代码搜索:bayesian
找到约 1,632 项符合「bayesian」的源代码
代码结果 1,632
www.eeworm.com/read/318947/13465967
m bay_modoutclass.m
function [Pplus, Pmin, bay,model] = bay_modoutClass(model,X,priorpos,type,nb,bay)
% Estimate the posterior class probabilities of a binary classifier using Bayesian inference
%
% >> [Ppos, Pneg] = bay
www.eeworm.com/read/316944/13514000
m bay_modoutclass.m
function [Pplus, Pmin, bay,model] = bay_modoutClass(model,X,priorpos,type,nb,bay)
% Estimate the posterior class probabilities of a binary classifier using Bayesian inference
%
% >> [Ppos, Pneg] = bay
www.eeworm.com/read/302157/13840872
cpp kalmanslam.cpp
/*
* Bayes++ the Bayesian Filtering Library
* Copyright (c) 2004 Michael Stevens
* See accompanying Bayes++.htm for terms and conditions of use.
*
* $Header: /cvsroot/bayesclasses/Bayes++/SLAM/ka
www.eeworm.com/read/302157/13840873
cpp fastslam.cpp
/*
* Bayes++ the Bayesian Filtering Library
* Copyright (c) 2004 Michael Stevens
* See accompanying Bayes++.htm for terms and conditions of use.
*
* $Header: /cvsroot/bayesclasses/Bayes++/SLAM/fa
www.eeworm.com/read/302157/13840874
cpp testfastslam.cpp
/*
* Bayes++ the Bayesian Filtering Library
* Copyright (c) 2004 Michael Stevens
* See accompanying Bayes++.htm for terms and conditions of use.
*
* $Header: /cvsroot/bayesclasses/Bayes++/SLAM/te
www.eeworm.com/read/302157/13840877
hpp slam.hpp
77/*
* Bayes++ the Bayesian Filtering Library
* Copyright (c) 2004 Michael Stevens
* See accompanying Bayes++.htm for terms and conditions of use.
*
* $Header: /cvsroot/bayesclasses/Bayes++/SLAM/
www.eeworm.com/read/302157/13840915
cpp covflt.cpp
/*
* Bayes++ the Bayesian Filtering Library
* See Bayes++.htm for copyright license details
* Copyright (c) 2002 Michael Stevens
* See accompanying Bayes++.htm for terms and conditions of use.
*
www.eeworm.com/read/302157/13840937
v2 jamfile.v2
# Bayes++ Jamfile - See Boost.build v2
# BayesFilter - The Bayesian filtering library
# Propagated usage requirements
project BayesFilter
: usage-requirements ".." # Library headers ar
www.eeworm.com/read/492929/6414209
m ar_g.m
function results = ar_g(y,nlag,ndraw,nomit,prior,start)
% PURPOSE: MCMC estimates Bayesian heteroscedastic AR(k) model
% imposing stability restrictions using Gibbs sampling
% y
www.eeworm.com/read/485544/6552639
m demhmc3.m
%DEMHMC3 Demonstrate Bayesian regression with Hybrid Monte Carlo sampling.
%
% Description
% The problem consists of one input variable X and one target variable
% T with data generated by sampling X