# Calculate Normal Distrubution using Java

EDIT:

Actually I realized that what I need is the value of X. Let me make it clearer. Suppose, I know the probability P = 0.95 since I want to use two standard deviations. I know the ranges P(-500 < x <500) that means I know y and z , I know the mean and standard deviation as well. If I want to know what will be the value of x which method should I use. I have found one calculator doing something like this but could not understand which formula to use.

Original Question:
`I want to calculate normal distribution probability of random variables using java. Was not sure which formula to use to code to solve a problem like this. If I know the value of mean and Standard deviation and want to find the probability of being x's value between 2 certain values y and z (P(-500

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As trashgod said, definitely look at the apache.commons.Math project. It contains a nice statistics package, which shall be able to do what you want. – peshkira Jun 23 '11 at 8:21

You can use the error function, available in `org.apache.commons.math.special.Erf`, as discussed here and here.

Addendum: The methods proposed in @Brent Worden's answer considerably simplify the solution of such problems. As a concrete example, the code below shows how to solve the examples to which you refer. In addition, I found it helpful to compare the definition here to the implementation of `cumulativeProbability()` using `Erf.erf`. Note also how the implementation of `inverseCumulativeProbability()` generalizes the required iterative approach.

``````import org.apache.commons.math.MathException;
import org.apache.commons.math.distribution.NormalDistribution;
import org.apache.commons.math.distribution.NormalDistributionImpl;

/**
* @see http://stattrek.com/Tables/Normal.aspx#examples
* @see http://stackoverflow.com/questions/6353678
*/
public class CumulativeProbability {

private static NormalDistribution d;

public static void main(String[] args) throws MathException {
// Problem 1; µ = 1000; σ = 100
d = new NormalDistributionImpl(1000, 100);
System.out.println(d.cumulativeProbability(1200));
// Problem 2; µ = 50; σ = 10
d = new NormalDistributionImpl(50, 10);
System.out.println(d.inverseCumulativeProbability(0.9));
}
}
``````

Console:

```0.9772498680518208
62.81551565546365
```
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As my answer relies on his answer, I decline the bounty in favor of @Brent Worden. Of course, you can feel free to accept or up-vote my answer, too. :-) – trashgod Jun 23 '11 at 18:25

The Colt library developed at CERN supports many statistic functions, also the Normal (aka Gaussian) distribution in `cern.jet.random.Normal`.

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+1: The parts I've used were quite a bit nicer than the commons-math equivalents. – Dmitri Jun 23 '11 at 18:28
I'm not sure how `cern.jet.random.Normal` could be used here. Are you suggesting a Monte_Carlo approach? – trashgod Jun 23 '11 at 19:59

Another alternative from commons-math is to use its NormalDistributionImpl:

``````    new org.apache.commons.math.distribution.NormalDistributionImpl(mean, std)
.cumulativeProbability(a, b)
``````

This giveS P(a ≤ X ≤ b) for X ~ N(mean, std).

From the updated question, it looks like you want to construct confidence intervals. If so, use the inverseCumulativeProbability method. It computes the values x for a probability p such that, P(X ≤ x) = p.

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Thanks .. for the suggestion. Suppose if I know the value of probability (since I want to use two standard deviation(where p is 95%)), I know the values if a and b and I would like to know the value of X. What should I do in that case? I apologize if that sounds naive but I'm not that familiar with this statistical approach. Thanks in advance. – Pow Jun 20 '11 at 23:48
It sounds like you want to create confidence intervals. If so, use the inverseCumulativeProbability method. – Brent Worden Jun 21 '11 at 20:19
+1 Much easier! – trashgod Jun 23 '11 at 18:25