methods and fitness-based evolution • Compare them in ten scenarios for diverse types of hands and opponents • Analyze effects on diversity, performance and behaviors 6
search alone does not work well for Texas Hold'em Poker • The model with novelty search and fitness was significantly better than the one without fitness 18
and performance • Novelty search alone was not enough to improve neither diversity nor performance • Diversity was useful mainly to increase the exploitation of chips per hand 22
work developed by Alberta's group and this research ◦ evolve a diverse group of capable agents ◦ agents evolve their strategies from scratch ◦ agents work as teams of programs ◦ it is not possible to use simulations ◦ use poker as a domain, not as the goal 29
tasks • Why not tournament? To focus on diversity • Normalized between 0.0 and 10.0 ◦ Better for SBB due to previous work results 32 Possible Questions
losing chips due to weaker hands ◦ they also increase their bluffing, to exploit the opponent's weaker hands • The teams are using their opponent modeling inputs to find when the opponent seems to have weaker hands, and then bluff 33