PSO-based coevolutionary game learning
Abstract (Summary)
Games have been investigated as computationally complex problems since the inception of
artificial intelligence in the 1950’s. Originally, search-based techniques were applied to create
a competent (and sometimes even expert) game player. The search-based techniques, such
as game trees, made use of human-defined knowledge to evaluate the current game state and
recommend the best move to make next. Recent research has shown that neural networks
can be evolved as game state evaluators, thereby removing the human intelligence factor completely.
This study builds on the initial research that made use of evolutionary programming
to evolve neural networks in the game learning domain. Particle Swarm Optimisation (PSO)
is applied inside a coevolutionary training environment to evolve the weights of the neural
network. The training technique is applied to both the zero sum and non-zero sum game domains,
with specific application to Tic-Tac-Toe, Checkers and the Iterated Prisoners Dilemma
(IPD). The influence of the various PSO parameters on playing performance are experimentally
examined, and the overall performance of three different neighbourhood information sharing
structures compared. A new coevolutionary scoring scheme and particle dispersement operator
are defined, inspired by Formula One Grand Prix racing. Finally, the PSO is applied in three
novel ways to evolve strategies for the IPD – the first application of its kind in the PSO field.
The PSO-based coevolutionary learning technique described and examined in this study shows
promise in evolving intelligent evaluators for the aforementioned games, and further study will
be conducted to analyse its scalability to larger search spaces and games of varying complexity.
Bibliographical Information:
Advisor:
School:University of Pretoria/Universiteit van Pretoria
School Location:South Africa
Source Type:Master's Thesis
Keywords:machine learning computer games swarm intelligence evolutionary computation neural networks science cellular automata computational
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