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Laws Of Population Growth

机译:人口增长规律

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An important issue in the study of cities is defining a metropolitan area, because different definitions affect conclusions regarding the statistical distribution of urban activity. A commonly employed method of defining a metropolitan area is the Metropolitan Statistical Areas (MSAs), based on rules attempting to capture the notion of city as a functional economic region, and it is performed by using experience. The construction of MSAs is a time-consuming process and is typically done only for a subset (a few hundreds) of the most highly populated cities. Here, we introduce a method to designate metropolitan areas, denoted "City Clustering Algorithm" (CCA). The CCA is based on spatial distributions of the population at a fine geographic scale, defining a city beyond the scope of its administrative boundaries. We use the CCA to examine Gibrat's law of proportional growth, which postulates that the mean and standard deviation of the growth rate of cities are constant, independent of city size. We find that the mean growth rate of a cluster by utilizing the CCA exhibits deviations from Gibrat's law, and that the standard deviation decreases as a power law with respect to the city size. The CCA allows for the study of the underlying process leading to these deviations, which are shown to arise from the existence of long-range spatial correlations in population growth. These results have sociopolitical implications, for example, for the location of new economic development in cities of varied size.
机译:在城市研究中的一个重要问题是定义大都市区,因为不同的定义会影响有关城市活动统计分布的结论。定义大都市区的一种常用方法是大都市统计区(MSA),它基于试图捕捉将城市作为功能性经济区的概念的规则,并且是通过经验来执行的。 MSA的建设是一个耗时的过程,通常仅对人口稠密的城市中的一部分(数百个)进行。在这里,我们介绍一种指定大城市区域的方法,称为“城市聚类算法”(CCA)。 CCA基于人口在精细地理范围内的空间分布,从而定义了超出其行政边界范围的城市。我们使用CCA检验吉布拉特的比例增长定律,该定律假定城市增长率的均值和标准偏差是恒定的,与城市规模无关。我们发现,利用CCA的集群平均增长率呈现出与吉布拉特定律的偏差,并且标准差随着幂定律相对于城市规模的减小而减小。 CCA允许研究导致这些偏差的潜在过程,这些过程被证明是由于人口增长中存在长期的空间相关性而引起的。这些结果对不同规模的城市中新经济发展的定位具有社会政治意义。

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