Abstract

Empirical likelihood method has been applied to short-memory time series models by Monti (1997) through the Whittle's estimation method. Yau (2012) extended this idea to long-memory time series models. Asymptotic distributions of the empirical likelihood ratio statistic for short and long-memory time series have been derived to construct confidence regions for the corresponding model parameters. However, it experiences the undercoverage issue which causes the coverage probabilities of parameters lower than the given nominal levels, especially for small sample sizes. In this paper, we propose a modified empirical likelihood which combines the advantages of the adjusted empirical likelihood and the transformed empirical likelihood to modify the one proposed by Yau (2012) for autoregressive fractionally integrated moving average (ARFIMA) model for the purpose of improving coverage probabilities.Asymptotic null distribution of the test statistic has been established as the standard chi-square distribution with the degree of freedom one. Simulations have been conducted to investigate the performance of the proposed method as well as the comparisons of other existing methods to illustrate that the proposed method can provide better coverage probabilities especially for small sample sizes.

Highlights

  • Owen (1988), Owen (1990), Owen (1991) introduced empirical likelihood (EL) method which is the data-driven method combining the advantages of parametric and nonparametric methods

  • We extend Yau’s EL method for autoregressive fractionally integrated moving average (ARFIMA) model by proposing a transformed adjusted empirical likelihood method (TAEL)

  • Such a method combines the advantage of the adjusted empirical likelihood (AEL) by Chen et al (2008) on ensuring the existence of the solutions in optimizing the profile empirical likelihood ratio, and the advantage of the transformed empirical likelihood (JEL) by Jing et al (2017) on improving coverage probabilities while maintaining the same asymptotic properties and simple form

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Summary

Introduction

Owen (1988), Owen (1990), Owen (1991) introduced empirical likelihood (EL) method which is the data-driven method combining the advantages of parametric and nonparametric methods. Variyath, and Abraham (2008) pointed out the drawbacks in doing so and proposed an adjusted empirical likelihood (AEL) method by adding a pseudo term which always guarantees the existence of a solution. They further showed that the asymptotic results of the AEL are similar to that of the EL.

Adjusted empirical likelihood for ARFIMA models
Transformed adjusted empirical likelihood for ARFIMA models
Simulations
Coverage probabilities
Method
Discussion

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