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			Plaintext
		
	
	
	
	
	
| [section:lanczos The Lanczos Approximation]
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| 
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| [h4 Motivation]
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| 
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| ['Why base gamma and gamma-like functions on the Lanczos approximation?]
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| 
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| First of all I should make clear that for the gamma function
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| over real numbers (as opposed to complex ones)
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| the Lanczos approximation (See [@http://en.wikipedia.org/wiki/Lanczos_approximation Wikipedia or ]
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| [@http://mathworld.wolfram.com/LanczosApproximation.html Mathworld])
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| appears to offer no clear advantage over more traditional methods such as
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| [@http://en.wikipedia.org/wiki/Stirling_approximation Stirling's approximation].
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| __pugh carried out an extensive comparison of the various methods available
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| and discovered that they were all very similar in terms of complexity
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| and relative error.  However, the Lanczos approximation does have a couple of
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| properties that make it worthy of further consideration:
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| 
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| * The approximation has an easy to compute truncation error that holds for 
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| all /z > 0/.  In practice that means we can use the same approximation for all
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| /z > 0/, and be certain that no matter how large or small /z/ is, the truncation 
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| error will /at worst/ be bounded by some finite value.
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| * The approximation has a form that is particularly amenable to analytic
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| manipulation, in particular ratios of gamma or gamma-like functions
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| are particularly easy to compute without resorting to logarithms.
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| 
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| It is the combination of these two properties that make the approximation
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| attractive: Stirling's approximation is highly accurate for large z, and
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| has some of the same analytic properties as the Lanczos approximation, but
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| can't easily be used across the whole range of z.
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| 
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| As the simplest example, consider the ratio of two gamma functions: one could 
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| compute the result via lgamma:
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| 
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|    exp(lgamma(a) - lgamma(b));
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| 
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| However, even if lgamma is uniformly accurate to 0.5ulp, the worst case 
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| relative error in the above can easily be shown to be:
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| 
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|    Erel > a * log(a)/2 + b * log(b)/2
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| 
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| For small /a/ and /b/ that's not a problem, but to put the relationship another
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| way: ['each time a and b increase in magnitude by a factor of 10, at least one
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| decimal digit of precision will be lost.]  
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| 
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| In contrast, by analytically combining like power
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| terms in a ratio of Lanczos approximation's, these errors can be virtually eliminated
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| for small /a/ and /b/, and kept under control for very large (or very small
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| for that matter) /a/ and /b/.  Of course, computing large powers is itself a
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| notoriously hard problem, but even so, analytic combinations of Lanczos 
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| approximations can make the difference between obtaining a valid result, or
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| simply garbage.  Refer to the implementation notes for the __beta function for
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| an example of this method in practice.  The incomplete 
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| [link math_toolkit.sf_gamma.igamma gamma_p gamma] and 
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| [link math_toolkit.sf_beta.ibeta_function beta] functions
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| use similar analytic combinations of power terms, to combine gamma and beta
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| functions divided by large powers into single (simpler) expressions.
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| 
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| [h4 The Approximation]
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| 
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| The Lanczos Approximation to the Gamma Function is given by:
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| 
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| [equation lanczos0]
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| 
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| Where S[sub g](z) is an infinite sum, that is convergent for all z > 0, 
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| and /g/ is an arbitrary parameter that controls the "shape" of the
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| terms in the sum which is given by:
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| 
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| [equation lanczos0a]
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| 
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| With individual coefficients defined in closed form by:
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| 
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| [equation lanczos0b]
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| 
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| However, evaluation of the sum in that form can lead to numerical instability
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| in the computation of the ratios of rising and falling factorials (effectively
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| we're multiplying by a series of numbers very close to 1, so roundoff errors
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| can accumulate quite rapidly).
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| 
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| The Lanczos approximation is therefore often written in partial fraction form
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| with the leading constants absorbed by the coefficients in the sum:
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| 
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| [equation lanczos1]
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| 
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| where:
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| 
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| [equation lanczos2]
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| 
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| Again parameter /g/ is an arbitrarily chosen constant, and /N/ is an arbitrarily chosen 
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| number of terms to evaluate in the "Lanczos sum" part.  
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| 
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| [note 
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| Some authors
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| choose to define the sum from k=1 to N, and hence end up with N+1 coefficients.
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| This happens to confuse both the following discussion and the code (since C++
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| deals with half open array ranges, rather than the closed range of the sum).
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| This convention is consistent with __godfrey, but not __pugh, so take care
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| when referring to the literature in this field.]
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| 
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| [h4 Computing the Coefficients]
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| 
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| The coefficients C0..CN-1 need to be computed from /N/ and /g/ 
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| at high precision, and then stored as part of the program.
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| Calculation of the coefficients is performed via the method of __godfrey;
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| let the constants be contained in a column vector P, then:
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| 
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| P = D B C F
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| 
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| where B is an NxN matrix:
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| 
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| [equation lanczos4]
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| 
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| D is an NxN matrix:
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| 
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| [equation lanczos3]
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| 
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| C is an NxN matrix:
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| 
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| [equation lanczos5]
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| 
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| and F is an N element column vector:
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| 
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| [equation lanczos6]
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| 
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| Note than the matrices B, D and C contain all integer terms and depend
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| only on /N/, this product should be computed first, and then multiplied
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| by /F/ as the last step.
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| 
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| [h4 Choosing the Right Parameters]
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| 
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| The trick is to choose
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| /N/ and /g/ to give the desired level of accuracy: choosing a small value for
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| /g/ leads to a strictly convergent series, but one which converges only slowly.
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| Choosing a larger value of /g/ causes the terms in the series to be large
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| and\/or divergent for about the first /g-1/ terms, and to then suddenly converge 
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| with a "crunch".
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| 
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| __pugh has determined the optimal
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| value of /g/ for /N/ in the range /1 <= N <= 60/: unfortunately in practice choosing
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| these values leads to cancellation errors in the Lanczos sum as the largest
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| term in the (alternating) series is approximately 1000 times larger than the result.  
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| These optimal values appear not to be useful in practice unless the evaluation
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| can be done with a number of guard digits /and/ the coefficients are stored
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| at higher precision than that desired in the result.  These values are best
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| reserved for say, computing to float precision with double precision arithmetic. 
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| 
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| [table Optimal choices for N and g when computing with guard digits (source: Pugh)
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| [[Significand Size] [N] [g][Max Error]]
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| [[24] [6] [5.581][9.51e-12]]
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| [[53][13][13.144565][9.2213e-23]]
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| ]
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| 
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| The alternative described by __godfrey is to perform an exhaustive
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| search of the /N/ and /g/ parameter space to determine the optimal combination for
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| a given /p/ digit floating-point type.  Repeating this work found a good 
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| approximation for double precision arithmetic (close to the one __godfrey found), 
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| but failed to find really
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| good approximations for 80 or 128-bit long doubles.  Further it was observed 
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| that the approximations obtained tended to optimised for the small values
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| of z (1 < z < 200) used to test the implementation against the factorials.
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| Computing ratios of gamma functions with large arguments were observed to
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| suffer from error resulting from the truncation of the Lancozos series.
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| 
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| __pugh identified all the locations where the theoretical error of the 
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| approximation were at a minimum, but unfortunately has published only the largest
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| of these minima.  However, he makes the observation that the minima
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| coincide closely with the location where the first neglected term (a[sub N]) in the
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| Lanczos series S[sub g](z) changes sign.  These locations are quite easy to
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| locate, albeit with considerable computer time.  These "sweet spots" need
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| only be computed once, tabulated, and then searched when required for an
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| approximation that delivers the required precision for some fixed precision
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| type.
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| 
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| Unfortunately, following this path failed to find a really good approximation
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| for 128-bit long doubles, and those found for 64 and 80-bit reals required an
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| excessive number of terms.  There are two competing issues here: high precision
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| requires a large value of /g/, but avoiding cancellation errors in the evaluation
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| requires a small /g/.
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| 
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| At this point note that the Lanczos sum can be converted into rational form
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| (a ratio of two polynomials, obtained from the partial-fraction form using
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| polynomial arithmetic),
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| and doing so changes the coefficients so that /they are all positive/.  That 
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| means that the sum in rational form can be evaluated without cancellation 
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| error, albeit with double the number of coefficients for a given N.  Repeating 
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| the search of the "sweet spots", this time evaluating the Lanczos sum in 
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| rational form, and testing only those "sweet spots" whose theoretical error
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| is less than the machine epsilon for the type being tested, yielded good
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| approximations for all the types tested.  The optimal values found were quite
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| close to the best cases reported by __pugh (just slightly larger /N/ and slightly
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| smaller /g/ for a given precision than __pugh reports), and even though converting
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| to rational form doubles the number of stored coefficients, it should be
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| noted that half of them are integers (and therefore require less storage space)
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| and the approximations require a smaller /N/ than would otherwise be required,
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| so fewer floating point operations may be required overall.
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| 
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| The following table shows the optimal values for /N/ and /g/ when computing
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| at fixed precision.  These should be taken as work in progress: there are no
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| values for 106-bit significand machines (Darwin long doubles & NTL quad_float),
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| and further optimisation of the values of /g/ may be possible.
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| Errors given in the table
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| are estimates of the error due to truncation of the Lanczos infinite series
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| to /N/ terms.  They are calculated from the sum of the first five neglected
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| terms - and are known to be rather pessimistic estimates - although it is noticeable
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| that the best combinations of /N/ and /g/ occurred when the estimated truncation error
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| almost exactly matches the machine epsilon for the type in question.
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| 
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| [table Optimum value for N and g when computing at fixed precision
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| [[Significand Size][Platform/Compiler Used][N][g][Max Truncation Error]]
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| [[24][Win32, VC++ 7.1] [6] [1.428456135094165802001953125][9.41e-007]]
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| [[53][Win32, VC++ 7.1] [13] [6.024680040776729583740234375][3.23e-016]]
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| [[64][Suse Linux 9 IA64, gcc-3.3.3] [17] [12.2252227365970611572265625][2.34e-024]]
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| [[116][HP Tru64 Unix 5.1B \/ Alpha, Compaq C++ V7.1-006] [24] [20.3209821879863739013671875][4.75e-035]]
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| ]
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| 
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| Finally note that the Lanczos approximation can be written as follows
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| by removing a factor of exp(g) from the denominator, and then dividing 
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| all the coefficients by exp(g):
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| 
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| [equation lanczos7]
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| 
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| This form is more convenient for calculating lgamma, but for the gamma
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| function the division by /e/ turns a possibly exact quality into an
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| inexact value: this reduces accuracy in the common case that 
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| the input is exact, and so isn't used for the gamma function.
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| 
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| [h4 References]
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| 
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| # [#godfrey]Paul Godfrey, [@http://my.fit.edu/~gabdo/gamma.txt "A note on the computation of the convergent
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| Lanczos complex Gamma approximation"].
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| # [#pugh]Glendon Ralph Pugh, 
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| [@http://bh0.physics.ubc.ca/People/matt/Doc/ThesesOthers/Phd/pugh.pdf 
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| "An Analysis of the Lanczos Gamma Approximation"], 
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| PhD Thesis November 2004.
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| # Viktor T. Toth, 
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| [@http://www.rskey.org/gamma.htm "Calculators and the Gamma Function"].
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| # Mathworld, [@http://mathworld.wolfram.com/LanczosApproximation.html 
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| The Lanczos Approximation].
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| 
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| [endsect][/section:lanczos The Lanczos Approximation]
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| 
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| [/ 
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|   Copyright 2006 John Maddock and Paul A. Bristow.
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|   Distributed under the Boost Software License, Version 1.0.
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|   (See accompanying file LICENSE_1_0.txt or copy at
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|   http://www.boost.org/LICENSE_1_0.txt).
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| ]
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