Publication Type
Journal Article
Version
submittedVersion
Publication Date
1-2026
Abstract
We propose an M-estimation method for dynamic spatial panel data models with interactive fixed effects based on (relatively) short panels. Unbiased estimating functions are constructed by adjusting the concentrated conditional quasi scores, given the initial values and with the factor loadings being concentrated out, to account for the effects of conditioning and concentration. Solving the estimating equations gives the M-estimators of the common parameters and common factors. Under fixed T, n-consistency and joint asymptotic normality of the M-estimators are established. Under T = o(n), the M-estimators of the common parameters are shown to be nT-consistent and asymptotically normal. For inference, difficulty lies in the estimation of the variance-covariance (VC) matrix of the estimating functions. We decompose the estimating functions into a sum of n nearly uncorrelated terms, using their outer products with a covariance adjustment to obtain a consistent VC estimator under both fixed T and T = o(n). Monte Carlo results show that the proposed methods perform well in finite samples. We apply our methods to examine peer effects in firms’ innovation decisions, using data from publicly listed Chinese firms. The results reveal significant spillovers in R & D investment within industries and spatial correlations in unobserved shocks among geographically proximate firms.
Keywords
Adjusted quasi scores, dynamic effects, high-order spatial effects, incidental parameters, initial conditions, interactive fixed effects
Discipline
Econometrics
Publication
Econometric Reviews
Volume
45
Issue
2
First Page
112
Last Page
147
ISSN
0747-4938
Identifier
10.1080/07474938.2025.2559790
Publisher
Taylor and Francis Group
Citation
LI, Liyao; MIAO, Ke; and YANG, Zhenlin.
Dynamic spatial panel data models with interactive fixed effects: M-estimation and inference under fixed or relatively small T. (2026). Econometric Reviews. 45, (2), 112-147.
Available at: https://ink.library.smu.edu.sg/soe_research/2864
Creative Commons License

This work is licensed under a Creative Commons Attribution-NonCommercial-No Derivative Works 4.0 International License.
Additional URL
https://doi.org/10.1080/07474938.2025.2559790