Abstract

This paper focuses on the adaptive spline (A-spline) fitting of the semiparametric regression model to time series data with right-censored observations. Typically, there are two main problems that need to be solved in such a case: dealing with censored data and obtaining a proper A-spline estimator for the components of the semiparametric model. The first problem is traditionally solved by the synthetic data approach based on the Kaplan–Meier estimator. In practice, although the synthetic data technique is one of the most widely used solutions for right-censored observations, the transformed data’s structure is distorted, especially for heavily censored datasets, due to the nature of the approach. In this paper, we introduced a modified semiparametric estimator based on the A-spline approach to overcome data irregularity with minimum information loss and to resolve the second problem described above. In addition, the semiparametric B-spline estimator was used as a benchmark method to gauge the success of the A-spline estimator. To this end, a detailed Monte Carlo simulation study and a real data sample were carried out to evaluate the performance of the proposed estimator and to make a practical comparison.

Highlights

  • IntroductionRight-censored time series are encountered frequently in the real world, in the literature, there are truly few studies completed on the estimation of right-censored time series

  • The results obtained from both a simulation study and a real data better bias values for α, but the BS method gives smaller variance values for αthan the example proved that the introduced method (AS) achieves the superior of rightAS method

  • It can be seen that the resultssupport of the that the AS method provides performance scores over the BS method in most simuunemployment duration databetter ensure the simulation outputs

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Summary

Introduction

Right-censored time series are encountered frequently in the real world, in the literature, there are truly few studies completed on the estimation of right-censored time series This may be because censorship is an unwanted data irregularity for the researchers, and it is often ignored or solved by outdated techniques. See [12,13,14,15] for additional information In both theory and practice, the semiparametric model brings a new perspective to data modeling, since it includes both parametric and nonparametric components. Model (1) does not include lagged Zt 0 s and has auto-correlated errors This expression makes it a suitable model for the semiparametric regression analysis of certain kinds of time series

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