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			238 lines
		
	
	
		
			9.3 KiB
		
	
	
	
		
			C++
		
	
	
	
	
	
		
		
			
		
	
	
			238 lines
		
	
	
		
			9.3 KiB
		
	
	
	
		
			C++
		
	
	
	
	
	
|  | // Copyright Paul A. 2007, 2010
 | ||
|  | // Copyright John Maddock 2006
 | ||
|  | 
 | ||
|  | // Use, modification and distribution are subject to the
 | ||
|  | // Boost Software License, Version 1.0.
 | ||
|  | // (See accompanying file LICENSE_1_0.txt
 | ||
|  | // or copy at http://www.boost.org/LICENSE_1_0.txt)
 | ||
|  | 
 | ||
|  | // Simple example of computing probabilities and quantiles for
 | ||
|  | // a Bernoulli random variable representing the flipping of a coin.
 | ||
|  | 
 | ||
|  | // http://mathworld.wolfram.com/CoinTossing.html
 | ||
|  | // http://en.wikipedia.org/wiki/Bernoulli_trial
 | ||
|  | // Weisstein, Eric W. "Dice." From MathWorld--A Wolfram Web Resource.
 | ||
|  | // http://mathworld.wolfram.com/Dice.html
 | ||
|  | // http://en.wikipedia.org/wiki/Bernoulli_distribution
 | ||
|  | // http://mathworld.wolfram.com/BernoulliDistribution.html
 | ||
|  | //
 | ||
|  | // An idealized coin consists of a circular disk of zero thickness which,
 | ||
|  | // when thrown in the air and allowed to fall, will rest with either side face up
 | ||
|  | // ("heads" H or "tails" T) with equal probability. A coin is therefore a two-sided die.
 | ||
|  | // Despite slight differences between the sides and nonzero thickness of actual coins,
 | ||
|  | // the distribution of their tosses makes a good approximation to a p==1/2 Bernoulli distribution.
 | ||
|  | 
 | ||
|  | //[binomial_coinflip_example1
 | ||
|  | 
 | ||
|  | /*`An example of a [@http://en.wikipedia.org/wiki/Bernoulli_process Bernoulli process]
 | ||
|  | is coin flipping. | ||
|  | A variable in such a sequence may be called a Bernoulli variable. | ||
|  | 
 | ||
|  | This example shows using the Binomial distribution to predict the probability | ||
|  | of heads and tails when throwing a coin. | ||
|  | 
 | ||
|  | The number of correct answers (say heads), | ||
|  | X, is distributed as a binomial random variable | ||
|  | with binomial distribution parameters number of trials (flips) n = 10 and probability (success_fraction) of getting a head p = 0.5 (a 'fair' coin). | ||
|  | 
 | ||
|  | (Our coin is assumed fair, but we could easily change the success_fraction parameter p | ||
|  | from 0.5 to some other value to simulate an unfair coin, | ||
|  | say 0.6 for one with chewing gum on the tail, | ||
|  | so it is more likely to fall tails down and heads up). | ||
|  | 
 | ||
|  | First we need some includes and using statements to be able to use the binomial distribution, some std input and output, and get started: | ||
|  | */ | ||
|  | 
 | ||
|  | #include <boost/math/distributions/binomial.hpp>
 | ||
|  |   using boost::math::binomial; | ||
|  | 
 | ||
|  | #include <iostream>
 | ||
|  |   using std::cout;  using std::endl;  using std::left; | ||
|  | #include <iomanip>
 | ||
|  |   using std::setw; | ||
|  | 
 | ||
|  | int main() | ||
|  | { | ||
|  |   cout << "Using Binomial distribution to predict how many heads and tails." << endl; | ||
|  |   try | ||
|  |   { | ||
|  | /*`
 | ||
|  | See note [link coinflip_eg_catch with the catch block] | ||
|  | about why a try and catch block is always a good idea. | ||
|  | 
 | ||
|  | First, construct a binomial distribution with parameters success_fraction | ||
|  | 1/2, and how many flips. | ||
|  | */ | ||
|  |     const double success_fraction = 0.5; // = 50% = 1/2 for a 'fair' coin.
 | ||
|  |     int flips = 10; | ||
|  |     binomial flip(flips, success_fraction); | ||
|  | 
 | ||
|  |     cout.precision(4); | ||
|  | /*`
 | ||
|  |  Then some examples of using Binomial moments (and echoing the parameters). | ||
|  | */ | ||
|  |     cout << "From " << flips << " one can expect to get on average " | ||
|  |       << mean(flip) << " heads (or tails)." << endl; | ||
|  |     cout << "Mode is " << mode(flip) << endl; | ||
|  |     cout << "Standard deviation is " << standard_deviation(flip) << endl; | ||
|  |     cout << "So about 2/3 will lie within 1 standard deviation and get between " | ||
|  |       <<  ceil(mean(flip) - standard_deviation(flip))  << " and " | ||
|  |       << floor(mean(flip) + standard_deviation(flip)) << " correct." << endl; | ||
|  |     cout << "Skewness is " << skewness(flip) << endl; | ||
|  |     // Skewness of binomial distributions is only zero (symmetrical)
 | ||
|  |     // if success_fraction is exactly one half,
 | ||
|  |     // for example, when flipping 'fair' coins.
 | ||
|  |     cout << "Skewness if success_fraction is " << flip.success_fraction() | ||
|  |       << " is " << skewness(flip) << endl << endl; // Expect zero for a 'fair' coin.
 | ||
|  | /*`
 | ||
|  | Now we show a variety of predictions on the probability of heads: | ||
|  | */ | ||
|  |     cout << "For " << flip.trials() << " coin flips: " << endl; | ||
|  |     cout << "Probability of getting no heads is " << pdf(flip, 0) << endl; | ||
|  |     cout << "Probability of getting at least one head is " << 1. - pdf(flip, 0) << endl; | ||
|  | /*`
 | ||
|  | When we want to calculate the probability for a range or values we can sum the PDF's: | ||
|  | */ | ||
|  |     cout << "Probability of getting 0 or 1 heads is " | ||
|  |       << pdf(flip, 0) + pdf(flip, 1) << endl; // sum of exactly == probabilities
 | ||
|  | /*`
 | ||
|  | Or we can use the cdf. | ||
|  | */ | ||
|  |     cout << "Probability of getting 0 or 1 (<= 1) heads is " << cdf(flip, 1) << endl; | ||
|  |     cout << "Probability of getting 9 or 10 heads is " << pdf(flip, 9) + pdf(flip, 10) << endl; | ||
|  | /*`
 | ||
|  | Note that using | ||
|  | */ | ||
|  |     cout << "Probability of getting 9 or 10 heads is " << 1. - cdf(flip, 8) << endl; | ||
|  | /*`
 | ||
|  | is less accurate than using the complement | ||
|  | */ | ||
|  |     cout << "Probability of getting 9 or 10 heads is " << cdf(complement(flip, 8)) << endl; | ||
|  | /*`
 | ||
|  | Since the subtraction may involve | ||
|  | [@http://docs.sun.com/source/806-3568/ncg_goldberg.html cancellation error],
 | ||
|  | where as `cdf(complement(flip, 8))` | ||
|  | does not use such a subtraction internally, and so does not exhibit the problem. | ||
|  | 
 | ||
|  | To get the probability for a range of heads, we can either add the pdfs for each number of heads | ||
|  | */ | ||
|  |     cout << "Probability of between 4 and 6 heads (4 or 5 or 6) is " | ||
|  |       //  P(X == 4) + P(X == 5) + P(X == 6)
 | ||
|  |       << pdf(flip, 4) + pdf(flip, 5) + pdf(flip, 6) << endl; | ||
|  | /*`
 | ||
|  | But this is probably less efficient than using the cdf | ||
|  | */ | ||
|  |     cout << "Probability of between 4 and 6 heads (4 or 5 or 6) is " | ||
|  |       // P(X <= 6) - P(X <= 3) == P(X < 4)
 | ||
|  |       << cdf(flip, 6) - cdf(flip, 3) << endl; | ||
|  | /*`
 | ||
|  | Certainly for a bigger range like, 3 to 7 | ||
|  | */ | ||
|  |     cout << "Probability of between 3 and 7 heads (3, 4, 5, 6 or 7) is " | ||
|  |       // P(X <= 7) - P(X <= 2) == P(X < 3)
 | ||
|  |       << cdf(flip, 7) - cdf(flip, 2) << endl; | ||
|  |     cout << endl; | ||
|  | 
 | ||
|  | /*`
 | ||
|  | Finally, print two tables of probability for the /exactly/ and /at least/ a number of heads. | ||
|  | */ | ||
|  |     // Print a table of probability for the exactly a number of heads.
 | ||
|  |     cout << "Probability of getting exactly (==) heads" << endl; | ||
|  |     for (int successes = 0; successes <= flips; successes++) | ||
|  |     { // Say success means getting a head (or equally success means getting a tail).
 | ||
|  |       double probability = pdf(flip, successes); | ||
|  |       cout << left << setw(2) << successes << "     " << setw(10) | ||
|  |         << probability << " or 1 in " << 1. / probability | ||
|  |         << ", or " << probability * 100. << "%" << endl; | ||
|  |     } // for i
 | ||
|  |     cout << endl; | ||
|  | 
 | ||
|  |     // Tabulate the probability of getting between zero heads and 0 upto 10 heads.
 | ||
|  |     cout << "Probability of getting upto (<=) heads" << endl; | ||
|  |     for (int successes = 0; successes <= flips; successes++) | ||
|  |     { // Say success means getting a head
 | ||
|  |       // (equally success could mean getting a tail).
 | ||
|  |       double probability = cdf(flip, successes); // P(X <= heads)
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|  |       cout << setw(2) << successes << "        " << setw(10) << left | ||
|  |         << probability << " or 1 in " << 1. / probability << ", or " | ||
|  |         << probability * 100. << "%"<< endl; | ||
|  |     } // for i
 | ||
|  | /*`
 | ||
|  | The last (0 to 10 heads) must, of course, be 100% probability. | ||
|  | */ | ||
|  |   } | ||
|  |   catch(const std::exception& e) | ||
|  |   { | ||
|  |     //
 | ||
|  |     /*`
 | ||
|  |     [#coinflip_eg_catch] | ||
|  |     It is always essential to include try & catch blocks because | ||
|  |     default policies are to throw exceptions on arguments that | ||
|  |     are out of domain or cause errors like numeric-overflow. | ||
|  | 
 | ||
|  |     Lacking try & catch blocks, the program will abort, whereas the | ||
|  |     message below from the thrown exception will give some helpful | ||
|  |     clues as to the cause of the problem. | ||
|  |     */ | ||
|  |     std::cout << | ||
|  |       "\n""Message from thrown exception was:\n   " << e.what() << std::endl; | ||
|  |   } | ||
|  | //] [binomial_coinflip_example1]
 | ||
|  |   return 0; | ||
|  | } // int main()
 | ||
|  | 
 | ||
|  | // Output:
 | ||
|  | 
 | ||
|  | //[binomial_coinflip_example_output
 | ||
|  | /*`
 | ||
|  | 
 | ||
|  | [pre | ||
|  | Using Binomial distribution to predict how many heads and tails. | ||
|  | From 10 one can expect to get on average 5 heads (or tails). | ||
|  | Mode is 5 | ||
|  | Standard deviation is 1.581 | ||
|  | So about 2/3 will lie within 1 standard deviation and get between 4 and 6 correct. | ||
|  | Skewness is 0 | ||
|  | Skewness if success_fraction is 0.5 is 0 | ||
|  | 
 | ||
|  | For 10 coin flips: | ||
|  | Probability of getting no heads is 0.0009766 | ||
|  | Probability of getting at least one head is 0.999 | ||
|  | Probability of getting 0 or 1 heads is 0.01074 | ||
|  | Probability of getting 0 or 1 (<= 1) heads is 0.01074 | ||
|  | Probability of getting 9 or 10 heads is 0.01074 | ||
|  | Probability of getting 9 or 10 heads is 0.01074 | ||
|  | Probability of getting 9 or 10 heads is 0.01074 | ||
|  | Probability of between 4 and 6 heads (4 or 5 or 6) is 0.6562 | ||
|  | Probability of between 4 and 6 heads (4 or 5 or 6) is 0.6563 | ||
|  | Probability of between 3 and 7 heads (3, 4, 5, 6 or 7) is 0.8906 | ||
|  | 
 | ||
|  | Probability of getting exactly (==) heads | ||
|  | 0      0.0009766  or 1 in 1024, or 0.09766% | ||
|  | 1      0.009766   or 1 in 102.4, or 0.9766% | ||
|  | 2      0.04395    or 1 in 22.76, or 4.395% | ||
|  | 3      0.1172     or 1 in 8.533, or 11.72% | ||
|  | 4      0.2051     or 1 in 4.876, or 20.51% | ||
|  | 5      0.2461     or 1 in 4.063, or 24.61% | ||
|  | 6      0.2051     or 1 in 4.876, or 20.51% | ||
|  | 7      0.1172     or 1 in 8.533, or 11.72% | ||
|  | 8      0.04395    or 1 in 22.76, or 4.395% | ||
|  | 9      0.009766   or 1 in 102.4, or 0.9766% | ||
|  | 10     0.0009766  or 1 in 1024, or 0.09766% | ||
|  | 
 | ||
|  | Probability of getting upto (<=) heads | ||
|  | 0         0.0009766  or 1 in 1024, or 0.09766% | ||
|  | 1         0.01074    or 1 in 93.09, or 1.074% | ||
|  | 2         0.05469    or 1 in 18.29, or 5.469% | ||
|  | 3         0.1719     or 1 in 5.818, or 17.19% | ||
|  | 4         0.377      or 1 in 2.653, or 37.7% | ||
|  | 5         0.623      or 1 in 1.605, or 62.3% | ||
|  | 6         0.8281     or 1 in 1.208, or 82.81% | ||
|  | 7         0.9453     or 1 in 1.058, or 94.53% | ||
|  | 8         0.9893     or 1 in 1.011, or 98.93% | ||
|  | 9         0.999      or 1 in 1.001, or 99.9% | ||
|  | 10        1          or 1 in 1, or 100% | ||
|  | ] | ||
|  | */ | ||
|  | //][/binomial_coinflip_example_output]
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