Racial residential segregation is a defining and enduring feature of U.S. society, shaping inter-group relations, racial disparities in income and health, and access to high-quality public goods and services. The design of policies aimed at addressing these inequities would be better informed by descriptive models of segregation that are able to predict neighborhood scale racial sorting dynamics. While coarse regional population projections are widely accessible, small area population changes remain challenging to predict because granular data on migration is limited and mobility behaviors are driven by complex social and idiosyncratic dynamics. Consequently, to account for such drivers, it is necessary to develop methods that can extract effective descriptions of their impacts on population dynamics based solely on statistical analysis of available data. Here, we develop and validate a Density-Functional Fluctuation Theory (DFFT) that quantifies segregation using density-dependent functions extracted from population counts and uses these functions to accurately forecast how the racial/ethnic compositions of neighborhoods across the US are likely to change. Importantly, DFFT makes minimal assumptions about the nature of the underlying causes of segregation and is designed to quantify segregation for neighborhoods with different total populations in regions with different compositions. This quantification can be used to accurately forecast both average changes in neighborhood compositions and the likelihood of more drastic changes such as those associated with gentrification and neighborhood tipping. As such, DFFT provides a powerful framework for researchers and policy makers alike to better quantify and forecast neighborhood-scale segregation and its associated dynamics.
翻译:居民种族隔离是美国社会的一个明确和持久的特征,它塑造了群体间关系、收入和健康方面的种族差异,以及获得高质量公共商品和服务的机会。旨在解决这些不平等的政策设计,将更多地借助能够预测邻居规模种族分类动态的描述性隔离模式。虽然可以广泛获得粗略的区域人口预测,但小地区人口变化仍然具有预测的挑战性,因为关于移徙的粒子数据有限,流动行为是由复杂的社会和特异性动态驱动的。因此,为了说明这些驱动因素,必须制定方法,仅根据现有数据的统计分析,来有效描述这些不平等对人口动态的影响。在这里,我们制定和验证一个密度-功能波动理论(DFFFT),利用从人口计数中提取的依赖密度功能来量化隔离,利用这些功能准确预测美国各地邻居的种族/族裔构成可能发生变化。重要的是,DFFFF对隔离的根源性质作出最起码的假设,并设计为具有不同人口规模的街区平均隔离,而地理结构则更精确地加以量化。