人口普查
原始数据
地理
块(置换群论)
净迁移率
资源(消歧)
国内移民
变化(天文学)
基线(sea)
人口
计算机科学
数据科学
空间变异性
公共卫生
公共用途
空间生态学
数据收集
数据聚合器
人类迁徙
人口统计
空间分析
区域科学
数据迁移
美国社区调查
作者
Gabriel Agostini,Rachel M. Young,Maria Fitzpatrick,Nikhil Garg,Emma Pierson
标识
DOI:10.1038/s41467-025-68019-2
摘要
Abstract Fine-grained migration data illuminate demographic, environmental, and health phenomena. However, United States migration data have serious drawbacks: public data lack spatial granularity, and higher-resolution proprietary data suffer from multiple biases. To address this, we develop a method that fuses high-resolution proprietary data with coarse Census data to create MIGRATE: annual migration matrices capturing flows between 47.4 billion US Census Block Group pairs—approximately four thousand times the spatial resolution of current public data. Our estimates are highly correlated with external ground-truth datasets and improve accuracy relative to raw proprietary data. We use MIGRATE to analyze national and local migration patterns. Nationally, we document demographic and temporal variation in homophily, upward mobility, and moving distance—for example, rising moves into top-income-quartile block groups and racial disparities in upward mobility. Locally, MIGRATE reveals patterns such as wildfire-driven out-migration that are invisible in coarser previous data. We release MIGRATE as a resource for migration researchers.
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