# Standard Normal Distribution z-value function in C#

I been looking at the recent blog post by Jeff Atwood on Alternate Sorting Orders. I tried to convert the code in the post to C# but I ran into an issue. There is no function in .NET that I know of that will return the z-value, given the percentage of area under the standard normal curve. The recommended values to use for the algorithm are 95% and 97.5% which you can look up on the z-value table in any statistics book.

Does anyone know how to implement such a function for all values of z or at least to 6 standard deviations from the mean. One way would be to hard code the values into a dictionary and use a look up but there has to be a way of calculating the exact value. My attempt at solving this was to take a definite integral of the standard normal curve function.

y = (1 / (sqrt(2 * PI))) * e^(-(1/2) * x^2)

This gives me the area under the curve between two x values but then I am stuck… Maybe I am way of base and this is not how you would do it?

Thanks.

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Here's some code for the normal distribution written in Python, but it could easily be translated to C# by adding some punctuation. It's just about 15 lines of code.

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I really like your blog, Thank You! – Lukasz Nov 3 '09 at 1:52
+1 for "# A&S formula 7.1.26". Abramowitz and Stegun is terrific - everyone who does numerical work should know about it. – duffymo Nov 3 '09 at 2:17
... and instead of translating it to C# youself, you could just click on the "C#" link. – Contango May 27 '11 at 13:16

Here's a C# translation of the normal quantile C code used in the stats program R.

``````/// <summary>
/// Quantile function (Inverse CDF) for the normal distribution.
/// </summary>
/// <param name="p">Probability.</param>
/// <param name="mu">Mean of normal distribution.</param>
/// <param name="sigma">Standard deviation of normal distribution.</param>
/// <param name="lower_tail">If true, probability is P[X <= x], otherwise P[X > x].</param>
/// <param name="log_p">If true, probabilities are given as log(p).</param>
/// <returns>P[X <= x] where x ~ N(mu,sigma^2)</returns>
/// <remarks>See https://svn.r-project.org/R/trunk/src/nmath/qnorm.c</remarks>
public static double QNorm(double p, double mu, double sigma, bool lower_tail, bool log_p)
{
if (double.IsNaN(p) || double.IsNaN(mu) || double.IsNaN(sigma)) return (p + mu + sigma);
double ans;
bool isBoundaryCase = R_Q_P01_boundaries(p, double.NegativeInfinity, double.PositiveInfinity, lower_tail, log_p, out ans);
if (isBoundaryCase) return (ans);
if (sigma < 0) return (double.NaN);
if (sigma == 0) return (mu);

double p_ = R_DT_qIv(p, lower_tail, log_p);
double q = p_ - 0.5;
double r, val;

if (Math.Abs(q) <= 0.425)  // 0.075 <= p <= 0.925
{
r = .180625 - q * q;
val = q * (((((((r * 2509.0809287301226727 +
33430.575583588128105) * r + 67265.770927008700853) * r +
45921.953931549871457) * r + 13731.693765509461125) * r +
1971.5909503065514427) * r + 133.14166789178437745) * r +
3.387132872796366608)
/ (((((((r * 5226.495278852854561 +
28729.085735721942674) * r + 39307.89580009271061) * r +
21213.794301586595867) * r + 5394.1960214247511077) * r +
687.1870074920579083) * r + 42.313330701600911252) * r + 1.0);
}
else
{
r = q > 0 ? R_DT_CIv(p, lower_tail, log_p) : p_;
r = Math.Sqrt(-((log_p && ((lower_tail && q <= 0) || (!lower_tail && q > 0))) ? p : Math.Log(r)));

if (r <= 5)              // <==> min(p,1-p) >= exp(-25) ~= 1.3888e-11
{
r -= 1.6;
val = (((((((r * 7.7454501427834140764e-4 +
.0227238449892691845833) * r + .24178072517745061177) *
r + 1.27045825245236838258) * r +
3.64784832476320460504) * r + 5.7694972214606914055) *
r + 4.6303378461565452959) * r +
1.42343711074968357734)
/ (((((((r *
1.05075007164441684324e-9 + 5.475938084995344946e-4) *
r + .0151986665636164571966) * r +
.14810397642748007459) * r + .68976733498510000455) *
r + 1.6763848301838038494) * r +
2.05319162663775882187) * r + 1.0);
}
else                     // very close to  0 or 1
{
r -= 5.0;
val = (((((((r * 2.01033439929228813265e-7 +
2.71155556874348757815e-5) * r +
.0012426609473880784386) * r + .026532189526576123093) *
r + .29656057182850489123) * r +
1.7848265399172913358) * r + 5.4637849111641143699) *
r + 6.6579046435011037772)
/ (((((((r *
2.04426310338993978564e-15 + 1.4215117583164458887e-7) *
r + 1.8463183175100546818e-5) * r +
7.868691311456132591e-4) * r + .0148753612908506148525)
* r + .13692988092273580531) * r +
.59983220655588793769) * r + 1.0);
}
if (q < 0.0) val = -val;
}

return (mu + sigma * val);
}
``````

Some helper methods:

``````private static bool R_Q_P01_boundaries(double p, double _LEFT_, double _RIGHT_, bool lower_tail, bool log_p, out double ans)
{
if (log_p)
{
if (p > 0.0)
{
ans = double.NaN;
return (true);
}
if (p == 0.0)
{
ans = lower_tail ? _RIGHT_ : _LEFT_;
return (true);
}
if (p == double.NegativeInfinity)
{
ans = lower_tail ? _LEFT_ : _RIGHT_;
return (true);
}
}
else
{
if (p < 0.0 || p > 1.0)
{
ans = double.NaN;
return (true);
}
if (p == 0.0)
{
ans = lower_tail ? _LEFT_ : _RIGHT_;
return (true);
}
if (p == 1.0)
{
ans = lower_tail ? _RIGHT_ : _LEFT_;
return (true);
}
}
ans = double.NaN;
return (false);
}

private static double R_DT_qIv(double p, bool lower_tail, bool log_p)
{
return (log_p ? (lower_tail ? Math.Exp(p) : -ExpM1(p)) : R_D_Lval(p, lower_tail));
}

private static double R_DT_CIv(double p, bool lower_tail, bool log_p)
{
return (log_p ? (lower_tail ? -ExpM1(p) : Math.Exp(p)) : R_D_Cval(p, lower_tail));
}

private static double R_D_Lval(double p, bool lower_tail)
{
return lower_tail ? p : 0.5 - p + 0.5;
}

private static double R_D_Cval(double p, bool lower_tail)
{
return lower_tail ? 0.5 - p + 0.5 : p;
}
private static double ExpM1(double x)
{
if (Math.Abs(x) < 1e-5)
return x + 0.5 * x * x;
else
return Math.Exp(x) - 1.0;
}
``````

In your case, you want mu=0.0, sigma=1.0, lower_tail=true, log_p=false.

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You're missing definitions for `R_D_Lval` and `R_D_Cval` as defined in svn.r-project.org/R/trunk/src/nmath/dpq.h. In C# they are as follows: `private static double R_D_Lval(double p, bool lower_tail) { return lower_tail ? p : 0.5 - p + 0.5; }` and `private static double R_D_Cval(double p, bool lower_tail) { return lower_tail ? 0.5 - p + 0.5 : p; }` – Martin Neal Apr 3 '12 at 22:58
Thanks; I've added these to the answer. – Richie Cotton Apr 4 '12 at 14:55
What is `-Base.ExpM1()` referring to? – Eduardo Molteni Jan 14 '13 at 23:29
Added `ExpM1()` definition. Hope is right. – Eduardo Molteni Jan 14 '13 at 23:34
The R version of `expm1` is defined here: svn.r-project.org/R/trunk/src/nmath/expm1.c. It relies on `log1p` (svn.r-project.org/R/trunk/src/nmath/log1p.c) and `chebyshev_init` and `chebyshev_eval` (svn.r-project.org/R/trunk/src/nmath/chebyshev.c). We could easily end up writing an entire numerics library in C# here! – Richie Cotton Jan 15 '13 at 10:39

Look up implementations of the error function. There was one in all the classic Numerical Recipes in ... books.

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There's an open source library called math.net that might help. Math.net

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I looked at it before I posted the question and didn’t see it in there. Also I would like to have just the function since it would be a bit much to include the entire math library for a single function. Thanks. – Lukasz Nov 2 '09 at 19:03
It appears to be in MathNet.Numerics.Fn - as it's open source you should be able to examine the code for the implementation. – FinnNk Nov 2 '09 at 19:30
it's there: Normal aNormal = new Normal(); double d = aNormal.InverseCumulativeDistribution(Prob); – mcmillab May 9 '13 at 21:46

For a newer version of MathNet

``````    //standard normal cumulative distribution function
static double F(double x)
{
MathNet.Numerics.Distributions.Normal result = new MathNet.Numerics.Distributions.Normal();
return result.CumulativeDistribution(x);
}
``````
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