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			C++
		
	
	
	
	
	
		
		
			
		
	
	
			365 lines
		
	
	
		
			15 KiB
		
	
	
	
		
			C++
		
	
	
	
	
	
|  | // geometric_examples.cpp
 | ||
|  | 
 | ||
|  | // Copyright Paul A. Bristow 2010.
 | ||
|  | 
 | ||
|  | // 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)
 | ||
|  | 
 | ||
|  | // This file is written to be included from a Quickbook .qbk document.
 | ||
|  | // It can still be compiled by the C++ compiler, and run.
 | ||
|  | // Any output can also be added here as comment or included or pasted in elsewhere.
 | ||
|  | // Caution: this file contains Quickbook markup as well as code
 | ||
|  | // and comments: don't change any of the special comment markups!
 | ||
|  | 
 | ||
|  | // Examples of using the geometric distribution.
 | ||
|  | 
 | ||
|  | //[geometric_eg1_1
 | ||
|  | /*`
 | ||
|  | For this example, we will opt to #define two macros to control | ||
|  | the error and discrete handling policies. | ||
|  | For this simple example, we want to avoid throwing | ||
|  | an exception (the default policy) and just return infinity. | ||
|  | We want to treat the distribution as if it was continuous, | ||
|  | so we choose a discrete_quantile policy of real, | ||
|  | rather than the default policy integer_round_outwards. | ||
|  | */ | ||
|  | #define BOOST_MATH_OVERFLOW_ERROR_POLICY ignore_error
 | ||
|  | #define BOOST_MATH_DISCRETE_QUANTILE_POLICY real
 | ||
|  | /*`
 | ||
|  | [caution It is vital to #include distributions etc *after* the above #defines] | ||
|  | After that we need some includes to provide easy access to the negative binomial distribution, | ||
|  | and we need some std library iostream, of course. | ||
|  | */ | ||
|  | #include <boost/math/distributions/geometric.hpp>
 | ||
|  |   // for geometric_distribution
 | ||
|  |   using ::boost::math::geometric_distribution; //
 | ||
|  |   using ::boost::math::geometric; // typedef provides default type is double.
 | ||
|  |   using  ::boost::math::pdf; // Probability mass function.
 | ||
|  |   using  ::boost::math::cdf; // Cumulative density function.
 | ||
|  |   using  ::boost::math::quantile; | ||
|  | 
 | ||
|  | #include <boost/math/distributions/negative_binomial.hpp>
 | ||
|  |   // for negative_binomial_distribution
 | ||
|  |   using boost::math::negative_binomial; // typedef provides default type is double.
 | ||
|  | 
 | ||
|  | #include <boost/math/distributions/normal.hpp>
 | ||
|  |   // for negative_binomial_distribution
 | ||
|  |   using boost::math::normal; // typedef provides default type is double.
 | ||
|  | 
 | ||
|  | #include <iostream>
 | ||
|  |   using std::cout; using std::endl; | ||
|  |   using std::noshowpoint; using std::fixed; using std::right; using std::left; | ||
|  | #include <iomanip>
 | ||
|  |   using std::setprecision; using std::setw; | ||
|  | 
 | ||
|  | #include <limits>
 | ||
|  |   using std::numeric_limits; | ||
|  | //] [geometric_eg1_1]
 | ||
|  | 
 | ||
|  | int main() | ||
|  | { | ||
|  |   cout <<"Geometric distribution example" << endl; | ||
|  |   cout << endl; | ||
|  | 
 | ||
|  |   cout.precision(4); // But only show a few for this example.
 | ||
|  |   try | ||
|  |   { | ||
|  | //[geometric_eg1_2
 | ||
|  | /*`
 | ||
|  | It is always sensible to use try and catch blocks because defaults policies are to | ||
|  | throw an exception if anything goes wrong. | ||
|  | 
 | ||
|  | Simple try'n'catch blocks (see below) will ensure that you get a | ||
|  | helpful error message instead of an abrupt (and silent) program abort. | ||
|  | 
 | ||
|  | [h6 Throwing a dice] | ||
|  | The Geometric distribution describes the probability (/p/) of a number of failures | ||
|  | to get the first success in /k/ Bernoulli trials. | ||
|  | (A [@http://en.wikipedia.org/wiki/Bernoulli_distribution Bernoulli trial]
 | ||
|  | is one with only two possible outcomes, success of failure, | ||
|  | and /p/ is the probability of success). | ||
|  | 
 | ||
|  | Suppose an 'fair' 6-face dice is thrown repeatedly: | ||
|  | */ | ||
|  |     double success_fraction = 1./6; // success_fraction (p) = 0.1666
 | ||
|  |     // (so failure_fraction is 1 - success_fraction = 5./6 = 1- 0.1666 = 0.8333)
 | ||
|  | 
 | ||
|  | /*`If the dice is thrown repeatedly until the *first* time a /three/ appears.
 | ||
|  | The probablility distribution of the number of times it is thrown *not* getting a /three/ | ||
|  |  (/not-a-threes/ number of failures to get a /three/) | ||
|  | is a geometric distribution with the success_fraction = 1/6 = 0.1666[recur]. | ||
|  | 
 | ||
|  | We therefore start by constructing a geometric distribution | ||
|  | with the one parameter success_fraction, the probability of success. | ||
|  | */ | ||
|  |     geometric g6(success_fraction); // type double by default.
 | ||
|  | /*`
 | ||
|  | To confirm, we can echo the success_fraction parameter of the distribution. | ||
|  | */ | ||
|  |     cout << "success fraction of a six-sided dice is " << g6.success_fraction() << endl; | ||
|  | /*`So the probability of getting a three at the first throw (zero failures) is
 | ||
|  | */ | ||
|  |     cout << pdf(g6, 0) << endl; // 0.1667
 | ||
|  |     cout << cdf(g6, 0) << endl; // 0.1667
 | ||
|  | /*`Note that the cdf and pdf are identical because the is only one throw.
 | ||
|  | If we want the probability of getting the first /three/ on the 2nd throw: | ||
|  | */ | ||
|  |     cout << pdf(g6, 1) << endl; // 0.1389
 | ||
|  | 
 | ||
|  | /*`If we want the probability of getting the first /three/ on the 1st or 2nd throw
 | ||
|  | (allowing one failure): | ||
|  | */ | ||
|  |     cout << "pdf(g6, 0) + pdf(g6, 1) = " << pdf(g6, 0) + pdf(g6, 1) << endl; | ||
|  | /*`Or more conveniently, and more generally,
 | ||
|  | we can use the Cumulative Distribution Function CDF.*/ | ||
|  | 
 | ||
|  |     cout << "cdf(g6, 1) = " << cdf(g6, 1) << endl; // 0.3056
 | ||
|  | 
 | ||
|  | /*`If we allow many more (12) throws, the probability of getting our /three/ gets very high:*/ | ||
|  |     cout << "cdf(g6, 12) = " << cdf(g6, 12) << endl; // 0.9065 or 90% probability.
 | ||
|  | /*`If we want to be much more confident, say 99%,
 | ||
|  | we can estimate the number of throws to be this sure | ||
|  | using the inverse or quantile. | ||
|  | */ | ||
|  |     cout << "quantile(g6, 0.99) = " << quantile(g6, 0.99) << endl; // 24.26
 | ||
|  | /*`Note that the value returned is not an integer:
 | ||
|  | if you want an integer result you should use either floor, round or ceil functions, | ||
|  | or use the policies mechanism. | ||
|  | 
 | ||
|  | See __understand_dis_quant. | ||
|  | 
 | ||
|  | The geometric distribution is related to the negative binomial | ||
|  | __spaces `negative_binomial_distribution(RealType r, RealType p);` with parameter /r/ = 1. | ||
|  | So we could get the same result using the negative binomial, | ||
|  | but using the geometric the results will be faster, and may be more accurate. | ||
|  | */ | ||
|  |     negative_binomial nb(1, success_fraction); | ||
|  |     cout << pdf(nb, 1) << endl; // 0.1389
 | ||
|  |     cout << cdf(nb, 1) << endl; // 0.3056
 | ||
|  | /*`We could also the complement to express the required probability
 | ||
|  | as 1 - 0.99 = 0.01 (and get the same result): | ||
|  | */ | ||
|  |     cout << "quantile(complement(g6, 1 - p))  " << quantile(complement(g6, 0.01)) << endl; // 24.26
 | ||
|  | /*`
 | ||
|  | Note too that Boost.Math geometric distribution is implemented as a continuous function. | ||
|  | Unlike other implementations (for example R) it *uses* the number of failures as a *real* parameter, | ||
|  | not as an integer. If you want this integer behaviour, you may need to enforce this by | ||
|  | rounding the parameter you pass, probably rounding down, to the nearest integer. | ||
|  | For example, R returns the success fraction probability for all values of failures | ||
|  | from 0 to 0.999999 thus: | ||
|  | [pre | ||
|  | __spaces R> formatC(pgeom(0.0001,0.5, FALSE), digits=17) "               0.5" | ||
|  | ] [/pre] | ||
|  | So in Boost.Math the equivalent is | ||
|  | */ | ||
|  |     geometric g05(0.5);  // Probability of success = 0.5 or 50%
 | ||
|  |     // Output all potentially significant digits for the type, here double.
 | ||
|  | 
 | ||
|  | #ifdef BOOST_NO_CXX11_NUMERIC_LIMITS
 | ||
|  |   int max_digits10 = 2 + (boost::math::policies::digits<double, boost::math::policies::policy<> >() * 30103UL) / 100000UL; | ||
|  |   cout << "BOOST_NO_CXX11_NUMERIC_LIMITS is defined" << endl; | ||
|  | #else
 | ||
|  |   int max_digits10 = std::numeric_limits<double>::max_digits10; | ||
|  | #endif
 | ||
|  |   cout << "Show all potentially significant decimal digits std::numeric_limits<double>::max_digits10 = " | ||
|  |     << max_digits10 << endl; | ||
|  |   cout.precision(max_digits10); //
 | ||
|  | 
 | ||
|  |     cout << cdf(g05, 0.0001) << endl; // returns 0.5000346561579232, not exact 0.5.
 | ||
|  | /*`To get the R discrete behaviour, you simply need to round with,
 | ||
|  | for example, the `floor` function. | ||
|  | */ | ||
|  |     cout << cdf(g05, floor(0.0001)) << endl; // returns exactly 0.5
 | ||
|  | /*`
 | ||
|  | [pre | ||
|  | `> formatC(pgeom(0.9999999,0.5, FALSE), digits=17) [1] "              0.25"` | ||
|  | `> formatC(pgeom(1.999999,0.5, FALSE), digits=17)[1] "              0.25" k = 1` | ||
|  | `> formatC(pgeom(1.9999999,0.5, FALSE), digits=17)[1] "0.12500000000000003" k = 2` | ||
|  | ] [/pre] | ||
|  | shows that R makes an arbitrary round-up decision at about 1e7 from the next integer above. | ||
|  | This may be convenient in practice, and could be replicated in C++ if desired. | ||
|  | 
 | ||
|  | [h6 Surveying customers to find one with a faulty product] | ||
|  | A company knows from warranty claims that 2% of their products will be faulty, | ||
|  | so the 'success_fraction' of finding a fault is 0.02. | ||
|  | It wants to interview a purchaser of faulty products to assess their 'user experience'. | ||
|  | 
 | ||
|  | To estimate how many customers they will probably need to contact | ||
|  | in order to find one who has suffered from the fault, | ||
|  | we first construct a geometric distribution with probability 0.02, | ||
|  | and then chose a confidence, say 80%, 95%, or 99% to finding a customer with a fault. | ||
|  | Finally, we probably want to round up the result to the integer above using the `ceil` function. | ||
|  | (We could also use a policy, but that is hardly worthwhile for this simple application.) | ||
|  | 
 | ||
|  | (This also assumes that each customer only buys one product: | ||
|  | if customers bought more than one item, | ||
|  | the probability of finding a customer with a fault obviously improves.) | ||
|  | */ | ||
|  |     cout.precision(5); | ||
|  |     geometric g(0.02); // On average, 2 in 100 products are faulty.
 | ||
|  |     double c = 0.95; // 95% confidence.
 | ||
|  |     cout << " quantile(g, " << c << ") = " << quantile(g, c) << endl; | ||
|  | 
 | ||
|  |     cout << "To be " << c * 100 | ||
|  |       << "% confident of finding we customer with a fault, need to survey " | ||
|  |       <<  ceil(quantile(g, c)) << " customers." << endl; // 148
 | ||
|  |     c = 0.99; // Very confident.
 | ||
|  |     cout << "To be " << c * 100 | ||
|  |       << "% confident of finding we customer with a fault, need to survey " | ||
|  |       <<  ceil(quantile(g, c)) << " customers." << endl; // 227
 | ||
|  |     c = 0.80; // Only reasonably confident.
 | ||
|  |     cout << "To be " << c * 100 | ||
|  |       << "% confident of finding we customer with a fault, need to survey " | ||
|  |       <<  ceil(quantile(g, c)) << " customers." << endl; // 79
 | ||
|  | 
 | ||
|  | /*`[h6 Basket Ball Shooters]
 | ||
|  | According to Wikipedia, average pro basket ball players get | ||
|  | [@http://en.wikipedia.org/wiki/Free_throw free throws]
 | ||
|  | in the baskets 70 to 80 % of the time, | ||
|  | but some get as high as 95%, and others as low as 50%. | ||
|  | Suppose we want to compare the probabilities | ||
|  | of failing to get a score only on the first or on the fifth shot? | ||
|  | To start we will consider the average shooter, say 75%. | ||
|  | So we construct a geometric distribution | ||
|  | with success_fraction parameter 75/100 = 0.75. | ||
|  | */ | ||
|  |     cout.precision(2); | ||
|  |     geometric gav(0.75); // Shooter averages 7.5 out of 10 in the basket.
 | ||
|  | /*`What is probability of getting 1st try in the basket, that is with no failures? */ | ||
|  |     cout << "Probability of score on 1st try = " << pdf(gav, 0) << endl; // 0.75
 | ||
|  | /*`This is, of course, the success_fraction probability 75%.
 | ||
|  | What is the probability that the shooter only scores on the fifth shot? | ||
|  | So there are 5-1 = 4 failures before the first success.*/ | ||
|  |     cout << "Probability of score on 5th try = " << pdf(gav, 4) << endl; // 0.0029
 | ||
|  | /*`Now compare this with the poor and the best players success fraction.
 | ||
|  | We need to constructing new distributions with the different success fractions, | ||
|  | and then get the corresponding probability density functions values: | ||
|  | */ | ||
|  |     geometric gbest(0.95); | ||
|  |     cout << "Probability of score on 5th try = " << pdf(gbest, 4) << endl; // 5.9e-6
 | ||
|  |     geometric gmediocre(0.50); | ||
|  |     cout << "Probability of score on 5th try = " << pdf(gmediocre, 4) << endl; // 0.031
 | ||
|  | /*`So we can see the very much smaller chance (0.000006) of 4 failures by the best shooters,
 | ||
|  | compared to the 0.03 of the mediocre.*/ | ||
|  | 
 | ||
|  | /*`[h6 Estimating failures]
 | ||
|  | Of course one man's failure is an other man's success. | ||
|  | So a fault can be defined as a 'success'. | ||
|  | 
 | ||
|  | If a fault occurs once after 100 flights, then one might naively say | ||
|  | that the risk of fault is obviously 1 in 100 = 1/100, a probability of 0.01. | ||
|  | 
 | ||
|  | This is the best estimate we can make, but while it is the truth, | ||
|  | it is not the whole truth, | ||
|  | for it hides the big uncertainty when estimating from a single event. | ||
|  | "One swallow doesn't make a summer." | ||
|  | To show the magnitude of the uncertainty, the geometric | ||
|  | (or the negative binomial) distribution can be used. | ||
|  | 
 | ||
|  | If we chose the popular 95% confidence in the limits, corresponding to an alpha of 0.05, | ||
|  | because we are calculating a two-sided interval, we must divide alpha by two. | ||
|  | */ | ||
|  |     double alpha = 0.05; | ||
|  |     double k = 100; // So frequency of occurrence is 1/100.
 | ||
|  |     cout << "Probability is failure is " << 1/k << endl; | ||
|  |     double t = geometric::find_lower_bound_on_p(k, alpha/2); | ||
|  |     cout << "geometric::find_lower_bound_on_p(" << int(k) << ", " << alpha/2 << ") = " | ||
|  |       << t << endl; // 0.00025
 | ||
|  |     t = geometric::find_upper_bound_on_p(k, alpha/2); | ||
|  |     cout << "geometric::find_upper_bound_on_p(" << int(k) << ", " << alpha/2 << ") = " | ||
|  |       << t << endl; // 0.037
 | ||
|  | /*`So while we estimate the probability is 0.01, it might lie between 0.0003 and 0.04.
 | ||
|  | Even if we relax our confidence to alpha = 90%, the bounds only contract to 0.0005 and 0.03. | ||
|  | And if we require a high confidence, they widen to 0.00005 to 0.05. | ||
|  | */ | ||
|  |     alpha = 0.1; // 90% confidence.
 | ||
|  |     t = geometric::find_lower_bound_on_p(k, alpha/2); | ||
|  |     cout << "geometric::find_lower_bound_on_p(" << int(k) << ", " << alpha/2 << ") = " | ||
|  |       << t << endl; // 0.0005
 | ||
|  |     t = geometric::find_upper_bound_on_p(k, alpha/2); | ||
|  |     cout << "geometric::find_upper_bound_on_p(" << int(k) << ", " << alpha/2 << ") = " | ||
|  |       << t << endl; // 0.03
 | ||
|  | 
 | ||
|  |     alpha = 0.01; // 99% confidence.
 | ||
|  |     t = geometric::find_lower_bound_on_p(k, alpha/2); | ||
|  |     cout << "geometric::find_lower_bound_on_p(" << int(k) << ", " << alpha/2 << ") = " | ||
|  |       << t << endl; // 5e-005
 | ||
|  |     t = geometric::find_upper_bound_on_p(k, alpha/2); | ||
|  |     cout << "geometric::find_upper_bound_on_p(" << int(k) << ", " << alpha/2 << ") = " | ||
|  |         << t << endl; // 0.052
 | ||
|  | /*`In real life, there will usually be more than one event (fault or success),
 | ||
|  | when the negative binomial, which has the neccessary extra parameter, will be needed. | ||
|  | */ | ||
|  | 
 | ||
|  | /*`As noted above, using a catch block is always a good idea,
 | ||
|  | even if you hope not to use it! | ||
|  | */ | ||
|  |   } | ||
|  |   catch(const std::exception& e) | ||
|  |   { // Since we have set an overflow policy of ignore_error,
 | ||
|  |     // an overflow exception should never be thrown.
 | ||
|  |      std::cout << "\nMessage from thrown exception was:\n " << e.what() << std::endl; | ||
|  | /*`
 | ||
|  | For example, without a ignore domain error policy, | ||
|  | if we asked for ``pdf(g, -1)`` for example, | ||
|  | we would get an unhelpful abort, but with a catch: | ||
|  | [pre | ||
|  | Message from thrown exception was: | ||
|  |  Error in function boost::math::pdf(const exponential_distribution<double>&, double): | ||
|  |  Number of failures argument is -1, but must be >= 0 ! | ||
|  | ] [/pre] | ||
|  | */ | ||
|  | //] [/ geometric_eg1_2]
 | ||
|  |   } | ||
|  |   return 0; | ||
|  | }  // int main()
 | ||
|  | 
 | ||
|  | 
 | ||
|  | /*
 | ||
|  | Output is: | ||
|  | 
 | ||
|  |   Geometric distribution example | ||
|  | 
 | ||
|  |   success fraction of a six-sided dice is 0.1667 | ||
|  |   0.1667 | ||
|  |   0.1667 | ||
|  |   0.1389 | ||
|  |   pdf(g6, 0) + pdf(g6, 1) = 0.3056 | ||
|  |   cdf(g6, 1) = 0.3056 | ||
|  |   cdf(g6, 12) = 0.9065 | ||
|  |   quantile(g6, 0.99) = 24.26 | ||
|  |   0.1389 | ||
|  |   0.3056 | ||
|  |   quantile(complement(g6, 1 - p))  24.26 | ||
|  |   0.5000346561579232 | ||
|  |   0.5 | ||
|  |    quantile(g, 0.95) = 147.28 | ||
|  |   To be 95% confident of finding we customer with a fault, need to survey 148 customers. | ||
|  |   To be 99% confident of finding we customer with a fault, need to survey 227 customers. | ||
|  |   To be 80% confident of finding we customer with a fault, need to survey 79 customers. | ||
|  |   Probability of score on 1st try = 0.75 | ||
|  |   Probability of score on 5th try = 0.0029 | ||
|  |   Probability of score on 5th try = 5.9e-006 | ||
|  |   Probability of score on 5th try = 0.031 | ||
|  |   Probability is failure is 0.01 | ||
|  |   geometric::find_lower_bound_on_p(100, 0.025) = 0.00025 | ||
|  |   geometric::find_upper_bound_on_p(100, 0.025) = 0.037 | ||
|  |   geometric::find_lower_bound_on_p(100, 0.05) = 0.00051 | ||
|  |   geometric::find_upper_bound_on_p(100, 0.05) = 0.03 | ||
|  |   geometric::find_lower_bound_on_p(100, 0.005) = 5e-005 | ||
|  |   geometric::find_upper_bound_on_p(100, 0.005) = 0.052 | ||
|  | 
 | ||
|  | */ | ||
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