Inference for Regression with Variables Generated by AI or Machine Learning
Laura Battaglia,
Tim Christensen,
Stephen Hansen and
Szymon Sacher
No 19115, CEPR Discussion Papers from Centre for Economic Policy Research
Abstract:
It has become common practice for researchers to use AI-powered information retrieval algorithms or other machine learning methods to estimate variables of economic interest, then use these estimates as covariates in a regression model. We show both theoretically and empirically that naively treating AI- and ML-generated variables as “data†leads to biased estimates and invalid inference. We propose two methods to correct bias and perform valid inference: (i) an explicit bias correction with bias-corrected confidence intervals, and (ii) joint maximum likelihood estimation of the regression model and the variables of interest. Through several applications, we demonstrate that the common approach generates substantial bias, while both corrections perform well.
Keywords: Measurement error; Artificial intelligence; Large Language Models; Topic models; Joint inference (search for similar items in EconPapers)
JEL-codes: C11 C51 C55 (search for similar items in EconPapers)
Date: 2024-05
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Working Paper: Inference for Regression with Variables Generated by AI or Machine Learning (2025) 
Working Paper: Inference for Regression with Variables Generated by AI or Machine Learning (2025) 
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