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[167]1/*!
2\mainpage Bayesian Decision-Making toolbox for C++
3
4\version 0.1
5
6\author Vaclav Smidl
7
8BDM is a collection of methods for selected tasks of Bayesian decision-making, such as estimation, filtering and control.
[984]9It is implemneted in C++ with available interfaces to matlab (called bdmtoolbox) and Python (preliminary).
[167]10
[302]11\section fea Features
12At present the following algorithms are implemented:
[984]13 - \b Bayesian \b filtering : Kalman filter, EKF, patricle filter (PF),
[302]14    - these can be combined mutualy together in mode demanding schemes, see marginalized particle filter MPF
15
[984]16 - \b Classification using mixtures of exponential famiuly models (MixEF),
17 - \b Density \b estimation : using mixtures (MixEF), density composition (merger)
18 - \b LQG \b control : so far only for ARX and Kalman filters
[302]19
20\section down Download and Use
21The library is available under GPL, see installation instructions on page \ref install
22
[984]23It is split into library and applications. One of the applications is toolbox for matlab, which can be downloaded in binary form for win32, see \ref install.
[302]24
[984]25\section app Publications
[167]26
[984]27Publications that were made with the toolbox are:
28 - \b Software papers:
29 - \b Distributed \b identification :
30 - \b Baysian \b filtering :
31 
32The status of replicability of the published experiments is available in \ref published.
[167]33
[302]34\section impl Implementation
[167]35
[984]36 BDM is build on top of \c IT++ which wraps numerically efficient operations of linear algebra into easy to use C++ classes with Matlab-like syntax.
37 */
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