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Estimation for Nonnegative First-Order Autoregressive Processes with an Unknown Location Parameter 被引量:1

Estimation for Nonnegative First-Order Autoregressive Processes with an Unknown Location Parameter
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摘要 Consider a first-order autoregressive processes , where the innovations are nonnegative random variables with regular variation at both the right endpoint infinity and the unknown left endpoint θ. We propose estimates for the autocorrelation parameter f and the unknown location parameter θ by taking the ratio of two sample values chosen with respect to an extreme value criteria for f and by taking the minimum of over the observed series, where represents our estimate for f. The joint limit distribution of the proposed estimators is derived using point process techniques. A simulation study is provided to examine the small sample size behavior of these estimates. Consider a first-order autoregressive processes , where the innovations are nonnegative random variables with regular variation at both the right endpoint infinity and the unknown left endpoint θ. We propose estimates for the autocorrelation parameter f and the unknown location parameter θ by taking the ratio of two sample values chosen with respect to an extreme value criteria for f and by taking the minimum of over the observed series, where represents our estimate for f. The joint limit distribution of the proposed estimators is derived using point process techniques. A simulation study is provided to examine the small sample size behavior of these estimates.
机构地区 University of Georgia
出处 《Applied Mathematics》 2012年第12期2133-2147,共15页 应用数学(英文)
关键词 NONNEGATIVE Time Series AUTOREGRESSIVE PROCESSES Extreme Value ESTIMATOR REGULAR Variation Point PROCESSES Nonnegative Time Series Autoregressive Processes Extreme Value Estimator Regular Variation Point Processes
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