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:: <math>Q(x)\approx \frac{1}{12}e^{-\frac{x^2}{2}}+\frac{1}{4}e^{-\frac{2}{3} x^2}, \qquad x>0 </math>
:: <math>Q(x)\approx \frac{1}{12}e^{-\frac{x^2}{2}}+\frac{1}{4}e^{-\frac{2}{3} x^2}, \qquad x>0 </math>


*A tight approximation for the whole range of arguments is given by Karagiannidis & Lioumpas (2007) <ref>[http://users.auth.gr/users/9/3/028239/public_html/pdf/Q_Approxim.pdf Karagiannidis, G. K., & Lioumpas, A. S. (2007). ''An improved approximation for the Gaussian Q-function''. Communications Letters, IEEE, 11(8), 644-646.]</ref>{{Failed verification|date=February 2015}}
*A tight approximation for whole range of positive arguments is given by Karagiannidis & Lioumpas (2007) <ref>[http://users.auth.gr/users/9/3/028239/public_html/pdf/Q_Approxim.pdf Karagiannidis, G. K., & Lioumpas, A. S. (2007). ''An improved approximation for the Gaussian Q-function''. Communications Letters, IEEE, 11(8), 644-646.]</ref>{{Failed verification|date=February 2015}}


: <math> Q(x)\approx\frac{\left( 1-e^{-1.4x}\right) e^{-\frac{x^{2}}{2}}}{1.135\sqrt{2\pi}x}, x >0 </math>
: <math> Q(x)\approx\frac{\left( 1-e^{-1.4x}\right) e^{-\frac{x^{2}}{2}}}{1.135\sqrt{2\pi}x}, x >0 </math>

Revision as of 20:45, 12 September 2015

A plot of the Q-function.

In statistics, the Q-function is the tail probability of the standard normal distribution .[1][2] In other words, Q(x) is the probability that a normal (Gaussian) random variable will obtain a value larger than x standard deviations above the mean.

If the underlying random variable is y, then the proper argument to the tail probability is derived as:

which expresses the number of standard deviations away from the mean.

Other definitions of the Q-function, all of which are simple transformations of the normal cumulative distribution function, are also used occasionally.[3]

Because of its relation to the cumulative distribution function of the normal distribution, the Q-function can also be expressed in terms of the error function, which is an important function in applied mathematics and physics.

Definition and basic properties

Formally, the Q-function is defined as

Thus,

where is the cumulative distribution function of the normal Gaussian distribution.

The Q-function can be expressed in terms of the error function, or the complementary error function, as[2]

An alternative form of the Q-function known as Craig's formula, after its discoverer, is expressed as:[4]

This expression is valid only for positive values of x, but it can be used in conjunction with Q(x) = 1 − Q(−x) to obtain Q(x) for negative values. This form is advantageous in that the range of integration is finite.

become increasingly tight for large x, and are often useful.
Using the substitution v =u2/2, the upper bound is derived as follows:
Similarly, using and the quotient rule,
Solving for Q(x) provides the lower bound.
  • Improved exponential bounds and a pure exponential approximation are [5]
  • A tight approximation for whole range of positive arguments is given by Karagiannidis & Lioumpas (2007) [6][failed verification]

Inverse Q

The inverse Q-function can be trivially related to the inverse error function:

Values

The Q-function is well tabulated and can be computed directly in most of the mathematical software packages such as Matlab and Mathematica. Some values of the Q-function are given below for reference.

References