@COMMENT This file was generated by bib2html.pl version 0.915
@COMMENT written by Patrick Riley
@COMMENT This file came from Patrick Riley's publication pages at
@COMMENT http://www.cs.cmu.edu/~pfr/publications
@InProceedings{IAAI-IdealModels,
author = "Peter Stone and Patrick Riley and Manuela Veloso",
title = "Defining and Using Ideal Teammate and Opponent
Models",
booktitle = iaai2000,
year = 2000,
pages = {1040--1045},
abstract = {A common challenge for agents in multiagent systems
is trying to predict what other agents are going to
do in the future. Such knowledge can help an agent
determine which of its current action options is
most likely to achieve its goals. There is a long
history in adversarial game playing of using a model
of an opponent which assumes that it always acts
optimally. Our research extends this strategy to
adversarial domains in which the agents have
incomplete information, noisy sensors and actuators,
and a continuous action space. We introduce
``ideal-model-based behavior outcome prediction''
(IMBBOP) which models the results of other agents'
future actions in relation to their optimal actions
based on an ideal world model. Our technique also
includes a method for relaxing this optimality
assumption. IMBBOP was a key component of our
successful CMUNITED-99 simulated
robotic soccer application. In this paper, we define
IMBBOP and illustrate its use within the simulated
robotic soccer domain. We include empirical results
demonstrating the effectiveness of IMBBOP.},
wwwnote = {AAAI Homepage},
bib2html_pubtype = {Refereed Conference},
bib2html_rescat = {Opponent and Teammate Modeling},
bib2html_funding = {CoABS,ActiveTemplates},
}