建设数据驱动型治理的能力:为民主创造新的基础

IF 1.5 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS Statistics and Public Policy Pub Date : 2017-01-01 DOI:10.1080/2330443X.2017.1374897
S. Keller, V. Lancaster, S. Shipp
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引用次数: 11

摘要

摘要地方层面的现有数据流、公共和行政记录、地理空间数据、社交媒体和调查在我们的日常生活中无处不在。社区学习数据驱动发现(CLD3)过程解放、整合这些数据,并将其提供给政府领导人和研究人员,以讲述他们社区的故事。这些叙述可用于在社区内部和社区之间建立公平和可持续的社会转型,以满足他们最紧迫的需求。CLD3通过美国公立大学和土地拨款大学与联邦、州和地方政府合作维护的现有基础设施,可扩展到美国的每个城市和县。CLD3流程从要求地方领导人确定他们无法回答的问题以及可能提供见解的潜在数据来源开始。利用统计和地理空间学习以及社区的集体知识,对数据源进行了分析、清理、转换、链接,并将其转化为叙述。这些见解用于为政策决策提供信息,并根据科学原则制定、部署和评估干预策略。CLD3是一个连续的、可持续的、可控的反馈回路。
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Building Capacity for Data-Driven Governance: Creating a New Foundation for Democracy
ABSTRACT Existing data flows at the local level, public and administrative records, geospatial data, social media, and surveys are ubiquitous in our everyday life. The Community Learning Data-Driven Discovery (CLD3) process liberates, integrates, and makes these data available to government leaders and researchers to tell their community's story. These narratives can be used to build an equitable and sustainable social transformation within and across communities to address their most pressing needs. CLD3 is scalable to every city and county across the United States through an existing infrastructure maintained by collaboration between U.S. Public and Land Grant Universities and federal, state, and local governments. The CLD3 process starts with asking local leaders to identify questions they cannot answer and the potential data sources that may provide insights. The data sources are profiled, cleaned, transformed, linked, and translated into a narrative using statistical and geospatial learning along with the communities' collective knowledge. These insights are used to inform policy decisions and to develop, deploy, and evaluate intervention strategies based on scientifically based principles. CLD3 is a continuous, sustainable, and controlled feedback loop.
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来源期刊
Statistics and Public Policy
Statistics and Public Policy SOCIAL SCIENCES, MATHEMATICAL METHODS-
CiteScore
3.20
自引率
6.20%
发文量
13
审稿时长
32 weeks
期刊最新文献
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