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Inference for the panel ARMA-GARCH model when both $N$ and $T$ are large

Published 29 Apr 2024 in stat.ME | (2404.18377v1)

Abstract: We propose a panel ARMA-GARCH model to capture the dynamics of large panel data with $N$ individuals over $T$ time periods. For this model, we provide a two-step estimation procedure to estimate the ARMA parameters and GARCH parameters stepwisely. Under some regular conditions, we show that all of the proposed estimators are asymptotically normal with the convergence rate $(NT){-1/2}$, and they have the asymptotic biases when both $N$ and $T$ diverge to infinity at the same rate. Particularly, we find that the asymptotic biases result from the fixed effect, estimation effect, and unobservable initial values. To correct the biases, we further propose the bias-corrected version of estimators by using either the analytical asymptotics or jackknife method. Our asymptotic results are based on a new central limit theorem for the linear-quadratic form in the martingale difference sequence, when the weight matrix is uniformly bounded in row and column. Simulations and one real example are given to demonstrate the usefulness of our panel ARMA-GARCH model.

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References (41)
  1. The time series and cross-section asymptotics of dynamic panel data estimators. Econometrica 71, 1121–1159.
  2. Some tests of specification for panel data: Monte Carlo evidence and an application to employment equations. The Review of Economic Studies 58, 277–297.
  3. Baltagi, B. H. (2021). Econometric Analysis of Panel Data. Chichester: John Wiley &\&& Sons.
  4. Don’t look back. Risk 11, 100–103.
  5. Low rank and structured modeling of high-dimensional vector autoregressions. IEEE Transactions on Signal Processing 67, 1207–1222.
  6. Regularized estimation in sparse high-dimensional time series models. The Annals of Statistics 43, 1535–1567.
  7. Bollerslev, T. (1986). Generalized autoregressive conditional heteroskedasticity. Journal of Econometrics 31, 307–327.
  8. Introduction to Time Series and Forecasting, New York: Springer.
  9. Christoffersen, P. F. (1998). Evaluating interval forecasts. International Economic Review 39, 841–862.
  10. Split-panel jackknife estimation of fixed-effect models. The Review of Economic Studies 82, 991–1030.
  11. Engle, R. F. (1982). Autoregressive conditional heteroscedasticity with estimates of the variance of United Kingdom inflation. Econometrica 50, 987–1007.
  12. Multivariate simultaneous generalized ARCH. Econometric Theory 11, 122–150.
  13. Merits and drawbacks of variance targeting in GARCH models. Journal of Financial Econometrics 9, 619–656.
  14. Maximum likelihood estimation of pure GARCH and ARMA-GARCH processes. Bernoulli 10, 605–637.
  15. GARCH Models: Structure, Statistical Inference and Financial Applications. Hoboken: John Wiley &\&& Sons.
  16. Asymptotic normality of quadratic forms of martingale differences. Statistical Inference for Stochastic Processes 20, 315–327.
  17. Limit theorems for bivariate Appell polynomials. Part I: Central limit theorems. Probability Theory and Related Fields 107, 359–381.
  18. Central limit theorems for quadratic forms with time-domain conditions. The Annals of Probability 26, 377–398.
  19. High-dimensional and banded vector autoregressions. Biometrika 103, 889–903.
  20. Asymptotically unbiased inference for a dynamic panel model with fixed effects when both n𝑛nitalic_n and T𝑇Titalic_T are large. Econometrica 70, 1639–1657.
  21. Jackknife and analytical bias reduction for nonlinear panel models. Econometrica 72, 1295–1319.
  22. Hansen, C. B. (2007). Generalized least squares inference in panel and multilevel models with serial correlation and fixed effects. Journal of Econometrics 140, 670–694.
  23. Hsiao, C. (2022). Analysis of Panel Data. New York: Cambridge University Press.
  24. Maximum likelihood estimation of fixed effects dynamic panel data models covering short time periods. Journal of Econometrics 109, 107–150.
  25. On weighted U-statistics for stationary processes. The Annals of Probability 32, 1600–1631.
  26. On the asymptotic distribution of the Moran I test statistic with applications. Journal of Econometrics 104, 219–257.
  27. Dynamic spatial panel models: Networks, common shocks, and sequential exogeneity. Econometrica 88, 2109–2146.
  28. Oracle inequalities for high dimensional vector autoregressions. Journal of Econometrics 186, 325–344.
  29. Lee, Y. (2012). Bias in dynamic panel models under time series misspecification. Journal of Econometrics 169, 54–60.
  30. Asymptotic inference for dynamic panel estimators of infinite order autoregressive processes. Journal of Econometrics 204, 147–158.
  31. Consistent estimates based on partially consistent observations. Econometrica 16, 1–32.
  32. Nickell, S. (1981). Biases in dynamic models with fixed effects. Econometrica 49, 1417–1426.
  33. Nuisance parameters, composite likelihoods and a panel of GARCH models. Statistica Sinica 21, 307–329.
  34. High-dimensional vector autoregressive time series modeling via tensor decomposition. Journal of the American Statistical Association 117, 1338–1356.
  35. Whittle, P. (1964). On the convergence to normality of quadratic forms of independent variables. Theory of Probability and Its Applications 9, 103–108.
  36. Sparse identification and estimation of large-scale vector autoregressive moving averages. Journal of the American Statistical Association 118, 571–582.
  37. A limit theorem for quadratic forms and its applications. Econometric Theory 23, 930–951.
  38. Performance bounds for parameter estimates of high-dimensional linear models with correlated errors. Electronic Journal of Statistics 10, 352–379.
  39. Network GARCH model. Statistica Sinica 30, 1723–1740.
  40. Global self-weighted and local quasi-maximum exponential likelihood estimators for ARMA-GARCH/IGARCH models. The Annals of Statistics 39, 2131–2163.
  41. Network vector autoregression. The Annals of Statistics 45, 1096–1123.

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