# Implement Gaussian Naive Bayes

I'm trying to implement Gaussian Naive Bayes in C# for classification of points. I have implemented first part ( http://www.statsoft.com/textbook/naive-bayes-classifier/ ) probability part, but i don't understand how to implement Gaussian Naive Bayes algorithm normal model. This is my code:

``````class NaiveBayesClassifier
{
private List<Point> listTrainPoints = new List<Point>();
private int totalPoints = 0;

public NaiveBayesClassifier(List<Point> listTrainPoints)
{
this.listTrainPoints = listTrainPoints;
this.totalPoints = this.listTrainPoints.Count;
}

private List<Point> vecinityPoints(Point p, double maxDist)
{
List<Point> listVecinityPoints = new List<Point>();
for (int i = 0; i < listTrainPoints.Count; i++)
{
if (p.distance(listTrainPoints[i]) <= maxDist)
{
}
}
return listVecinityPoints;
}

public double priorProbabilityFor(double currentType)
{
double countCurrentType = 0;
for (int i = 0; i < this.listTrainPoints.Count; i++)
{
if (this.listTrainPoints[i].Type == currentType)
{
countCurrentType++;
}
}

return (countCurrentType / this.totalPoints);
}

public double likelihoodOfXGiven(double currentType, List<Point> listVecinityPoints)
{
double countCurrentType = 0;
for (int i = 0; i < listVecinityPoints.Count; i++)
{
if (listVecinityPoints[i].Type == currentType)
{
countCurrentType++;
}
}

return (countCurrentType / this.totalPoints);
}

public double posteriorProbabilityXBeing(double priorProbabilityFor, double likelihoodOfXGiven)
{
return (priorProbabilityFor * likelihoodOfXGiven);
}

public int allegedClass(Point p, double maxDist)
{
int type1 = 1, type2 = 2;

List<Point> listVecinityPoints = this.vecinityPoints(p, maxDist);

double priorProbabilityForType1 = this.priorProbabilityFor(type1);
double priorProbabilityForType2 = this.priorProbabilityFor(type2);

double likelihoodOfXGivenType1 = likelihoodOfXGiven(type1, listVecinityPoints);
double likelihoodOfXGivenType2 = likelihoodOfXGiven(type2, listVecinityPoints);

double posteriorProbabilityXBeingType1 = posteriorProbabilityXBeing(priorProbabilityForType1, likelihoodOfXGivenType1);
double posteriorProbabilityXBeingType2 = posteriorProbabilityXBeing(priorProbabilityForType2, likelihoodOfXGivenType2);

if (posteriorProbabilityXBeingType1 > posteriorProbabilityXBeingType2)
return type1;
else
return type2;
}
}
``````

In this pdf file (Problem 5) is the description of what i need to do ( http://romanager.ro/s.10-701.hw1.sol.pdf ). My work is to implement Gaussina Naive Bayes and kNN algorithms and compare the result on a set of data. Please teach me where and how to implement Gaussian Naive Bayes algorithm.

Thanks!

• no one can help me? :( – Urmelinho Mar 25 '12 at 16:03
• Urmelinho: Offer a bounty and someone might help :-) – Ashwin Nanjappa Mar 29 '12 at 5:18
• for some ideas i don't think that someone want bounty from me ... for this part of algorithm i am completely out. You may consider that my thanks will be your rewards for the solution. I will consider any advice as a solution :D – Urmelinho Mar 29 '12 at 10:34