[section:logistic_dist Logistic Distribution] ``#include `` namespace boost{ namespace math{ template class logistic_distribution; template class logistic_distribution { public: typedef RealType value_type; typedef Policy policy_type; // Construct: logistic_distribution(RealType location = 0, RealType scale = 1); // Accessors: RealType location()const; // location. RealType scale()const; // scale. }; typedef logistic_distribution<> logistic; }} // namespaces The logistic distribution is a continuous probability distribution. It has two parameters - location and scale. The cumulative distribution function of the logistic distribution appears in logistic regression and feedforward neural networks. Among other applications, United State Chess Federation and FIDE use it to calculate chess ratings. The following graph shows how the distribution changes as the parameters change: [graph logistic_pdf] [h4 Member Functions] logistic_distribution(RealType u = 0, RealType s = 1); Constructs a logistic distribution with location /u/ and scale /s/. Requires `scale > 0`, otherwise a __domain_error is raised. RealType location()const; Returns the location of this distribution. RealType scale()const; Returns the scale of this distribution. [h4 Non-member Accessors] All the [link math_toolkit.dist_ref.nmp usual non-member accessor functions] that are generic to all distributions are supported: __usual_accessors. The domain of the random variable is \[-\[max_value\], +\[min_value\]\]. However, the pdf and cdf support inputs of +[infin] and -[infin] as special cases if RealType permits. At `p=1` and `p=0`, the quantile function returns the result of +__overflow_error and -__overflow_error, while the complement quantile function returns the result of -__overflow_error and +__overflow_error respectively. [h4 Accuracy] The logistic distribution is implemented in terms of the `std::exp` and the `std::log` functions, so its accuracy is related to the accurate implementations of those functions on a given platform. When calculating the quantile with a non-zero /position/ parameter catastrophic cancellation errors can occur: in such cases, only a low /absolute error/ can be guaranteed. [h4 Implementation] [table [[Function][Implementation Notes]] [[pdf][Using the relation: pdf = e[super -(x-u)/s] / (s*(1+e[super -(x-u)/s])[super 2])]] [[cdf][Using the relation: p = 1/(1+e[super -(x-u)/s])]] [[cdf complement][Using the relation: q = 1/(1+e[super (x-u)/s])]] [[quantile][Using the relation: x = u - s*log(1/p-1)]] [[quantile from the complement][Using the relation: x = u + s*log(p/1-p)]] [[mean][u]] [[mode][The same as the mean.]] [[skewness][0]] [[kurtosis excess][6/5]] [[variance][ ([pi]*s)[super 2] / 3]] ] [endsect] [/section:logistic_dist Logistic Distribution] [/ logistic.qbk Copyright 2006, 2007 John Maddock and Paul A. Bristow. Distributed under 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). ]