利用偶然性和骨干性构建R立法网络

Z. Neal
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引用次数: 1

摘要

摘要政治网络数据的收集和清理往往具有挑战性。本文演示了如何将R的附带包和主干包一起用于在美国国会立法者之间构建网络。这些网络可以定制为专注于特定的议院(参议院或众议院)、会议(2003年至今)、立法类型(法案和决议)和政策领域(32个主题)。提供了四个具有可复制代码的详细示例,以说明使用这些工具可以获得的网络类型和见解类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Constructing legislative networks in R using incidentally and backbone
Abstract Political network data can often be challenging to collect and clean for analysis. This article demonstrates how the incidentally and backbone packages for R can be used together to construct networks among legislators in the US Congress. These networks can be customized to focus on a specific chamber (Senate or House of Representatives), session (2003 to present), legislation type (bills and resolutions), and policy area (32 topics). Four detailed examples with replicable code are presented to illustrate the types of networks and types of insights that can be obtained using these tools.
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