2023
DOI: 10.5705/ss.202020.0457
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On the Consistency of the Least Squares Estimator in Models Sampled at Random Times Driven by Long Memory Noise: The Renewal Case

Abstract: In this study, we prove the strong consistency of the least squares estimator in a random sampled linear regression model with long-memory noise and an independent set of random times given by renewal process sampling. Additionally, we illustrate how to work with a random number of observations up to time T = 1. A simulation study is provided to illustrate the behavior of the different terms, as well as the performance of the estimator under various values of the Hurst parameter H.

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