Robust Estimation of Double Autoregressive Models via Normal Mixture QMLE
Zhao Chen, Chen Shi, Christina Dan Wang

TL;DR
This paper introduces a robust estimation method for double autoregressive models using normal mixture quasi-maximum likelihood, effectively handling skewed and heavy-tailed innovations in financial time series.
Contribution
The paper proposes NM-QMLE, a novel estimation technique incorporating normal mixture distributions, and addresses the challenge of selecting the number of mixture components for improved model performance.
Findings
NM-QMLE outperforms traditional QMLE in heavy-tailed scenarios.
Model selection criteria like BIC and ICL help determine the number of mixture components.
Empirical application to S&P 500 data demonstrates practical effectiveness.
Abstract
This paper investigates the estimation of the double autoregressive (DAR) model in the presence of skewed and heavy-tailed innovations. We propose a novel Normal Mixture Quasi-Maximum Likelihood Estimation (NM-QMLE) method to address the limitations of conventional quasi-maximum likelihood estimation (QMLE) under non-Gaussian conditions. By incorporating a normal mixture distribution into the quasi-likelihood framework, NM-QMLE effectively captures both heavy-tailed behavior and skewness. A critical contribution of this paper is addressing the often-overlooked challenge of selecting the appropriate number of mixture components, , a key parameter that significantly impacts model performance. We systematically evaluate the effectiveness of different model selection criteria. Under regularity conditions, we establish the consistency and asymptotic normality of the NM-QMLE estimator for…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Financial Risk and Volatility Modeling · Statistical Methods and Inference
