Convergence rates in density estimation for data from infinite-order moving average processes (Q910098)
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scientific article; zbMATH DE number 4138865
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Convergence rates in density estimation for data from infinite-order moving average processes |
scientific article; zbMATH DE number 4138865 |
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Convergence rates in density estimation for data from infinite-order moving average processes (English)
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1990
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The effect of long-range dependence in non-parametric probability density estimation is investigated under the assumption that the observed data are a sample from a stationary, infinite-order moving average process. It is shown that to first order, the mean integrated squared error (MISE) of a kernel estimator for moving average data may be expanded as the sum of MISE of the kernel estimator for a same-size random sample, plus a term proportional to the variance of the moving average sample mean. The latter term does not depend on bandwidth, and so imposes a ceiling on the convergence rate of a kernel estimator regardless of how bandwidth is chosen. This ceiling can be quite significant in the case of long-range dependence. We show that all density estimators have the convergence rate ceiling possessed by kernel estimators.
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non-parametric density estimation
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kernel estimator
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dependent data
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long-range dependence
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