Author
Abstract
Topic models are often used as dimension-reduction tools before regression, with estimated document-level topic shares treated as observed covariates. This plug-in workflow creates two inferential difficulties: valid inference requires a regular first-stage-to-second-stage expansion that propagates topic-estimation uncertainty, and, at fixed document length, a document's topic mixture cannot be consistently recovered from its own words even when the population topic matrix is known. Corrected spectral moment methods for latent Dirichlet allocation (LDA) offer a starting point: when the total Dirichlet concentration is known, low-order word moments can be corrected to yield operators diagonal in the latent topic basis. We extend this to downstream regression. Under a finite LDA model with response residuals orthogonal to the low-order token moments used for identification, response-weighted word moments admit the same correction, and the resulting supervised operator identifies the regression coefficient $\beta$ directly, without estimating document-level topic shares. The main obstacle is that the correction depends on the unknown total concentration $\alpha_0$. We show that, for $k\ge3$ topics and under a generic finite-probe condition, $\alpha_0$ is identified by commutativity: at the true value a family of corrected word-moment operators commute, whereas away from it they generically do not. This yields a feasible estimator and lets uncertainty in $\hat\alpha_0$ propagate into inference for $\beta$. The estimator is asymptotically linear as the number of documents grows with fixed document length, with sandwich standard errors from document-level moment contributions. Simulations show near-nominal coverage where plug-in topic-share regressions can undercover, and an application to top economics journals illustrates contrast inference for latent topic effects.
Suggested Citation
Ziyu Jiang, 2026.
"Moment-Based Inference for Regression with Latent Dirichlet Covariates,"
Papers
2605.30718, arXiv.org.
Handle:
RePEc:arx:papers:2605.30718
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