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引用次数: 0
摘要
根据与区域内其他地方的网络联系对地方进行分类,不仅揭示了人口集中,还揭示了其他类型学所遗漏的经济动态。美国管理和预算办公室(Office of Management and Budget)将县分为大都市/小城市和中心/边远地区,这被广泛认为不足以用于许多分析目的。在本文中,我们使用网络分析的密集度指数来确定一个县的劳动力市场中心性。我们使用县与县之间的通勤流,包括内部通勤,来确定区域层次。按这种类型分解的指标在许多情况下揭示了违反直觉的结果。并不是所有强大的核心县都有大量人口或高水平的城市化。在经济衰退后(2008-2015年),这些强劲的核心县的就业增长速度快于其他类型的县。这一经济维度被其他类型所忽略,这表明我们的分类可能对区域分析和政策有用。
Characterizing the Regional Structure in the United States: A County-based Analysis of Labor Market Centrality
Categorizing places based on their network connections to other places in the region reveals not only population concentration but also economic dynamics that are missed in other typologies. The US Office of Management and Budget categorization of counties into metropolitan/micropolitan and central/outlying is widely seen as insufficient for many analytic purposes. In this article, we use a coreness index from network analysis to identify labor market centrality of a county. We use county-to-county commute flows, including internal commuting, to identify regional hierarchies. Indicators broken down by this typology reveal counterintuitive results in many cases. Not all strong core counties have large populations or high levels of urbanization. Employment in these strong core counties grew faster in the postrecession (2008–2015) than in other types of counties. This economic dimension is missed by other typologies, suggesting that our categorization may be useful for regional analysis and policy.
期刊介绍:
International Regional Science Review serves as an international forum for economists, geographers, planners, and other social scientists to share important research findings and methodological breakthroughs. The journal serves as a catalyst for improving spatial and regional analysis within the social sciences and stimulating communication among the disciplines. IRSR deliberately helps define regional science by publishing key interdisciplinary survey articles that summarize and evaluate previous research and identify fruitful research directions. Focusing on issues of theory, method, and public policy where the spatial or regional dimension is central, IRSR strives to promote useful scholarly research that is securely tied to the real world.