游戏风格:显示你的年龄

S. Tekofsky, P. Spronck, A. Plaat, Jaap van den Herik, J. Broersen
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引用次数: 17

摘要

年龄已经被证明会影响我们的偏好、选择和认知表现。我们希望这种影响能够在玩家的游戏风格中体现出来。玩家模型将受益于年龄,允许开发者为玩家提供越来越个性化的游戏体验。为了调查年龄和游戏风格之间的关系,我们开始确定玩家的年龄差异有多少可以用他的游戏风格来解释。为此,我们使用了来自《战地3》13376名玩家的调查数据(“心理战”)。从60个游戏风格变量开始,我们发现45.7%的年龄差异可以用46个游戏风格变量来解释。此外,当样本沿着游戏平台划分时,年龄差异的百分比也很相似:在PC上,31个游戏风格变量解释了43.1%;30个游戏风格变量解释了Xbox 360上53.9%的游戏类型;28个游戏风格变量解释了Playstation 3上51.7%的游戏类型。由于样本的庞大和异质性,我们的发现具有很高的外部效度。根据Cohen的分类,年龄和游戏风格之间的关系强度被认为是“大”的。先前的研究表明,年龄和游戏风格之间关系的本质可能是基于认知表现、动机和个性的终身发展。总而言之,我们的发现值得推荐在未来的球员模型中加入年龄。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Play style: Showing your age
Age has been shown to influence our preferences, choices, and cognitive performance. We expect this influence to be visible in the play style of an individual. Player models would then benefit from incorporating age, allowing developers to offer an increasingly personalized game experience to the player. To investigate the relationship between age and play style, we set out to determine how much of the variance in a player's age can be explained by his play style. For this purpose, we used the data from a survey (`PsyOps') among 13,376 `Battlefield 3' players. Starting out with 60 play style variables, we found that 45.7% of the variance in age can be explained by 46 play style variables. Furthermore, similar percentages of variance in age are explained when the sample is divided along gaming platform: 31 play style variables explain 43.1% on PC; 30 play style variables explain 53.9% on Xbox 360; 28 play style variables explain 51.7% on Playstation 3. Our findings have a high external validity due to the large and heterogeneous nature of the sample. The strength of the relationship between age and play style is considered `large' according to Cohen's classification. Previous research indicates that the nature of the relationship between age and play style is likely to be based on life-time developments in cognitive performance, motivation, and personality. All in all, our findings merit a recommendation to incorporate age in future player models.
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