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negative_binomial_distribution Class

 

The latest version of this topic can be found at negative_binomial_distribution Class.

Generates a negative binomial distribution.

Syntax

class negative_binomial_distribution { public: // types typedef IntType result_type; struct param_type;

// constructor and reset functions
explicit negative_binomial_distribution(IntType k = 1, double p = 0.5);
explicit negative_binomial_distribution(const param_type& parm);
void reset();

// generating functions 
template `<`class URNG>  
result_type operator()(URNG& gen);
template `<`class URNG>
result_type operator()(URNG& gen, const param_type& parm);

// property functions     
IntType k() const;
double p() const;
param_type param() const;
void param(const param_type& parm);
result_type min() const;
result_type max() const; 

};

Parameters

IntType
The integer result type, defaults to int. For possible types, see <random>.

Remarks

The template class describes a distribution that produces values of a user-specified integral type, or type int if none is provided, distributed according to the Negative Binomial Distribution discrete probability function. The following table links to articles about individual members.

negative_binomial_distribution::negative_binomial_distribution negative_binomial_distribution::k negative_binomial_distribution::param
negative_binomial_distribution::operator() negative_binomial_distribution::p negative_binomial_distribution::param_type

The property members k() and p() return the currently stored distribution parameter values k and p respectively.

For more information about distribution classes and their members, see <random>.

For detailed information about the negative binomial distribution discrete probability function, see the Wolfram MathWorld article Negative Binomial Distribution.

Example

// compile with: /EHsc /W4  
#include <random>   
#include <iostream>  
#include <iomanip>  
#include <string>  
#include <map>  
  
void test(const int k, const double p, const int& s) {  
  
    // uncomment to use a non-deterministic seed  
    //    std::random_device rd;  
    //    std::mt19937 gen(rd());  
    std::mt19937 gen(1729);  
  
    std::negative_binomial_distribution<> distr(k, p);  
  
    std::cout << std::endl;  
    std::cout << "k == " << distr.k() << std::endl;  
    std::cout << "p == " << distr.p() << std::endl;  
  
    // generate the distribution as a histogram  
    std::map<int, int> histogram;  
    for (int i = 0; i < s; ++i) {  
        ++histogram[distr(gen)];  
    }  
  
    // print results  
    std::cout << "Histogram for " << s << " samples:" << std::endl;  
    for (const auto& elem : histogram) {  
        std::cout << std::setw(5) << elem.first << ' ' << std::string(elem.second, ':') << std::endl;  
    }  
    std::cout << std::endl;  
}  
  
int main()  
{  
    int    k_dist = 1;  
    double p_dist = 0.5;  
    int    samples = 100;  
  
    std::cout << "Use CTRL-Z to bypass data entry and run using default values." << std::endl;  
    std::cout << "Enter an integer value for k distribution (where 0 < k): ";  
    std::cin >> k_dist;  
    std::cout << "Enter a double value for p distribution (where 0.0 < p <= 1.0): ";  
    std::cin >> p_dist;  
    std::cout << "Enter an integer value for a sample count: ";  
    std::cin >> samples;  
  
    test(k_dist, p_dist, samples);  
}  
  

Output

First run:

Use CTRL-Z to bypass data entry and run using default values.  
Enter an integer value for k distribution (where 0 `<` k): 1  
Enter a double value for p distribution (where 0.0 `<`p `<`= 1.0): .5  
Enter an integer value for a sample count: 100  
 
k == 1  
p == 0.5  
Histogram for 100 samples:  
    0 :::::::::::::::::::::::::::::::::::::::::::  
    1 ::::::::::::::::::::::::::::::::  
    2 ::::::::::::  
    3 :::::::  
    4 ::::  
    5 ::  

Second run:

Use CTRL-Z to bypass data entry and run using default values.  
Enter an integer value for k distribution (where 0 `<` k): 100  
Enter a double value for p distribution (where 0.0 `<` p <= 1.0): .667  
Enter an integer value for a sample count: 100  
 
k == 100  
p == 0.667  
Histogram for 100 samples:  
    31 ::  
    32 :  
    33 ::  
    34 :  
    35 ::  
    37 ::  
    38 :  
    39 :  
    40 ::  
    41 :::  
    42 :::  
    43 :::::  
    44 :::::  
    45 ::::  
    46 ::::::  
    47 ::::::::  
    48 :::  
    49 :::  
    50 :::::::::  
    51 :::::::  
    52 ::  
    53 :::  
    54 :::::  
    56 ::::  
    58 :  
    59 :::::  
    60 ::  
    61 :  
    62 ::  
    64 :  
    69 ::::  

Requirements

Header: <random>

Namespace: std

negative_binomial_distribution::negative_binomial_distribution

Constructs the distribution.

explicit negative_binomial_distribution(IntType k = 1, double p = 0.5);

 
explicit negative_binomial_distribution(const param_type& parm);

Parameters

k
The k distribution parameter.

p
The p distribution parameter.

parm
The parameter structure used to construct the distribution.

Remarks

Precondition: 0.0 < k and 0.0 < p ≤ 1.0

The first constructor constructs an object whose stored p value holds the value p and whose stored k value holds the value k.

The second constructor constructs an object whose stored parameters are initialized from parm. You can obtain and set the current parameters of an existing distribution by calling the param() member function.

negative_binomial_distribution::param_type

Stores the parameters of the distribution.

struct param_type {
typedef negative_binomial_distribution<IntType> distribution_type;
param_type(IntType k = 1, double p = 0.5); IntType k() const; double p() const; .....
bool operator==(const param_type& right) const; bool operator!=(const param_type& right) const; };

Parameters

See parent topic negative_binomial_distribution Class.

Remarks

Precondition: 0.0 < k and 0.0 < p ≤ 1.0

This structure can be passed to the distribution's class constructor at instantiation, to the param() member function to set the stored parameters of an existing distribution, and to operator() to be used in place of the stored parameters.

See Also

<random>