2 research outputs found
RaidEnv: Exploring New Challenges in Automated Content Balancing for Boss Raid Games
The balance of game content significantly impacts the gaming experience.
Unbalanced game content diminishes engagement or increases frustration because
of repetitive failure. Although game designers intend to adjust the difficulty
of game content, this is a repetitive, labor-intensive, and challenging
process, especially for commercial-level games with extensive content. To
address this issue, the game research community has explored automated game
balancing using artificial intelligence (AI) techniques. However, previous
studies have focused on limited game content and did not consider the
importance of the generalization ability of playtesting agents when
encountering content changes. In this study, we propose RaidEnv, a new game
simulator that includes diverse and customizable content for the boss raid
scenario in MMORPG games. Additionally, we design two benchmarks for the boss
raid scenario that can aid in the practical application of game AI. These
benchmarks address two open problems in automatic content balancing, and we
introduce two evaluation metrics to provide guidance for AI in automatic
content balancing. This novel game research platform expands the frontiers of
automatic game balancing problems and offers a framework within a realistic
game production pipeline.Comment: 14 pages, 6 figures, 6 tables, 2 algorithm