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Quantifying Usability Prioritization Using K-Means Clustering Algorithm on Hybrid Metric Features for MAR Learning

机译:使用K-Means聚类算法对MAR学习的混合度量特征来量化可用性优先级

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This paper presents and discusses an empirical work of using machine learning K-means clustering algorithm in analyzing and processing Mobile Augmented Reality (MAR) learning usability data. This paper first discusses the issues within usability and machine learning spectrum, then explain in detail a proposed methodology approaching the experiments conducted in this research. This contributes in providing empirical evidence on the feasibility of K-means algorithm through the discreet display of preliminary outcomes and performance results. This paper also proposes a new usability prioritization technique that can be quantified objectively through the calculation of negative differences between cluster centroids. Towards the end, this paper will discourse important research insights, impartial discussions and future works.
机译:本文提出并讨论了使用机器学习K-MERIAL聚类算法的实证工作分析和处理移动增强现实(MAR)学习可用性数据。本文首先讨论了可用性和机器学习频谱中的问题,然后详细说明了一种接近本研究中进行的实验的提出方法。这有助于通过谨慎的初步结果和性能结果来提供关于K-Means算法的可行性的经验证据。本文还提出了一种新的可用性优先级化技术,可以通过计算集群质心之间的负差异来客观地量化。到底,本文将讨论重要的研究见解,公正的讨论和未来作品。

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