Reza Hadi Mogavi, Chao Deng, J. Hoffman, E. Haq, Sujit Gujar, A. Bucchiarone, Pan Hui
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引用次数: 2
摘要
近年来,游戏化研究界广泛且频繁地质疑一刀切的游戏化方案的有效性。因此,个性化似乎是任何成功的游戏化设计的重要组成部分。个性化可以通过理解用户行为和Hexad玩家/用户类型而得到改善。这篇论文有一个原创的研究理念:它调查了用户的游戏相关数据(通过各种玩家原型调查收集)是否可以用于预测他们在非游戏(但游戏化)环境中的行为特征和Hexad用户类型。游戏化和游戏概念之间存在的亲和力为我们提供了进行这项探索性研究的动力。我们对67个Stack Exchange用户进行了初步调查研究(作为案例研究)。我们发现,在非游戏(但游戏化)环境中,用户的玩法信息可以揭示有关其行为特征和Hexad用户类型的有价值且有用的信息。测试三种玩家原型(即Bartle, Big Five和BrainHex)的结果表明,它们都可以帮助预测用户最主要的Stack Exchange行为特征和Hexad用户类型,而不是随机标记者的基线。也就是说,在本文分析的所有玩家原型中,BrainHex表现最好。最后,提出了今后工作的研究方向。
Your Favorite Gameplay Speaks Volumes about You: Predicting User Behavior and Hexad Type
In recent years, the gamification research community has widely and frequently questioned the effectiveness of one-size-fits-all gamification schemes. In consequence, personalization seems to be an important part of any successful gamification design. Personalization can be improved by understanding user behavior and Hexad player/user type. This paper comes with an original research idea: It investigates whether users' game-related data (collected via various gamer-archetype surveys) can be used to predict their behavioral characteristics and Hexad user types in non-game (but gamified) contexts. The affinity that exists between the concepts of gamification and gaming provided us with the impetus for running this exploratory research. We conducted an initial survey study with 67 Stack Exchange users (as a case study). We discovered that users' gameplay information could reveal valuable and helpful information about their behavioral characteristics and Hexad user types in a non-gaming (but gamified) environment. The results of testing three gamer archetypes (i.e., Bartle, Big Five, and BrainHex) show that they can all help predict users' most dominant Stack Exchange behavioral characteristics and Hexad user type better than a random labeler's baseline. That said, of all the gamer archetypes analyzed in this paper, BrainHex performs the best. In the end, we introduce a research agenda for future work.