfram MathWorld]
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								(that includes a table of formulae for kurtosis excess for various distributions)
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								but NOT the definition of
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								[@http://en.wikipedia.org/wiki/Kurtosis kurtosis used by Wikipedia]
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								which treats "kurtosis" and "kurtosis excess" as the same quantity.
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								  kurtosis_excess = 'proper' kurtosis - 3
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								This subtraction of 3 is convenient so that the ['kurtosis excess]
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								of a normal distribution is zero.
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								This function may return a __domain_error if the distribution does not have
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								a defined kurtosis.
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								'Proper' kurtosis can have a value from zero to + infinity.
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								[h4:kurtosis_excess Kurtosis excess]
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								   template <class RealType, ``__Policy``>
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								   RealType kurtosis_excess(const ``['Distribution-Type]``<RealType, ``__Policy``>& dist);
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								Returns the kurtosis excess of the distribution /dist/.
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								kurtosis excess = [gamma][sub 2][space]= [mu][sub 4][space] / [mu][sub 2][super 2][space]- 3 = kurtosis - 3
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								Where [mu][sub i][space] is the i'th central moment of the distribution, and
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								in particular [mu][sub 2][space] is the variance of the distribution.
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								The kurtosis excess is a measure of the "peakedness" of a distribution, and 
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								is more widely used than the "kurtosis proper".  It is defined so that
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								the kurtosis excess of a normal distribution is zero.
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								This function may return a __domain_error if the distribution does not have
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								a defined kurtosis excess.
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								Kurtosis excess can have a value from -2 to + infinity.
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								  kurtosis = kurtosis_excess +3;
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								The kurtosis excess of a normal distribution is zero.
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								[h4:cdfPQ P and Q]
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								The terms P and Q are sometimes used to refer to the __cdf
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								and its [link math_toolkit.dist_ref.nmp.ccdf complement] respectively.
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								Lowercase p and q are sometimes used to refer to the values returned
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								by these functions.
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								[h4:percent Percent Point Function or Percentile]
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								The percent point function, also known as the percentile, is the same as
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								the __quantile.
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								[h4:cdf_inv Inverse CDF Function.]
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								The inverse of the cumulative distribution function, is the same as the 
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								__quantile.
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								[h4:survival_inv Inverse Survival Function.]
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								The inverse of the survival function, is the same as computing the 
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								[link math_toolkit.dist_ref.nmp.quantile_c quantile
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								from the complement of the probability].
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								[h4:pmf Probability Mass Function]
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								The Probability Mass Function is the same as the __pdf.
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								The term Mass Function is usually applied to discrete distributions,
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								while the term __pdf applies to continuous distributions.
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								[h4:lower_critical Lower Critical Value.]
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								The lower critical value calculates the value of the random variable
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								given the area under the left tail of the distribution.  
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								It is equivalent to calculating the __quantile.
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								[h4: upper_critical Upper Critical Value.]
							 | 
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| 
								 | 
							
								
							 | 
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| 
								 | 
							
								The upper critical value calculates the value of the random variable
							 | 
						||
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								 | 
							
								given the area under the right tail of the distribution.  It is equivalent to 
							 | 
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| 
								 | 
							
								calculating the [link math_toolkit.dist_ref.nmp.quantile_c quantile from the complement of the
							 | 
						||
| 
								 | 
							
								probability].
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								[h4:survival Survival Function]
							 | 
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								 | 
							
								
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								 | 
							
								Refer to the __ccdf.
							 | 
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| 
								 | 
							
								[endsect][/section:nmp Non-Member Properties]
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								 | 
							
								
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							 | 
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| 
								 | 
							
								[/ non_members.qbk
							 | 
						||
| 
								 | 
							
								  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).
							 | 
						||
| 
								 | 
							
								]
							 | 
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							 |