用大数据方法评估美国高等教育服务

R. Qiu, Zuqing Huang, Iswar C. Patel
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引用次数: 4

摘要

有许多排名系统为地区、国家或国际高等教育提供评估服务。请注意,目前排名系统中通常使用的主观评价指数和指标包含和权重。因此,就产生了所提供排名的客观性和公正性问题。我们的一项研究解决了这些问题,采用定量和模型驱动的方法来获取评价指标和因素权重,并在《美国新闻与世界报道》排名系统中成功验证了这一方法[1]。为了扩展我们之前的研究,本文在大数据技术的支持下,通过开发一个实时、可扩展、模型驱动的高等教育排名系统,进一步展示了一个非常有趣的结果。这项扩展研究揭示了在增强服务行业各种应用方面的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A big data approach to assessing the US higher education service
There are a number of ranking systems to provide assessment services on higher education regionally, nationally, or internationally. Note that the subjective evaluation index and indicator inclusions and weights that are usually applied in current ranking systems. As a result, the question of the objectivity and impartiality of the provided rankings arises. One of our studies addressed these concerns by applying a quantitative and model-driven approach to acquiring the evaluation index and factor weights, which was successfully validated in the US News & World Report ranking system [1]. To extend our earlier study, this paper further shows a very interesting result by developing a real-time, scalable, and model-driven higher education ranking system with the support of big data technologies. This extended study reveals promising potential in enhancing varieties of applications across the service industry.
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