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Wikipedia

Error function

In mathematics, the error function (also called the Gauss error function), often denoted by erf, is a complex function of a complex variable defined as:[1]

Error function
Plot of the error function
General information
General definition
Fields of applicationProbability, thermodynamics
Domain, Codomain and Image
Domain
Image
Basic features
ParityOdd
Specific features
Root0
Derivative
Antiderivative
Series definition
Taylor series

Some authors define without the factor of .[2] This integral is a special (non-elementary) sigmoid function that occurs often in probability, statistics, and partial differential equations. In many of these applications, the function argument is a real number. If the function argument is real, then the function value is also real.

In statistics, for non-negative values of x, the error function has the following interpretation: for a random variable Y that is normally distributed with mean 0 and standard deviation 1/2, erf x is the probability that Y falls in the range [−x, x].

Two closely related functions are the complementary error function (erfc) defined as

and the imaginary error function (erfi) defined as

where i is the imaginary unit.

Name

The name "error function" and its abbreviation erf were proposed by J. W. L. Glaisher in 1871 on account of its connection with "the theory of Probability, and notably the theory of Errors."[3] The error function complement was also discussed by Glaisher in a separate publication in the same year.[4] For the "law of facility" of errors whose density is given by

 

(the normal distribution), Glaisher calculates the probability of an error lying between p and q as:

 
 
Plot of the error function Erf(z) in the complex plane from -2-2i to 2+2i with colors created with Mathematica 13.1 function ComplexPlot3D

Applications

When the results of a series of measurements are described by a normal distribution with standard deviation σ and expected value 0, then erf (a/σ 2) is the probability that the error of a single measurement lies between a and +a, for positive a. This is useful, for example, in determining the bit error rate of a digital communication system.

The error and complementary error functions occur, for example, in solutions of the heat equation when boundary conditions are given by the Heaviside step function.

The error function and its approximations can be used to estimate results that hold with high probability or with low probability. Given a random variable X ~ Norm[μ,σ] (a normal distribution with mean μ and standard deviation σ) and a constant L < μ:

 

where A and B are certain numeric constants. If L is sufficiently far from the mean, specifically μLσln k, then:

 

so the probability goes to 0 as k → ∞.

The probability for X being in the interval [La, Lb] can be derived as

 

Properties

Plots in the complex plane
 
Integrand exp(−z2)
 
erf z

The property erf (−z) = −erf z means that the error function is an odd function. This directly results from the fact that the integrand et2 is an even function (the antiderivative of an even function which is zero at the origin is an odd function and vice versa).

Since the error function is an entire function which takes real numbers to real numbers, for any complex number z:

 

where z is the complex conjugate of z.

The integrand f = exp(−z2) and f = erf z are shown in the complex z-plane in the figures at right with domain coloring.

The error function at +∞ is exactly 1 (see Gaussian integral). At the real axis, erf z approaches unity at z → +∞ and −1 at z → −∞. At the imaginary axis, it tends to ±i.

Taylor series

The error function is an entire function; it has no singularities (except that at infinity) and its Taylor expansion always converges, but is famously known "[...] for its bad convergence if x > 1."[5]

The defining integral cannot be evaluated in closed form in terms of elementary functions, but by expanding the integrand ez2 into its Maclaurin series and integrating term by term, one obtains the error function's Maclaurin series as:

 

which holds for every complex number z. The denominator terms are sequence A007680 in the OEIS.

For iterative calculation of the above series, the following alternative formulation may be useful:

 

because −(2k − 1)z2/k(2k + 1) expresses the multiplier to turn the kth term into the (k + 1)th term (considering z as the first term).

The imaginary error function has a very similar Maclaurin series, which is:

 

which holds for every complex number z.

Derivative and integral

The derivative of the error function follows immediately from its definition:

 

From this, the derivative of the imaginary error function is also immediate:

 

An antiderivative of the error function, obtainable by integration by parts, is

 

An antiderivative of the imaginary error function, also obtainable by integration by parts, is

 

Higher order derivatives are given by

 

where H are the physicists' Hermite polynomials.[6]

Bürmann series

An expansion,[7] which converges more rapidly for all real values of x than a Taylor expansion, is obtained by using Hans Heinrich Bürmann's theorem:[8]

 

where sgn is the sign function. By keeping only the first two coefficients and choosing c1 = 31/200 and c2 = −341/8000, the resulting approximation shows its largest relative error at x = ±1.3796, where it is less than 0.0036127:

 

Inverse functions

 
Inverse error function

Given a complex number z, there is not a unique complex number w satisfying erf w = z, so a true inverse function would be multivalued. However, for −1 < x < 1, there is a unique real number denoted erf−1 x satisfying

 

The inverse error function is usually defined with domain (−1,1), and it is restricted to this domain in many computer algebra systems. However, it can be extended to the disk |z| < 1 of the complex plane, using the Maclaurin series

 

where c0 = 1 and

 

So we have the series expansion (common factors have been canceled from numerators and denominators):

 

(After cancellation the numerator/denominator fractions are entries OEISA092676/OEISA092677 in the OEIS; without cancellation the numerator terms are given in entry OEISA002067.) The error function's value at ±∞ is equal to ±1.

For |z| < 1, we have erf(erf−1 z) = z.

The inverse complementary error function is defined as

 

For real x, there is a unique real number erfi−1 x satisfying erfi(erfi−1 x) = x. The inverse imaginary error function is defined as erfi−1 x.[9]

For any real x, Newton's method can be used to compute erfi−1 x, and for −1 ≤ x ≤ 1, the following Maclaurin series converges:

 

where ck is defined as above.

Asymptotic expansion

A useful asymptotic expansion of the complementary error function (and therefore also of the error function) for large real x is

 

where (2n − 1)!! is the double factorial of (2n − 1), which is the product of all odd numbers up to (2n − 1). This series diverges for every finite x, and its meaning as asymptotic expansion is that for any integer N ≥ 1 one has

 

where the remainder, in Landau notation, is

 

as x → ∞.

Indeed, the exact value of the remainder is

 

which follows easily by induction, writing

 

and integrating by parts.

For large enough values of x, only the first few terms of this asymptotic expansion are needed to obtain a good approximation of erfc x (while for not too large values of x, the above Taylor expansion at 0 provides a very fast convergence).

Continued fraction expansion

A continued fraction expansion of the complementary error function is:[10]

 

Integral of error function with Gaussian density function

 

which appears related to Ng and Geller, formula 13 in section 4.3[11] with a change of variables.

Factorial series

The inverse factorial series:

 

converges for Re(z2) > 0. Here

 

zn denotes the rising factorial, and s(n,k) denotes a signed Stirling number of the first kind.[12][13] There also exists a representation by an infinite sum containing the double factorial:

 

Numerical approximations

Approximation with elementary functions

  • Abramowitz and Stegun give several approximations of varying accuracy (equations 7.1.25–28). This allows one to choose the fastest approximation suitable for a given application. In order of increasing accuracy, they are:
     
    (maximum error: 5×10−4)

    where a1 = 0.278393, a2 = 0.230389, a3 = 0.000972, a4 = 0.078108

     

    (maximum error: 2.5×10−5)

    where p = 0.47047, a1 = 0.3480242, a2 = −0.0958798, a3 = 0.7478556

     
    (maximum error: 3×10−7)

    where a1 = 0.0705230784, a2 = 0.0422820123, a3 = 0.0092705272, a4 = 0.0001520143, a5 = 0.0002765672, a6 = 0.0000430638

     
    (maximum error: 1.5×10−7)

    where p = 0.3275911, a1 = 0.254829592, a2 = −0.284496736, a3 = 1.421413741, a4 = −1.453152027, a5 = 1.061405429

    All of these approximations are valid for x ≥ 0. To use these approximations for negative x, use the fact that erf x is an odd function, so erf x = −erf(−x).
  • Exponential bounds and a pure exponential approximation for the complementary error function are given by[14]
     
  • The above have been generalized to sums of N exponentials[15] with increasing accuracy in terms of N so that erfc x can be accurately approximated or bounded by 2(2x), where
     
    In particular, there is a systematic methodology to solve the numerical coefficients {(an,bn)}N
    n = 1
    that yield a minimax approximation or bound for the closely related Q-function: Q(x) ≈ (x), Q(x) ≤ (x), or Q(x) ≥ (x) for x ≥ 0. The coefficients {(an,bn)}N
    n = 1
    for many variations of the exponential approximations and bounds up to N = 25 have been released to open access as a comprehensive dataset.[16]
  • A tight approximation of the complementary error function for x ∈ [0,∞) is given by Karagiannidis & Lioumpas (2007)[17] who showed for the appropriate choice of parameters {A,B} that
     
    They determined {A,B} = {1.98,1.135}, which gave a good approximation for all x ≥ 0. Alternative coefficients are also available for tailoring accuracy for a specific application or transforming the expression into a tight bound.[18]
  • A single-term lower bound is[19]
     
    where the parameter β can be picked to minimize error on the desired interval of approximation.
  • Another approximation is given by Sergei Winitzki using his "global Padé approximations":[20][21]: 2–3 
     
    where
     
    This is designed to be very accurate in a neighborhood of 0 and a neighborhood of infinity, and the relative error is less than 0.00035 for all real x. Using the alternate value a ≈ 0.147 reduces the maximum relative error to about 0.00013.[22]

    This approximation can be inverted to obtain an approximation for the inverse error function:

     
  • An approximation with a maximal error of 1.2×10−7 for any real argument is:[23]
     
    with
     
    and
     

Table of values

x erf x 1 − erf x
0 0 1
0.02 0.022564575 0.977435425
0.04 0.045111106 0.954888894
0.06 0.067621594 0.932378406
0.08 0.090078126 0.909921874
0.1 0.112462916 0.887537084
0.2 0.222702589 0.777297411
0.3 0.328626759 0.671373241
0.4 0.428392355 0.571607645
0.5 0.520499878 0.479500122
0.6 0.603856091 0.396143909
0.7 0.677801194 0.322198806
0.8 0.742100965 0.257899035
0.9 0.796908212 0.203091788
1 0.842700793 0.157299207
1.1 0.880205070 0.119794930
1.2 0.910313978 0.089686022
1.3 0.934007945 0.065992055
1.4 0.952285120 0.047714880
1.5 0.966105146 0.033894854
1.6 0.976348383 0.023651617
1.7 0.983790459 0.016209541
1.8 0.989090502 0.010909498
1.9 0.992790429 0.007209571
2 0.995322265 0.004677735
2.1 0.997020533 0.002979467
2.2 0.998137154 0.001862846
2.3 0.998856823 0.001143177
2.4 0.999311486 0.000688514
2.5 0.999593048 0.000406952
3 0.999977910 0.000022090
3.5 0.999999257 0.000000743

Related functions

Complementary error function

The complementary error function, denoted erfc, is defined as

 
Plot of the complementary error function Erfc(z) in the complex plane from -2-2i to 2+2i with colors created with Mathematica 13.1 function ComplexPlot3D
 

which also defines erfcx, the scaled complementary error function[24] (which can be used instead of erfc to avoid arithmetic underflow[24][25]). Another form of erfc x for x ≥ 0 is known as Craig's formula, after its discoverer:[26]

 

This expression is valid only for positive values of x, but it can be used in conjunction with erfc x = 2 − erfc(−x) to obtain erfc(x) for negative values. This form is advantageous in that the range of integration is fixed and finite. An extension of this expression for the erfc of the sum of two non-negative variables is as follows:[27]

 

Imaginary error function

The imaginary error function, denoted erfi, is defined as

 
Plot of the imaginary error function Erfi(z) in the complex plane from -2-2i to 2+2i with colors created with Mathematica 13.1 function ComplexPlot3D
 

where D(x) is the Dawson function (which can be used instead of erfi to avoid arithmetic overflow[24]).

Despite the name "imaginary error function", erfi x is real when x is real.

When the error function is evaluated for arbitrary complex arguments z, the resulting complex error function is usually discussed in scaled form as the Faddeeva function:

 

Cumulative distribution function

The error function is essentially identical to the standard normal cumulative distribution function, denoted Φ, also named norm(x) by some software languages[citation needed], as they differ only by scaling and translation. Indeed,

 
the normal cumulative distribution function plotted in the complex plane
 

or rearranged for erf and erfc:

 

Consequently, the error function is also closely related to the Q-function, which is the tail probability of the standard normal distribution. The Q-function can be expressed in terms of the error function as

 

The inverse of Φ is known as the normal quantile function, or probit function and may be expressed in terms of the inverse error function as

 

The standard normal cdf is used more often in probability and statistics, and the error function is used more often in other branches of mathematics.

The error function is a special case of the Mittag-Leffler function, and can also be expressed as a confluent hypergeometric function (Kummer's function):

 

It has a simple expression in terms of the Fresnel integral.[further explanation needed]

In terms of the regularized gamma function P and the incomplete gamma function,

 

sgn x is the sign function.

Generalized error functions

 
Graph of generalised error functions En(x):
grey curve: E1(x) = 1 − ex/π
red curve: E2(x) = erf(x)
green curve: E3(x)
blue curve: E4(x)
gold curve: E5(x).

Some authors discuss the more general functions:[citation needed]

 

Notable cases are:

  • E0(x) is a straight line through the origin: E0(x) = x/eπ
  • E2(x) is the error function, erf x.

After division by n!, all the En for odd n look similar (but not identical) to each other. Similarly, the En for even n look similar (but not identical) to each other after a simple division by n!. All generalised error functions for n > 0 look similar on the positive x side of the graph.

These generalised functions can equivalently be expressed for x > 0 using the gamma function and incomplete gamma function:

 

Therefore, we can define the error function in terms of the incomplete gamma function:

 

Iterated integrals of the complementary error function

The iterated integrals of the complementary error function are defined by[28]

 

The general recurrence formula is

 

They have the power series

 

from which follow the symmetry properties

 

and

 

Implementations

As real function of a real argument

As complex function of a complex argument

  • libcerf, numeric C library for complex error functions, provides the complex functions cerf, cerfc, cerfcx and the real functions erfi, erfcx with approximately 13–14 digits precision, based on the Faddeeva function as implemented in the MIT Faddeeva Package

See also

Related functions

In probability

References

  1. ^ Andrews, Larry C. (1998). Special functions of mathematics for engineers. SPIE Press. p. 110. ISBN 9780819426161.
  2. ^ Whittaker, E. T.; Watson, G. N. (1927). A Course of Modern Analysis. Cambridge University Press. p. 341. ISBN 978-0-521-58807-2.
  3. ^ Glaisher, James Whitbread Lee (July 1871). "On a class of definite integrals". London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science. 4. 42 (277): 294–302. doi:10.1080/14786447108640568. Retrieved 6 December 2017.
  4. ^ Glaisher, James Whitbread Lee (September 1871). "On a class of definite integrals. Part II". London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science. 4. 42 (279): 421–436. doi:10.1080/14786447108640600. Retrieved 6 December 2017.
  5. ^ "A007680 – OEIS". oeis.org. Retrieved 2 April 2020.
  6. ^ Weisstein, Eric W. "Erf". MathWorld.
  7. ^ Schöpf, H. M.; Supancic, P. H. (2014). "On Bürmann's Theorem and Its Application to Problems of Linear and Nonlinear Heat Transfer and Diffusion". The Mathematica Journal. 16. doi:10.3888/tmj.16-11.
  8. ^ Weisstein, Eric W. "Bürmann's Theorem". MathWorld.
  9. ^ Bergsma, Wicher (2006). "On a new correlation coefficient, its orthogonal decomposition and associated tests of independence". arXiv:math/0604627.
  10. ^ Cuyt, Annie A. M.; Petersen, Vigdis B.; Verdonk, Brigitte; Waadeland, Haakon; Jones, William B. (2008). Handbook of Continued Fractions for Special Functions. Springer-Verlag. ISBN 978-1-4020-6948-2.
  11. ^ Ng, Edward W.; Geller, Murray (January 1969). "A table of integrals of the Error functions". Journal of Research of the National Bureau of Standards Section B. 73B (1): 1. doi:10.6028/jres.073B.001.
  12. ^ Schlömilch, Oskar Xavier (1859). "Ueber facultätenreihen". Zeitschrift für Mathematik und Physik (in German). 4: 390–415.
  13. ^ Nielson, Niels (1906). Handbuch der Theorie der Gammafunktion (in German). Leipzig: B. G. Teubner. p. 283 Eq. 3. Retrieved 4 December 2017.
  14. ^ Chiani, M.; Dardari, D.; Simon, M.K. (2003). "New Exponential Bounds and Approximations for the Computation of Error Probability in Fading Channels" (PDF). IEEE Transactions on Wireless Communications. 2 (4): 840–845. CiteSeerX 10.1.1.190.6761. doi:10.1109/TWC.2003.814350.
  15. ^ Tanash, I.M.; Riihonen, T. (2020). "Global minimax approximations and bounds for the Gaussian Q-function by sums of exponentials". IEEE Transactions on Communications. 68 (10): 6514–6524. arXiv:2007.06939. doi:10.1109/TCOMM.2020.3006902. S2CID 220514754.
  16. ^ Tanash, I.M.; Riihonen, T. (2020). "Coefficients for Global Minimax Approximations and Bounds for the Gaussian Q-Function by Sums of Exponentials [Data set]". Zenodo. doi:10.5281/zenodo.4112978.
  17. ^ Karagiannidis, G. K.; Lioumpas, A. S. (2007). "An improved approximation for the Gaussian Q-function" (PDF). IEEE Communications Letters. 11 (8): 644–646. doi:10.1109/LCOMM.2007.070470. S2CID 4043576.
  18. ^ Tanash, I.M.; Riihonen, T. (2021). "Improved coefficients for the Karagiannidis–Lioumpas approximations and bounds to the Gaussian Q-function". IEEE Communications Letters. 25 (5): 1468–1471. arXiv:2101.07631. doi:10.1109/LCOMM.2021.3052257. S2CID 231639206.
  19. ^ Chang, Seok-Ho; Cosman, Pamela C.; Milstein, Laurence B. (November 2011). "Chernoff-Type Bounds for the Gaussian Error Function". IEEE Transactions on Communications. 59 (11): 2939–2944. doi:10.1109/TCOMM.2011.072011.100049. S2CID 13636638.
  20. ^ Winitzki, Sergei (2003). "Uniform approximations for transcendental functions". Computational Science and Its Applications – ICCSA 2003. Lecture Notes in Computer Science. Vol. 2667. Springer, Berlin. pp. 780–789. doi:10.1007/3-540-44839-X_82. ISBN 978-3-540-40155-1.
  21. ^ Zeng, Caibin; Chen, Yang Cuan (2015). "Global Padé approximations of the generalized Mittag-Leffler function and its inverse". Fractional Calculus and Applied Analysis. 18 (6): 1492–1506. arXiv:1310.5592. doi:10.1515/fca-2015-0086. S2CID 118148950. Indeed, Winitzki [32] provided the so-called global Padé approximation
  22. ^ Winitzki, Sergei (6 February 2008). "A handy approximation for the error function and its inverse". {{cite journal}}: Cite journal requires |journal= (help)
  23. ^ Numerical Recipes in Fortran 77: The Art of Scientific Computing (ISBN 0-521-43064-X), 1992, page 214, Cambridge University Press.
  24. ^ a b c Cody, W. J. (March 1993), "Algorithm 715: SPECFUN—A portable FORTRAN package of special function routines and test drivers" (PDF), ACM Trans. Math. Softw., 19 (1): 22–32, CiteSeerX 10.1.1.643.4394, doi:10.1145/151271.151273, S2CID 5621105
  25. ^ Zaghloul, M. R. (1 March 2007), "On the calculation of the Voigt line profile: a single proper integral with a damped sine integrand", Monthly Notices of the Royal Astronomical Society, 375 (3): 1043–1048, Bibcode:2007MNRAS.375.1043Z, doi:10.1111/j.1365-2966.2006.11377.x
  26. ^ John W. Craig, A new, simple and exact result for calculating the probability of error for two-dimensional signal constellations 3 April 2012 at the Wayback Machine, Proceedings of the 1991 IEEE Military Communication Conference, vol. 2, pp. 571–575.
  27. ^ Behnad, Aydin (2020). "A Novel Extension to Craig's Q-Function Formula and Its Application in Dual-Branch EGC Performance Analysis". IEEE Transactions on Communications. 68 (7): 4117–4125. doi:10.1109/TCOMM.2020.2986209. S2CID 216500014.
  28. ^ Carslaw, H. S.; Jaeger, J. C. (1959), Conduction of Heat in Solids (2nd ed.), Oxford University Press, ISBN 978-0-19-853368-9, p 484
  29. ^ "math.h - mathematical declarations". opengroup.org. 2018. Retrieved 21 April 2023.
  30. ^ "Special Functions – GSL 2.7 documentation".

Further reading

External links

  • A Table of Integrals of the Error Functions

error, function, confused, with, loss, function, mathematics, error, function, also, called, gauss, error, function, often, denoted, complex, function, complex, variable, defined, plot, error, functiongeneral, informationgeneral, definitionerf, displaystyle, o. Not to be confused with Loss function In mathematics the error function also called the Gauss error function often denoted by erf is a complex function of a complex variable defined as 1 Error functionPlot of the error functionGeneral informationGeneral definitionerf z 2 p 0 z e t 2 d t displaystyle operatorname erf z frac 2 sqrt pi int 0 z e t 2 mathrm d t Fields of applicationProbability thermodynamicsDomain Codomain and ImageDomainC displaystyle mathbb C Image 1 1 displaystyle left 1 1 right Basic featuresParityOddSpecific featuresRoot0Derivatived d z erf z 2 p e z 2 displaystyle frac mathrm d mathrm d z operatorname erf z frac 2 sqrt pi e z 2 Antiderivative erf z d z z erf z e z 2 p C displaystyle int operatorname erf z dz z operatorname erf z frac e z 2 sqrt pi C Series definitionTaylor serieserf z 2 p n 0 z 2 n 1 k 1 n z 2 k displaystyle operatorname erf z frac 2 sqrt pi sum n 0 infty frac z 2n 1 prod k 1 n frac z 2 k erf z 2 p 0 z e t 2 d t displaystyle operatorname erf z frac 2 sqrt pi int 0 z e t 2 mathrm d t Some authors define erf displaystyle operatorname erf without the factor of 2 p displaystyle 2 sqrt pi 2 This integral is a special non elementary sigmoid function that occurs often in probability statistics and partial differential equations In many of these applications the function argument is a real number If the function argument is real then the function value is also real In statistics for non negative values of x the error function has the following interpretation for a random variable Y that is normally distributed with mean 0 and standard deviation 1 2 erf x is the probability that Y falls in the range x x Two closely related functions are the complementary error function erfc defined as erfc z 1 erf z displaystyle operatorname erfc z 1 operatorname erf z and the imaginary error function erfi defined as erfi z i erf i z displaystyle operatorname erfi z i operatorname erf iz where i is the imaginary unit Contents 1 Name 2 Applications 3 Properties 3 1 Taylor series 3 2 Derivative and integral 3 3 Burmann series 3 4 Inverse functions 3 5 Asymptotic expansion 3 6 Continued fraction expansion 3 7 Integral of error function with Gaussian density function 3 8 Factorial series 4 Numerical approximations 4 1 Approximation with elementary functions 4 2 Table of values 5 Related functions 5 1 Complementary error function 5 2 Imaginary error function 5 3 Cumulative distribution function 5 4 Generalized error functions 5 5 Iterated integrals of the complementary error function 6 Implementations 6 1 As real function of a real argument 6 2 As complex function of a complex argument 7 See also 7 1 Related functions 7 2 In probability 8 References 9 Further reading 10 External linksName EditThe name error function and its abbreviation erf were proposed by J W L Glaisher in 1871 on account of its connection with the theory of Probability and notably the theory of Errors 3 The error function complement was also discussed by Glaisher in a separate publication in the same year 4 For the law of facility of errors whose density is given by f x c p 1 2 e c x 2 displaystyle f x left frac c pi right frac 1 2 e cx 2 the normal distribution Glaisher calculates the probability of an error lying between p and q as c p 1 2 p q e c x 2 d x 1 2 erf q c erf p c displaystyle left frac c pi right frac 1 2 int p q e cx 2 mathrm d x tfrac 1 2 left operatorname erf left q sqrt c right operatorname erf left p sqrt c right right Plot of the error function Erf z in the complex plane from 2 2i to 2 2i with colors created with Mathematica 13 1 function ComplexPlot3DApplications EditWhen the results of a series of measurements are described by a normal distribution with standard deviation s and expected value 0 then erf a s 2 is the probability that the error of a single measurement lies between a and a for positive a This is useful for example in determining the bit error rate of a digital communication system The error and complementary error functions occur for example in solutions of the heat equation when boundary conditions are given by the Heaviside step function The error function and its approximations can be used to estimate results that hold with high probability or with low probability Given a random variable X Norm m s a normal distribution with mean m and standard deviation s and a constant L lt m Pr X L 1 2 1 2 erf L m 2 s A exp B L m s 2 displaystyle begin aligned Pr X leq L amp frac 1 2 frac 1 2 operatorname erf frac L mu sqrt 2 sigma amp approx A exp left B left frac L mu sigma right 2 right end aligned where A and B are certain numeric constants If L is sufficiently far from the mean specifically m L s ln k then Pr X L A exp B ln k A k B displaystyle Pr X leq L leq A exp B ln k frac A k B so the probability goes to 0 as k The probability for X being in the interval La Lb can be derived as Pr L a X L b L a L b 1 2 p s exp x m 2 2 s 2 d x 1 2 erf L b m 2 s erf L a m 2 s displaystyle begin aligned Pr L a leq X leq L b amp int L a L b frac 1 sqrt 2 pi sigma exp left frac x mu 2 2 sigma 2 right mathrm d x amp frac 1 2 left operatorname erf frac L b mu sqrt 2 sigma operatorname erf frac L a mu sqrt 2 sigma right end aligned Properties EditPlots in the complex plane Integrand exp z2 erf z The property erf z erf z means that the error function is an odd function This directly results from the fact that the integrand e t2 is an even function the antiderivative of an even function which is zero at the origin is an odd function and vice versa Since the error function is an entire function which takes real numbers to real numbers for any complex number z erf z erf z displaystyle operatorname erf overline z overline operatorname erf z where z is the complex conjugate of z The integrand f exp z2 and f erf z are shown in the complex z plane in the figures at right with domain coloring The error function at is exactly 1 see Gaussian integral At the real axis erf z approaches unity at z and 1 at z At the imaginary axis it tends to i Taylor series Edit The error function is an entire function it has no singularities except that at infinity and its Taylor expansion always converges but is famously known for its bad convergence if x gt 1 5 The defining integral cannot be evaluated in closed form in terms of elementary functions but by expanding the integrand e z2 into its Maclaurin series and integrating term by term one obtains the error function s Maclaurin series as erf z 2 p n 0 1 n z 2 n 1 n 2 n 1 2 p z z 3 3 z 5 10 z 7 42 z 9 216 displaystyle begin aligned operatorname erf z amp frac 2 sqrt pi sum n 0 infty frac 1 n z 2n 1 n 2n 1 6pt amp frac 2 sqrt pi left z frac z 3 3 frac z 5 10 frac z 7 42 frac z 9 216 cdots right end aligned which holds for every complex number z The denominator terms are sequence A007680 in the OEIS For iterative calculation of the above series the following alternative formulation may be useful erf z 2 p n 0 z k 1 n 2 k 1 z 2 k 2 k 1 2 p n 0 z 2 n 1 k 1 n z 2 k displaystyle begin aligned operatorname erf z amp frac 2 sqrt pi sum n 0 infty left z prod k 1 n frac 2k 1 z 2 k 2k 1 right 6pt amp frac 2 sqrt pi sum n 0 infty frac z 2n 1 prod k 1 n frac z 2 k end aligned because 2k 1 z2 k 2k 1 expresses the multiplier to turn the k th term into the k 1 th term considering z as the first term The imaginary error function has a very similar Maclaurin series which is erfi z 2 p n 0 z 2 n 1 n 2 n 1 2 p z z 3 3 z 5 10 z 7 42 z 9 216 displaystyle begin aligned operatorname erfi z amp frac 2 sqrt pi sum n 0 infty frac z 2n 1 n 2n 1 6pt amp frac 2 sqrt pi left z frac z 3 3 frac z 5 10 frac z 7 42 frac z 9 216 cdots right end aligned which holds for every complex number z Derivative and integral Edit The derivative of the error function follows immediately from its definition d d z erf z 2 p e z 2 displaystyle frac mathrm d mathrm d z operatorname erf z frac 2 sqrt pi e z 2 From this the derivative of the imaginary error function is also immediate d d z erfi z 2 p e z 2 displaystyle frac d dz operatorname erfi z frac 2 sqrt pi e z 2 An antiderivative of the error function obtainable by integration by parts is z erf z e z 2 p displaystyle z operatorname erf z frac e z 2 sqrt pi An antiderivative of the imaginary error function also obtainable by integration by parts is z erfi z e z 2 p displaystyle z operatorname erfi z frac e z 2 sqrt pi Higher order derivatives are given by erf k z 2 1 k 1 p H k 1 z e z 2 2 p d k 1 d z k 1 e z 2 k 1 2 displaystyle operatorname erf k z frac 2 1 k 1 sqrt pi mathit H k 1 z e z 2 frac 2 sqrt pi frac mathrm d k 1 mathrm d z k 1 left e z 2 right qquad k 1 2 dots where H are the physicists Hermite polynomials 6 Burmann series Edit An expansion 7 which converges more rapidly for all real values of x than a Taylor expansion is obtained by using Hans Heinrich Burmann s theorem 8 erf x 2 p sgn x 1 e x 2 1 1 12 1 e x 2 7 480 1 e x 2 2 5 896 1 e x 2 3 787 276480 1 e x 2 4 2 p sgn x 1 e x 2 p 2 k 1 c k e k x 2 displaystyle begin aligned operatorname erf x amp frac 2 sqrt pi operatorname sgn x cdot sqrt 1 e x 2 left 1 frac 1 12 left 1 e x 2 right frac 7 480 left 1 e x 2 right 2 frac 5 896 left 1 e x 2 right 3 frac 787 276480 left 1 e x 2 right 4 cdots right 10pt amp frac 2 sqrt pi operatorname sgn x cdot sqrt 1 e x 2 left frac sqrt pi 2 sum k 1 infty c k e kx 2 right end aligned where sgn is the sign function By keeping only the first two coefficients and choosing c1 31 200 and c2 341 8000 the resulting approximation shows its largest relative error at x 1 3796 where it is less than 0 0036127 erf x 2 p sgn x 1 e x 2 p 2 31 200 e x 2 341 8000 e 2 x 2 displaystyle operatorname erf x approx frac 2 sqrt pi operatorname sgn x cdot sqrt 1 e x 2 left frac sqrt pi 2 frac 31 200 e x 2 frac 341 8000 e 2x 2 right Inverse functions Edit Inverse error function Given a complex number z there is not a unique complex number w satisfying erf w z so a true inverse function would be multivalued However for 1 lt x lt 1 there is a unique real number denoted erf 1 x satisfying erf erf 1 x x displaystyle operatorname erf left operatorname erf 1 x right x The inverse error function is usually defined with domain 1 1 and it is restricted to this domain in many computer algebra systems However it can be extended to the disk z lt 1 of the complex plane using the Maclaurin series erf 1 z k 0 c k 2 k 1 p 2 z 2 k 1 displaystyle operatorname erf 1 z sum k 0 infty frac c k 2k 1 left frac sqrt pi 2 z right 2k 1 where c0 1 and c k m 0 k 1 c m c k 1 m m 1 2 m 1 1 1 7 6 127 90 4369 2520 34807 16200 displaystyle begin aligned c k amp sum m 0 k 1 frac c m c k 1 m m 1 2m 1 amp left 1 1 frac 7 6 frac 127 90 frac 4369 2520 frac 34807 16200 ldots right end aligned So we have the series expansion common factors have been canceled from numerators and denominators erf 1 z p 2 z p 12 z 3 7 p 2 480 z 5 127 p 3 40320 z 7 4369 p 4 5806080 z 9 34807 p 5 182476800 z 11 displaystyle operatorname erf 1 z frac sqrt pi 2 left z frac pi 12 z 3 frac 7 pi 2 480 z 5 frac 127 pi 3 40320 z 7 frac 4369 pi 4 5806080 z 9 frac 34807 pi 5 182476800 z 11 cdots right After cancellation the numerator denominator fractions are entries OEIS A092676 OEIS A092677 in the OEIS without cancellation the numerator terms are given in entry OEIS A002067 The error function s value at is equal to 1 For z lt 1 we have erf erf 1 z z The inverse complementary error function is defined as erfc 1 1 z erf 1 z displaystyle operatorname erfc 1 1 z operatorname erf 1 z For real x there is a unique real number erfi 1 x satisfying erfi erfi 1 x x The inverse imaginary error function is defined as erfi 1 x 9 For any real x Newton s method can be used to compute erfi 1 x and for 1 x 1 the following Maclaurin series converges erfi 1 z k 0 1 k c k 2 k 1 p 2 z 2 k 1 displaystyle operatorname erfi 1 z sum k 0 infty frac 1 k c k 2k 1 left frac sqrt pi 2 z right 2k 1 where ck is defined as above Asymptotic expansion Edit A useful asymptotic expansion of the complementary error function and therefore also of the error function for large real x is erfc x e x 2 x p 1 n 1 1 n 1 3 5 2 n 1 2 x 2 n e x 2 x p n 0 1 n 2 n 1 2 x 2 n displaystyle begin aligned operatorname erfc x amp frac e x 2 x sqrt pi left 1 sum n 1 infty 1 n frac 1 cdot 3 cdot 5 cdots 2n 1 left 2x 2 right n right 6pt amp frac e x 2 x sqrt pi sum n 0 infty 1 n frac 2n 1 left 2x 2 right n end aligned where 2n 1 is the double factorial of 2n 1 which is the product of all odd numbers up to 2n 1 This series diverges for every finite x and its meaning as asymptotic expansion is that for any integer N 1 one has erfc x e x 2 x p n 0 N 1 1 n 2 n 1 2 x 2 n R N x displaystyle operatorname erfc x frac e x 2 x sqrt pi sum n 0 N 1 1 n frac 2n 1 left 2x 2 right n R N x where the remainder in Landau notation is R N x O x 1 2 N e x 2 displaystyle R N x O left x 1 2N e x 2 right as x Indeed the exact value of the remainder is R N x 1 N p 2 1 2 N 2 N N x t 2 N e t 2 d t displaystyle R N x frac 1 N sqrt pi 2 1 2N frac 2N N int x infty t 2N e t 2 mathrm d t which follows easily by induction writing e t 2 2 t 1 e t 2 displaystyle e t 2 2t 1 left e t 2 right and integrating by parts For large enough values of x only the first few terms of this asymptotic expansion are needed to obtain a good approximation of erfc x while for not too large values of x the above Taylor expansion at 0 provides a very fast convergence Continued fraction expansion Edit A continued fraction expansion of the complementary error function is 10 erfc z z p e z 2 1 z 2 a 1 1 a 2 z 2 a 3 1 a m m 2 displaystyle operatorname erfc z frac z sqrt pi e z 2 cfrac 1 z 2 cfrac a 1 1 cfrac a 2 z 2 cfrac a 3 1 dotsb qquad a m frac m 2 Integral of error function with Gaussian density function Edit erf a x b 1 2 p s 2 exp x m 2 2 s 2 d x erf a m b 1 2 a 2 s 2 a b m s R displaystyle int infty infty operatorname erf left ax b right frac 1 sqrt 2 pi sigma 2 exp left frac x mu 2 2 sigma 2 right mathrm d x operatorname erf frac a mu b sqrt 1 2a 2 sigma 2 qquad a b mu sigma in mathbb R which appears related to Ng and Geller formula 13 in section 4 3 11 with a change of variables Factorial series Edit The inverse factorial series erfc z e z 2 p z n 0 1 n Q n z 2 1 n e z 2 p z 1 1 2 1 z 2 1 1 4 1 z 2 1 z 2 2 displaystyle begin aligned operatorname erfc z amp frac e z 2 sqrt pi z sum n 0 infty frac 1 n Q n z 2 1 bar n amp frac e z 2 sqrt pi z left 1 frac 1 2 frac 1 z 2 1 frac 1 4 frac 1 z 2 1 z 2 2 cdots right end aligned converges for Re z2 gt 0 Here Q n def 1 G 1 2 0 t t 1 t n 1 t 1 2 e t d t k 0 n 1 2 k s n k displaystyle begin aligned Q n amp overset text def frac 1 Gamma left frac 1 2 right int 0 infty tau tau 1 cdots tau n 1 tau frac 1 2 e tau d tau amp sum k 0 n left tfrac 1 2 right bar k s n k end aligned zn denotes the rising factorial and s n k denotes a signed Stirling number of the first kind 12 13 There also exists a representation by an infinite sum containing the double factorial erf z 2 p n 0 2 n 2 n 1 2 n 1 z 2 n 1 displaystyle operatorname erf z frac 2 sqrt pi sum n 0 infty frac 2 n 2n 1 2n 1 z 2n 1 Numerical approximations EditApproximation with elementary functions Edit Abramowitz and Stegun give several approximations of varying accuracy equations 7 1 25 28 This allows one to choose the fastest approximation suitable for a given application In order of increasing accuracy they are erf x 1 1 1 a 1 x a 2 x 2 a 3 x 3 a 4 x 4 4 x 0 displaystyle operatorname erf x approx 1 frac 1 left 1 a 1 x a 2 x 2 a 3 x 3 a 4 x 4 right 4 qquad x geq 0 maximum error 5 10 4 where a1 0 278393 a2 0 230389 a3 0 000972 a4 0 078108 erf x 1 a 1 t a 2 t 2 a 3 t 3 e x 2 t 1 1 p x x 0 displaystyle operatorname erf x approx 1 left a 1 t a 2 t 2 a 3 t 3 right e x 2 quad t frac 1 1 px qquad x geq 0 maximum error 2 5 10 5 where p 0 47047 a1 0 3480242 a2 0 0958798 a3 0 7478556erf x 1 1 1 a 1 x a 2 x 2 a 6 x 6 16 x 0 displaystyle operatorname erf x approx 1 frac 1 left 1 a 1 x a 2 x 2 cdots a 6 x 6 right 16 qquad x geq 0 maximum error 3 10 7 where a1 0 0705230784 a2 0 0422820123 a3 0 0092705272 a4 0 0001520143 a5 0 0002765672 a6 0 0000430638erf x 1 a 1 t a 2 t 2 a 5 t 5 e x 2 t 1 1 p x displaystyle operatorname erf x approx 1 left a 1 t a 2 t 2 cdots a 5 t 5 right e x 2 quad t frac 1 1 px maximum error 1 5 10 7 where p 0 3275911 a1 0 254829592 a2 0 284496736 a3 1 421413741 a4 1 453152027 a5 1 061405429 All of these approximations are valid for x 0 To use these approximations for negative x use the fact that erf x is an odd function so erf x erf x Exponential bounds and a pure exponential approximation for the complementary error function are given by 14 erfc x 1 2 e 2 x 2 1 2 e x 2 e x 2 x gt 0 erfc x 1 6 e x 2 1 2 e 4 3 x 2 x gt 0 displaystyle begin aligned operatorname erfc x amp leq tfrac 1 2 e 2x 2 tfrac 1 2 e x 2 leq e x 2 amp quad x amp gt 0 operatorname erfc x amp approx tfrac 1 6 e x 2 tfrac 1 2 e frac 4 3 x 2 amp quad x amp gt 0 end aligned The above have been generalized to sums of N exponentials 15 with increasing accuracy in terms of N so that erfc x can be accurately approximated or bounded by 2Q 2 x where Q x n 1 N a n e b n x 2 displaystyle tilde Q x sum n 1 N a n e b n x 2 In particular there is a systematic methodology to solve the numerical coefficients an bn Nn 1 that yield a minimax approximation or bound for the closely related Q function Q x Q x Q x Q x or Q x Q x for x 0 The coefficients an bn Nn 1 for many variations of the exponential approximations and bounds up to N 25 have been released to open access as a comprehensive dataset 16 A tight approximation of the complementary error function for x 0 is given by Karagiannidis amp Lioumpas 2007 17 who showed for the appropriate choice of parameters A B that erfc x 1 e A x e x 2 B p x displaystyle operatorname erfc x approx frac left 1 e Ax right e x 2 B sqrt pi x They determined A B 1 98 1 135 which gave a good approximation for all x 0 Alternative coefficients are also available for tailoring accuracy for a specific application or transforming the expression into a tight bound 18 A single term lower bound is 19 erfc x 2 e p b 1 b e b x 2 x 0 b gt 1 displaystyle operatorname erfc x geq sqrt frac 2e pi frac sqrt beta 1 beta e beta x 2 qquad x geq 0 quad beta gt 1 where the parameter b can be picked to minimize error on the desired interval of approximation Another approximation is given by Sergei Winitzki using his global Pade approximations 20 21 2 3 erf x sgn x 1 exp x 2 4 p a x 2 1 a x 2 displaystyle operatorname erf x approx operatorname sgn x cdot sqrt 1 exp left x 2 frac frac 4 pi ax 2 1 ax 2 right where a 8 p 3 3 p 4 p 0 140012 displaystyle a frac 8 pi 3 3 pi 4 pi approx 0 140012 This is designed to be very accurate in a neighborhood of 0 and a neighborhood of infinity and the relative error is less than 0 00035 for all real x Using the alternate value a 0 147 reduces the maximum relative error to about 0 00013 22 This approximation can be inverted to obtain an approximation for the inverse error function erf 1 x sgn x 2 p a ln 1 x 2 2 2 ln 1 x 2 a 2 p a ln 1 x 2 2 displaystyle operatorname erf 1 x approx operatorname sgn x cdot sqrt sqrt left frac 2 pi a frac ln left 1 x 2 right 2 right 2 frac ln left 1 x 2 right a left frac 2 pi a frac ln left 1 x 2 right 2 right An approximation with a maximal error of 1 2 10 7 for any real argument is 23 erf x 1 t x 0 t 1 x lt 0 displaystyle operatorname erf x begin cases 1 tau amp x geq 0 tau 1 amp x lt 0 end cases with t t exp x 2 1 26551223 1 00002368 t 0 37409196 t 2 0 09678418 t 3 0 18628806 t 4 0 27886807 t 5 1 13520398 t 6 1 48851587 t 7 0 82215223 t 8 0 17087277 t 9 displaystyle begin aligned tau amp t cdot exp left x 2 1 26551223 1 00002368t 0 37409196t 2 0 09678418t 3 0 18628806t 4 right amp left qquad qquad qquad 0 27886807t 5 1 13520398t 6 1 48851587t 7 0 82215223t 8 0 17087277t 9 right end aligned and t 1 1 1 2 x displaystyle t frac 1 1 frac 1 2 x Table of values Edit Further information Interval estimation Coverage probability and 68 95 99 7 rule x erf x 1 erf x0 0 10 02 0 022564 575 0 977435 4250 04 0 045111 106 0 954888 8940 06 0 067621 594 0 932378 4060 08 0 090078 126 0 909921 8740 1 0 112462 916 0 887537 0840 2 0 222702 589 0 777297 4110 3 0 328626 759 0 671373 2410 4 0 428392 355 0 571607 6450 5 0 520499 878 0 479500 1220 6 0 603856 091 0 396143 9090 7 0 677801 194 0 322198 8060 8 0 742100 965 0 257899 0350 9 0 796908 212 0 203091 7881 0 842700 793 0 157299 2071 1 0 880205 070 0 119794 9301 2 0 910313 978 0 089686 0221 3 0 934007 945 0 065992 0551 4 0 952285 120 0 047714 8801 5 0 966105 146 0 033894 8541 6 0 976348 383 0 023651 6171 7 0 983790 459 0 016209 5411 8 0 989090 502 0 010909 4981 9 0 992790 429 0 007209 5712 0 995322 265 0 004677 7352 1 0 997020 533 0 002979 4672 2 0 998137 154 0 001862 8462 3 0 998856 823 0 001143 1772 4 0 999311 486 0 000688 5142 5 0 999593 048 0 000406 9523 0 999977 910 0 000022 0903 5 0 999999 257 0 000000 743Related functions EditComplementary error function Edit The complementary error function denoted erfc is defined as Plot of the complementary error function Erfc z in the complex plane from 2 2i to 2 2i with colors created with Mathematica 13 1 function ComplexPlot3Derfc x 1 erf x 2 p x e t 2 d t e x 2 erfcx x displaystyle begin aligned operatorname erfc x amp 1 operatorname erf x 5pt amp frac 2 sqrt pi int x infty e t 2 mathrm d t 5pt amp e x 2 operatorname erfcx x end aligned which also defines erfcx the scaled complementary error function 24 which can be used instead of erfc to avoid arithmetic underflow 24 25 Another form of erfc x for x 0 is known as Craig s formula after its discoverer 26 erfc x x 0 2 p 0 p 2 exp x 2 sin 2 8 d 8 displaystyle operatorname erfc x mid x geq 0 frac 2 pi int 0 frac pi 2 exp left frac x 2 sin 2 theta right mathrm d theta This expression is valid only for positive values of x but it can be used in conjunction with erfc x 2 erfc x to obtain erfc x for negative values This form is advantageous in that the range of integration is fixed and finite An extension of this expression for the erfc of the sum of two non negative variables is as follows 27 erfc x y x y 0 2 p 0 p 2 exp x 2 sin 2 8 y 2 cos 2 8 d 8 displaystyle operatorname erfc x y mid x y geq 0 frac 2 pi int 0 frac pi 2 exp left frac x 2 sin 2 theta frac y 2 cos 2 theta right mathrm d theta Imaginary error function Edit The imaginary error function denoted erfi is defined as Plot of the imaginary error function Erfi z in the complex plane from 2 2i to 2 2i with colors created with Mathematica 13 1 function ComplexPlot3D erfi x i erf i x 2 p 0 x e t 2 d t 2 p e x 2 D x displaystyle begin aligned operatorname erfi x amp i operatorname erf ix 5pt amp frac 2 sqrt pi int 0 x e t 2 mathrm d t 5pt amp frac 2 sqrt pi e x 2 D x end aligned where D x is the Dawson function which can be used instead of erfi to avoid arithmetic overflow 24 Despite the name imaginary error function erfi x is real when x is real When the error function is evaluated for arbitrary complex arguments z the resulting complex error function is usually discussed in scaled form as the Faddeeva function w z e z 2 erfc i z erfcx i z displaystyle w z e z 2 operatorname erfc iz operatorname erfcx iz Cumulative distribution function Edit The error function is essentially identical to the standard normal cumulative distribution function denoted F also named norm x by some software languages citation needed as they differ only by scaling and translation Indeed the normal cumulative distribution function plotted in the complex planeF x 1 2 p x e t 2 2 d t 1 2 1 erf x 2 1 2 erfc x 2 displaystyle begin aligned Phi x amp frac 1 sqrt 2 pi int infty x e tfrac t 2 2 mathrm d t 6pt amp frac 1 2 left 1 operatorname erf frac x sqrt 2 right 6pt amp frac 1 2 operatorname erfc left frac x sqrt 2 right end aligned or rearranged for erf and erfc erf x 2 F x 2 1 erfc x 2 F x 2 2 1 F x 2 displaystyle begin aligned operatorname erf x amp 2 Phi left x sqrt 2 right 1 6pt operatorname erfc x amp 2 Phi left x sqrt 2 right amp 2 left 1 Phi left x sqrt 2 right right end aligned Consequently the error function is also closely related to the Q function which is the tail probability of the standard normal distribution The Q function can be expressed in terms of the error function as Q x 1 2 1 2 erf x 2 1 2 erfc x 2 displaystyle begin aligned Q x amp frac 1 2 frac 1 2 operatorname erf frac x sqrt 2 amp frac 1 2 operatorname erfc frac x sqrt 2 end aligned The inverse of F is known as the normal quantile function or probit function and may be expressed in terms of the inverse error function as probit p F 1 p 2 erf 1 2 p 1 2 erfc 1 2 p displaystyle operatorname probit p Phi 1 p sqrt 2 operatorname erf 1 2p 1 sqrt 2 operatorname erfc 1 2p The standard normal cdf is used more often in probability and statistics and the error function is used more often in other branches of mathematics The error function is a special case of the Mittag Leffler function and can also be expressed as a confluent hypergeometric function Kummer s function erf x 2 x p M 1 2 3 2 x 2 displaystyle operatorname erf x frac 2x sqrt pi M left tfrac 1 2 tfrac 3 2 x 2 right It has a simple expression in terms of the Fresnel integral further explanation needed In terms of the regularized gamma function P and the incomplete gamma function erf x sgn x P 1 2 x 2 sgn x p g 1 2 x 2 displaystyle operatorname erf x operatorname sgn x cdot P left tfrac 1 2 x 2 right frac operatorname sgn x sqrt pi gamma left tfrac 1 2 x 2 right sgn x is the sign function Generalized error functions Edit Graph of generalised error functions En x grey curve E1 x 1 e x p red curve E2 x erf x green curve E3 x blue curve E4 x gold curve E5 x Some authors discuss the more general functions citation needed E n x n p 0 x e t n d t n p p 0 1 p x n p 1 n p 1 p displaystyle E n x frac n sqrt pi int 0 x e t n mathrm d t frac n sqrt pi sum p 0 infty 1 p frac x np 1 np 1 p Notable cases are E0 x is a straight line through the origin E0 x x e p E2 x is the error function erf x After division by n all the En for odd n look similar but not identical to each other Similarly the En for even n look similar but not identical to each other after a simple division by n All generalised error functions for n gt 0 look similar on the positive x side of the graph These generalised functions can equivalently be expressed for x gt 0 using the gamma function and incomplete gamma function E n x 1 p G n G 1 n G 1 n x n x gt 0 displaystyle E n x frac 1 sqrt pi Gamma n left Gamma left frac 1 n right Gamma left frac 1 n x n right right qquad x gt 0 Therefore we can define the error function in terms of the incomplete gamma function erf x 1 1 p G 1 2 x 2 displaystyle operatorname erf x 1 frac 1 sqrt pi Gamma left tfrac 1 2 x 2 right Iterated integrals of the complementary error function Edit The iterated integrals of the complementary error function are defined by 28 i n erfc z z i n 1 erfc z d z i 0 erfc z erfc z i 1 erfc z ierfc z 1 p e z 2 z erfc z i 2 erfc z 1 4 erfc z 2 z ierfc z displaystyle begin aligned operatorname i n operatorname erfc z amp int z infty operatorname i n 1 operatorname erfc zeta mathrm d zeta 6pt operatorname i 0 operatorname erfc z amp operatorname erfc z operatorname i 1 operatorname erfc z amp operatorname ierfc z frac 1 sqrt pi e z 2 z operatorname erfc z operatorname i 2 operatorname erfc z amp tfrac 1 4 left operatorname erfc z 2z operatorname ierfc z right end aligned The general recurrence formula is 2 n i n erfc z i n 2 erfc z 2 z i n 1 erfc z displaystyle 2n cdot operatorname i n operatorname erfc z operatorname i n 2 operatorname erfc z 2z cdot operatorname i n 1 operatorname erfc z They have the power series i n erfc z j 0 z j 2 n j j G 1 n j 2 displaystyle operatorname i n operatorname erfc z sum j 0 infty frac z j 2 n j j Gamma left 1 frac n j 2 right from which follow the symmetry properties i 2 m erfc z i 2 m erfc z q 0 m z 2 q 2 2 m q 1 2 q m q displaystyle operatorname i 2m operatorname erfc z operatorname i 2m operatorname erfc z sum q 0 m frac z 2q 2 2 m q 1 2q m q and i 2 m 1 erfc z i 2 m 1 erfc z q 0 m z 2 q 1 2 2 m q 1 2 q 1 m q displaystyle operatorname i 2m 1 operatorname erfc z operatorname i 2m 1 operatorname erfc z sum q 0 m frac z 2q 1 2 2 m q 1 2q 1 m q Implementations EditAs real function of a real argument Edit In POSIX compliant operating systems the header a href Math h html class mw redirect title Math h math h a shall declare and the mathematical library a href Libm html class mw redirect title Libm libm a shall provide the functions erf and erfc double precision as well as their single precision and extended precision counterparts erff erfl and erfcf erfcl 29 The GNU Scientific Library provides erf erfc log erf and scaled error functions 30 As complex function of a complex argument Edit libcerf numeric C library for complex error functions provides the complex functions cerf cerfc cerfcx and the real functions erfi erfcx with approximately 13 14 digits precision based on the Faddeeva function as implemented in the MIT Faddeeva PackageSee also EditRelated functions Edit Gaussian integral over the whole real line Gaussian function derivative Dawson function renormalized imaginary error function Goodwin Staton integralIn probability Edit Normal distribution Normal cumulative distribution function a scaled and shifted form of error function Probit the inverse or quantile function of the normal CDF Q function the tail probability of the normal distribution Standard scoreReferences Edit Andrews Larry C 1998 Special functions of mathematics for engineers SPIE Press p 110 ISBN 9780819426161 Whittaker E T Watson G N 1927 A Course of Modern Analysis Cambridge University Press p 341 ISBN 978 0 521 58807 2 Glaisher James Whitbread Lee July 1871 On a class of definite integrals London Edinburgh and Dublin Philosophical Magazine and Journal of Science 4 42 277 294 302 doi 10 1080 14786447108640568 Retrieved 6 December 2017 Glaisher James Whitbread Lee September 1871 On a class of definite integrals Part II London Edinburgh and Dublin Philosophical Magazine and Journal of Science 4 42 279 421 436 doi 10 1080 14786447108640600 Retrieved 6 December 2017 A007680 OEIS oeis org Retrieved 2 April 2020 Weisstein Eric W Erf MathWorld Schopf H M Supancic P H 2014 On Burmann s Theorem and Its Application to Problems of Linear and Nonlinear Heat Transfer and Diffusion The Mathematica Journal 16 doi 10 3888 tmj 16 11 Weisstein Eric W Burmann s Theorem MathWorld Bergsma Wicher 2006 On a new correlation coefficient its orthogonal decomposition and associated tests of independence arXiv math 0604627 Cuyt Annie A M Petersen Vigdis B Verdonk Brigitte Waadeland Haakon Jones William B 2008 Handbook of Continued Fractions for Special Functions Springer Verlag ISBN 978 1 4020 6948 2 Ng Edward W Geller Murray January 1969 A table of integrals of the Error functions Journal of Research of the National Bureau of Standards Section B 73B 1 1 doi 10 6028 jres 073B 001 Schlomilch Oskar Xavier 1859 Ueber facultatenreihen Zeitschrift fur Mathematik und Physik in German 4 390 415 Nielson Niels 1906 Handbuch der Theorie der Gammafunktion in German Leipzig B G Teubner p 283 Eq 3 Retrieved 4 December 2017 Chiani M Dardari D Simon M K 2003 New Exponential Bounds and Approximations for the Computation of Error Probability in Fading Channels PDF IEEE Transactions on Wireless Communications 2 4 840 845 CiteSeerX 10 1 1 190 6761 doi 10 1109 TWC 2003 814350 Tanash I M Riihonen T 2020 Global minimax approximations and bounds for the Gaussian Q function by sums of exponentials IEEE Transactions on Communications 68 10 6514 6524 arXiv 2007 06939 doi 10 1109 TCOMM 2020 3006902 S2CID 220514754 Tanash I M Riihonen T 2020 Coefficients for Global Minimax Approximations and Bounds for the Gaussian Q Function by Sums of Exponentials Data set Zenodo doi 10 5281 zenodo 4112978 Karagiannidis G K Lioumpas A S 2007 An improved approximation for the Gaussian Q function PDF IEEE Communications Letters 11 8 644 646 doi 10 1109 LCOMM 2007 070470 S2CID 4043576 Tanash I M Riihonen T 2021 Improved coefficients for the Karagiannidis Lioumpas approximations and bounds to the Gaussian Q function IEEE Communications Letters 25 5 1468 1471 arXiv 2101 07631 doi 10 1109 LCOMM 2021 3052257 S2CID 231639206 Chang Seok Ho Cosman Pamela C Milstein Laurence B November 2011 Chernoff Type Bounds for the Gaussian Error Function IEEE Transactions on Communications 59 11 2939 2944 doi 10 1109 TCOMM 2011 072011 100049 S2CID 13636638 Winitzki Sergei 2003 Uniform approximations for transcendental functions Computational Science and Its Applications ICCSA 2003 Lecture Notes in Computer Science Vol 2667 Springer Berlin pp 780 789 doi 10 1007 3 540 44839 X 82 ISBN 978 3 540 40155 1 Zeng Caibin Chen Yang Cuan 2015 Global Pade approximations of the generalized Mittag Leffler function and its inverse Fractional Calculus and Applied Analysis 18 6 1492 1506 arXiv 1310 5592 doi 10 1515 fca 2015 0086 S2CID 118148950 Indeed Winitzki 32 provided the so called global Pade approximation Winitzki Sergei 6 February 2008 A handy approximation for the error function and its inverse a href Template Cite journal html title Template Cite journal cite journal a Cite journal requires journal help Numerical Recipes in Fortran 77 The Art of Scientific Computing ISBN 0 521 43064 X 1992 page 214 Cambridge University Press a b c Cody W J March 1993 Algorithm 715 SPECFUN A portable FORTRAN package of special function routines and test drivers PDF ACM Trans Math Softw 19 1 22 32 CiteSeerX 10 1 1 643 4394 doi 10 1145 151271 151273 S2CID 5621105 Zaghloul M R 1 March 2007 On the calculation of the Voigt line profile a single proper integral with a damped sine integrand Monthly Notices of the Royal Astronomical Society 375 3 1043 1048 Bibcode 2007MNRAS 375 1043Z doi 10 1111 j 1365 2966 2006 11377 x John W Craig A new simple and exact result for calculating the probability of error for two dimensional signal constellations Archived 3 April 2012 at the Wayback Machine Proceedings of the 1991 IEEE Military Communication Conference vol 2 pp 571 575 Behnad Aydin 2020 A Novel Extension to Craig s Q Function Formula and Its Application in Dual Branch EGC Performance Analysis IEEE Transactions on Communications 68 7 4117 4125 doi 10 1109 TCOMM 2020 2986209 S2CID 216500014 Carslaw H S Jaeger J C 1959 Conduction of Heat in Solids 2nd ed Oxford University Press ISBN 978 0 19 853368 9 p 484 math h mathematical declarations opengroup org 2018 Retrieved 21 April 2023 Special Functions GSL 2 7 documentation Further reading EditAbramowitz Milton Stegun Irene Ann eds 1983 June 1964 Chapter 7 Handbook of Mathematical Functions with Formulas Graphs and Mathematical Tables Applied Mathematics Series Vol 55 Ninth reprint with additional corrections of tenth original printing with corrections December 1972 first ed Washington D C New York United States Department of Commerce National Bureau of Standards Dover Publications p 297 ISBN 978 0 486 61272 0 LCCN 64 60036 MR 0167642 LCCN 65 12253 Press William H Teukolsky Saul A Vetterling William T Flannery Brian P 2007 Section 6 2 Incomplete Gamma Function and Error Function Numerical Recipes The Art of Scientific Computing 3rd ed New York Cambridge University Press ISBN 978 0 521 88068 8 Temme Nico M 2010 Error Functions Dawson s and Fresnel Integrals in Olver Frank W J Lozier Daniel M Boisvert Ronald F Clark Charles W eds NIST Handbook of Mathematical Functions Cambridge University Press ISBN 978 0 521 19225 5 MR 2723248External links EditA Table of Integrals of the Error Functions Retrieved from https en wikipedia org w index php title Error function amp oldid 1150985869, wikipedia, wiki, book, books, library,

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