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README_ORIGINAL
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README_ORIGINAL
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MultiAgentDecisionProcess (MADP) is a toolbox for scientific research
in decision-theoretic planning and learning in multiagent systems. It
is designed to be rather general, but most effort has been put in
planning algorithms for discrete Dec-POMDPs.
Comments, bug reports, patches, etc, are welcome. A mailinglist is
available at madp-users@isr.ist.utl.pt .
Authors:
Frans Oliehoek <f.a.oliehoek@uva.nl>
Intelligent Systems Lab Amsterdam, University of Amsterdam,
Amsterdam, The Netherlands
Matthijs Spaan <mtjspaan@isr.ist.utl.pt>
Institute for Systems and Robotics, Instituto Superior Tecnico,
Lisbon, Portugal
========================================================================
Required software (as Debian package names)
libtool (libtool)
GCC 3.4 or newer (g++)
Optional software:
Doxygen (doxygen, graphviz) [for generating documentation]
The software also uses part of the Boost C++ libraries, but due to
potential compatibility issues we ship the relevant parts in
src/boost. The software is being developed on Debian GNU/Linux Lenny,
using the i386 and amd64 flavors, but should work on any recent Linux
distribution. Other operating systems have not been tested.
========================================================================
Installation
Execute the following
./configure
make
make install [optional]
========================================================================
Documentation
See doc/MADPToolbox.pdf.
To (re)generate documentation from source
make htmldoc
Open doc/html/index.html in a webbrowser
========================================================================
Getting started
As a simple example, we can solve the DecTiger problem optimally for
horizon 3 as follows:
src/examples/GMAA DT -h 3 -q
or
src/examples/GMAA problems/dectiger.dpomdp -h 3 -q
you should get output like:
value=5.19081
The first command uses the built-in DecTiger class (ProblemDecTiger),
the second parses the dectiger.dpomdp file. Check src/examples for
more example programs, and problems/README as well as
http://www.isr.ist.utl.pt/~mtjspaan/decpomdp for more problem
definitions.
========================================================================
Acknowledgments
The work reported here is part of the Interactive Collaborative
Information Systems (ICIS) project, supported by the Dutch Ministry of
Economic Affairs, grant nr: BSIK03024. This work was partially
supported by Fundacao para a Ciencia e a Tecnologia (ISR/IST
pluriannual funding) through the POS_Conhecimento Program that
includes FEDER funds and through grant PTDC/EEA-ACR/73266/2006.
Release 0.2
$Id: README 3642 2009-09-02 13:27:20Z mtjspaan $