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Bolstering Stealth Assessment in Serious Games

机译:加强严肃游戏中的隐身评估

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Stealth assessment is an unobtrusive assessment methodology in serious games that use digital player traces to make inferences of players' expertise level over competencies. Although various proofs of stealth assessment's validity have been reported, its application is a complex, laborious, and time-consuming process. To bolster the applicability of stealth assessment in serious games; a generic stealth assessment tool (GSAT) has been proposed, which uses machine learning techniques to reason over competence constructs, player log data and assess player performance. Current study provides empirical validation of GSAT by applying it to a real-world game, the abcdeSIM game, which was designed to train medical care workers to act effectively medical emergency situations. GSAT demonstrated, while relying on a Gaussian Naive Bayes Network, to be highly robust and reliable, achieving a three-level assessment accuracy of 96%, as compared with a reference score model defined by experts. By this result, this study contributes to the alleviation of stealth assessment's applicability issues and hence promotes its wider uptake by the serious game community.
机译:在严肃的游戏中,隐身评估是一种不引人注目的评估方法,它使用数字玩家轨迹来推断玩家的专业技能水平胜过能力。尽管已报告了各种隐身评估有效性的证据,但其应用是一个复杂,费力且耗时的过程。加强秘密评估在严肃比赛中的适用性;已经提出了一种通用的隐形评估工具(GSAT),该工具使用机器学习技术来推理能力结构,玩家日志数据并评估玩家表现。当前的研究通过将GSAT应用于实际游戏abcdeSIM游戏来提供GSAT的经验验证,该游戏旨在训练医护人员有效地应对紧急医疗情况。与专家定义的参考评分模型相比,GSAT展示了其在高斯朴素贝叶斯网络的基础上的高度鲁棒性和可靠性,达到了96%的三级评估准确性。通过这一结果,本研究有助于减轻隐身评估的适用性问题,从而促进严肃的游戏社区更广泛地采用隐身评估。

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