Measuring Diversity of Game Scenarios
- URL: http://arxiv.org/abs/2404.15192v2
- Date: Wed, 09 Oct 2024 05:58:58 GMT
- Title: Measuring Diversity of Game Scenarios
- Authors: Yuchen Li, Ziqi Wang, Qingquan Zhang, Bo Yuan, Xin Wang, Jialin Liu,
- Abstract summary: We aim to bridge the current gaps in literature and practice, offering insights into effective strategies for measuring and integrating diversity in game scenarios.
This survey not only charts a path for future research in diverse game scenarios but also serves as a handbook for industry practitioners seeking to leverage diversity as a key component of game design and development.
- Score: 15.100151112002235
- License:
- Abstract: This survey comprehensively reviews the multi-dimensionality of game scenario diversity, spotlighting the innovative use of procedural content generation and other fields as cornerstones for enriching player experiences through diverse game scenarios. By traversing a wide array of disciplines, from affective modeling and multi-agent systems to psychological studies, our research underscores the importance of diverse game scenarios in gameplay and education. Through a taxonomy of diversity metrics and evaluation methods, we aim to bridge the current gaps in literature and practice, offering insights into effective strategies for measuring and integrating diversity in game scenarios. Our analysis highlights the necessity for a unified taxonomy to aid developers and researchers in crafting more engaging and varied game worlds. This survey not only charts a path for future research in diverse game scenarios but also serves as a handbook for industry practitioners seeking to leverage diversity as a key component of game design and development.
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