A Pattern Mining Approach to Study Strategy Balance in RTS Games

作者:Bosc Guillaume; Tan Philip; Boulicaut Jean Francois; Raissi Chedy; Kaytoue Mehdi*
来源:IEEE Transactions on Computational Intelligence and AI in Games, 2017, 9(2): 123-132.
DOI:10.1109/TCIAIG.2015.2511819

摘要

Whereas purest strategic games such as Go and Chess seem timeless, the lifetime of a video game is short, influenced by popular culture, trends, boredom, and technological innovations. Even the important budget and developments allocated by editors cannot guarantee a timeless success. Instead, novelties and corrections are proposed to extend an inevitably bounded lifetime. Novelties can unexpectedly break the balance of a game, as players can discover unbalanced strategies that developers did not take into account. In the new context of electronic sports, an important challenge is to be able to detect game balance issues. In this paper, we consider real-time strategy (RTS) games and present an efficient pattern mining algorithm as a basic tool for game balance designers that enables one to search for unbalanced strategies in historical data through a knowledge discovery in databases (KDD) process. We experiment with our algorithm on StarCraft II historical data, played professionally as an electronic sport.

  • 出版日期2017-6
  • 单位INRIA; MIT