APPLYING MACHINE LEARNING IN THE U.S. POLITICAL LANDSCAPE: FORECASTING, POLLING, AND THE DOMESTIC SUPPLY CHAIN

Syed Adeel Ahmed, Andrew Mark Costanzo
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Abstract

There are areas of the current U.S. political system that are fit for the implementation of machine learning capabilities. Some of these areas include election forecasting, polling, and vote-by-mail services. The introduction of machine learning tools to the components of the U.S. political system can result in increases in efficiency and accessibility throughout the sector. By doing so, there would be an assumed decrease in necessary labor. This research analyzed the specified areas of U.S. politics by establishing a four-step framework based on a previous exploratory case study into the application of machine learning to operations management and adjusted said framework to fit the needs of the nature of U.S. politics. This framework was utilized to determine the objectives to which machine learning would be applied within this sector. As well, it serves to guide the technology or strategies necessary to achieve those objectives, illustrate the effect on performance and on stakeholders. This analysis introduces valuable insights for any decision makers as well as providing an accessible and informative review of some of the potential applications of machine learning in the existing U.S. political system.
将机器学习应用于美国政治格局:预测、民调和国内供应链
美国当前的政治体制中有一些领域适合实施机器学习功能。其中一些领域包括选举预测、民意调查和邮寄选票服务。将机器学习工具引入美国政治系统的各个组成部分,可以提高整个部门的效率和可及性。这样一来,假定必要的劳动力就会减少。本研究分析了美国政治的特定领域,在之前将机器学习应用于运营管理的探索性案例研究的基础上建立了一个四步框架,并对上述框架进行了调整,以适应美国政治性质的需要。该框架用于确定机器学习在该领域的应用目标。此外,它还可用于指导实现这些目标所需的技术或战略,说明对绩效和利益相关者的影响。该分析为任何决策者提供了宝贵的见解,并对机器学习在美国现有政治体系中的一些潜在应用进行了深入浅出的评述。
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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