An artificial intelligence method for digital government assessment: An application of neural networks analysis of a ranking of digital government of Mexican states

Elio-Atenógenes Villaseñor-García, G. Cid
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引用次数: 1

Abstract

Development of accurate measurement systems to assess digital government advance is a critical topic of digital agenda of academia and governments around the world. There are several quantitative approaches such as rankings and indicators that have contributed to measure the progress of digital government initiatives in the public sector, but more sophisticated computational tools are usually unexploited. This article proposes a computational multi-parametric analysis of multiple metrics of digital government advance using a computational technique, the neural networks, for the analysis of the evolution of digital government ranking of Mexican states during the period 2009-2015. Neural networks analysis has been used in different areas such as scientometric performance profiles, and disciplines like physics, chemistry, management, economics and demography. The neural networks analysis helps to identify clusters of characterizations that represents digital government advance patterns of performance. It also locates various profiles of digital government progress with similar patterns of performance and atypical behaviors (outliers) which are difficult to identify with classical tools. The results of this computational technique are robust showing that artificial intelligence tools are useful instruments to evaluate digital government advance overtime.
数字政府评估的人工智能方法:应用神经网络分析墨西哥各州数字政府排名
开发准确的测量系统来评估数字政府的进展是世界各地学术界和政府数字议程的一个重要主题。有几种定量方法,如排名和指标,有助于衡量公共部门数字政府举措的进展,但更复杂的计算工具通常未被利用。本文采用神经网络计算技术对数字政府进步的多个指标进行了计算多参数分析,以分析2009-2015年墨西哥各州数字政府排名的演变。神经网络分析已被用于不同的领域,如科学计量学的绩效概况,以及物理、化学、管理学、经济学和人口学等学科。神经网络分析有助于识别代表数字政府先进绩效模式的特征集群。它还定位了数字政府进展的各种概况,这些概况具有相似的绩效模式和非典型行为(异常值),难以用经典工具识别。这种计算技术的结果是稳健的,表明人工智能工具是评估数字政府加班的有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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