Discussion paper

DP19115 Inference for Regression with Variables Generated from Unstructured Data

The leading strategy for analyzing unstructured data uses two steps. First, latent variables of economic interest are estimated with an upstream information retrieval model. Second, the estimates are treated as ``data'' in a downstream econometric model. We establish theoretical arguments for why this two-step strategy leads to biased inference in empirically plausible settings. More constructively, we propose a one-step strategy for valid inference that uses the upstream and downstream models jointly. The one-step strategy (i) substantially reduces bias in simulations; (ii) has quantitatively important effects in a leading application using CEO time-use data; and (iii) can be readily adapted by applied researchers.

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Citation

Battaglia, L, T Christensen, S Hansen and S Sacher (2024), ‘DP19115 Inference for Regression with Variables Generated from Unstructured Data‘, CEPR Discussion Paper No. 19115. CEPR Press, Paris & London. https://cepr.org/publications/dp19115