Accounting for Unobservable Heterogeneity in Cross Section Using Spatial First Differences

44 Pages Posted: 22 Oct 2018 Last revised: 18 Apr 2026

See all articles by Hannah Druckenmiller

Hannah Druckenmiller

University of California, Berkeley

Solomon Hsiang

University of California, Berkeley; National Bureau of Economic Research

Date Written: October 2018

Abstract

We develop a simple cross-sectional research design to identify causal effects that is robust to unobservable heterogeneity. When many observational units are dense in physical space, it may be sufficient to regress the “spatial first differences” (SFD) of the outcome on the treatment and omit all covariates. This approach is conceptually similar to first differencing approaches in time-series or panel models, except the index for time is replaced with an index for locations in space. The SFD design identifies plausibly causal effects, even when no instruments are available, so long as local changes in the treatment and unobservable confounders are not systematically correlated between immediately adjacent neighbors. We demonstrate the SFD approach by recovering new cross-sectional estimates for the effects of time-invariant geographic factors, soil and climate, on long-run average crop productivities across US counties — relationships that are notoriously confounded by unobservables but crucial for guiding economic decisions, such as land management and climate policy.

Suggested Citation

Druckenmiller, Hannah and Hsiang, Solomon, Accounting for Unobservable Heterogeneity in Cross Section Using Spatial First Differences (October 2018). NBER Working Paper No. w25177, Available at SSRN: https://ssrn.com/abstract=3270757

Hannah Druckenmiller (Contact Author)

University of California, Berkeley

Solomon Hsiang

University of California, Berkeley ( email )

2607 Hearst Avenue
Berkeley, CA 94720-7320
United States

HOME PAGE: http://gspp.berkeley.edu/directories/faculty/solomon-hsiang

National Bureau of Economic Research ( email )

1050 Massachusetts Avenue
Cambridge, MA 02138
United States

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