Friday 3 May 2013

Chi-square Goodness of Fit Test with Java Program

Divide the interval into n equal bins and count the number of observations which fall into each bin over a long run. To test the hypothesis that the data comes from a uniform distribution, compute the statistic X^2 = sum (observed - expected)^2 / expected where the sum goes over all n bins. The expected count in each cell is (# of random numbers) / (# of bins). This statistic may be compared to a chi-square distribution with n - 1 degrees of freedom to test the uniformity of the generator.

import java.io.BufferedReader;
import java.io.InputStreamReader;
import java.util.ArrayList;

class Range
{
    double lowerEnd, upperEnd;
    int observed, Oi_Ei;
    double Oi_Ei_Sqr, Oi_Ei_Sqr_by_Ei;

    public Range(double low, double up) {
        lowerEnd = low;
        upperEnd = up;
    }
}

public class Test_ChiSquare {

    Range[] range;
    
    int Expected, interval;
    
    ArrayList<Double> randomNumbers;
    
    double ziNot=0;
    
    public Test_ChiSquare()
    {
        randomNumbers = new ArrayList<Double>();
        acceptRandomNumbers();
        doSettings();
        doCounting();
        doCalculations();
        print();
    }
    
    public void acceptRandomNumbers()
    {
        try
        {
            BufferedReader br = new BufferedReader(new InputStreamReader(System.in));
            
            System.out.print("Sample Space (N) = ");
            int count = Integer.parseInt(br.readLine());
            
            System.out.println("\nEnter Random Numbers: ");
            
            for(int i=0; i<count; i++)
            {
                randomNumbers.add(Double.parseDouble(br.readLine()));
            }
            
            System.out.print("Number of Intervals = ");
            
            interval = Integer.parseInt(br.readLine());
            
            doSettings();
        }
        catch(Exception e)
        {
            e.printStackTrace();
        }
    }
    
    
    public Test_ChiSquare(ArrayList<Double> randomNumbers, int interval) 
    {
        this.randomNumbers = randomNumbers;
        this.interval = interval;
            
        doSettings();
        doCounting();
        doCalculations();
        print();
    }

    private void doSettings()
    {
      range = new Range[interval];
        
        Expected = this.randomNumbers.size()/interval;
        
        double low=0;
        double up=1.0/interval;
        
        for(int i=0; i<range.length; i++)
        {
            range[i] = new Range(low, up);
            low=up;
            up=up+(1.0/interval);
        }
          
    }
    
    
    private void doCounting()
    {
        for(int i=0; i<randomNumbers.size(); i++)
        {
            for(int j=0; j<range.length; j++)
            {
                if(randomNumbers.get(i)<range[j].upperEnd)
                {
                    range[j].observed++;
                    break;
                }
            }
        }
    }
    
    
    private void doCalculations()
    {
        for(int i=0; i<range.length; i++)
        {
            Range current = range[i];
            
            current.Oi_Ei = current.observed - Expected;
            current.Oi_Ei_Sqr = Math.pow(current.Oi_Ei, 2);
            current.Oi_Ei_Sqr_by_Ei = current.Oi_Ei_Sqr/Expected*1.0;
            ziNot+=current.Oi_Ei_Sqr_by_Ei;
        }
    }
            
    private void print()
    {
        System.out.println("Interval\t|" + "Oi\t|" + "Ei\t|" + "Oi-Ei\t|" + "(Oi-Ei)^2\t|" + "(Oi-Ei)^2/Ei");
        
        System.out.println("------------------------------------------------");
                
        for(int i=0; i<range.length; i++)
        {
            Range current = range[i];
            System.out.println("["+current.lowerEnd+"-"+current.upperEnd+")\t|"+  current.observed+"\t|"+Expected+"\t|"+current.Oi_Ei+"\t|"+current.Oi_Ei_Sqr+"\t\t|"+current.Oi_Ei_Sqr_by_Ei);
        }
        
        System.out.println("\nZiNot = " + ziNot);
    }

    public static void main(String[] args)
    {
	Test_ChiSquare obj = new Test_ChiSquare();	
    }	
    
    
}

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