APLGSep 15, 2023

Multidimensional well-being of US households at a fine spatial scale using fused household surveys: fusionACS

arXiv:2309.11512v1h-index: 12Has Code
Originality Synthesis-oriented
AI Analysis

This addresses the limitation of unconnected survey samples for social science research, allowing broader research questions, though it is incremental in data integration.

The fusionACS project integrated multiple U.S. household surveys by statistically fusing variables onto American Community Survey microdata, enabling analysis of household well-being dimensions that were previously inaccessible.

Social science often relies on surveys of households and individuals. Dozens of such surveys are regularly administered by the U.S. government. However, they field independent, unconnected samples with specialized questions, limiting research questions to those that can be answered by a single survey. The fusionACS project seeks to integrate data from multiple U.S. household surveys by statistically "fusing" variables from "donor" surveys onto American Community Survey (ACS) microdata. This results in an integrated microdataset of household attributes and well-being dimensions that can be analyzed to address research questions in ways that are not currently possible. The presented data comprise the fusion onto the ACS of select donor variables from the Residential Energy Consumption Survey (RECS) of 2015, the National Household Transportation Survey (NHTS) of 2017, the American Housing Survey (AHS) of 2019, and the Consumer Expenditure Survey - Interview (CEI) for the years 2015-2019. The underlying statistical techniques are included in an open-source $R$ package, fusionModel, that provides generic tools for the creation, analysis, and validation of fused microdata.

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