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Usability Prioritization Using Performance Metrics and Hierarchical Agglomerative Clustering in MAR-Learning Application

机译:使用性能度量和分层凝聚聚类在MAR学习应用中的可用性优先级

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This paper highlights the current literatures in usability studies, performance metrics and machine learning algorithm. A literature review is done in these three areas of studies to find a research gap that can be explored further. The paper will then propose a research methodology to attend to the issues of machine learning and usability. An experiment is proposed to compare the efficiency results in between data consistency, correlation between performance metrics and self-reported metrics of a Mobile Augmented Reality learning application. The methodology proposes hierarchical agglomerative clustering technique as a solution in differentiating usability issues according to priority in order to help with usability re-engineering decisions. This paper proposes two objectives through the proposed framework and present evidence on how to achieve them. Lastly, this paper will discuss the results, conclusion and future works of the proposed study.
机译:本文突出了可用性研究的当前文献,性能指标和机器学习算法。在这三个研究领域进行了文献综述,以找到可以进一步探索的研究差距。然后,本文提出了一种研究方法,以参加机器学习和可用性问题。提出了一个实验来比较数据一致性之间的效率,性能度量和自我报告的移动增强现实学习应用程序之间的相关性之间的相关性。该方法提出了分层凝聚聚类技术作为根据优先级区分可用性问题的解决方案,以帮助可用性重新工程决策。本文通过拟议的框架提出了两个目标,并提出了关于如何实现其的证据。最后,本文将讨论拟议研究的结果,结论和未来作品。

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