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Testing for the Equality of Two Nonparametric Regression Curves with Long Memory Errors
Authors:Fang Li
Institution:1. Department of Mathematical Sciences , Indiana University Purdue University at Indianapolis , Indianapolis , Indiana , USA fli@math.iupui.edu
Abstract:This article discusses the problem of testing the equality of two nonparametric regression functions against two-sided alternatives for uniform design on 0,1] with long memory moving average errors. The standard deviations and the long memory parameters are possibly different for the two errors. The article adapts the partial sum process idea used in the independent observations settings to construct the tests and derives their asymptotic null distributions. The article also shows that these tests are consistent for general alternatives and obtains their limiting distributions under a sequence of local alternatives. Since the limiting null distributions of these tests are unknown, we first conducted a Monte Carlo simulation study to obtain a few selected critical values of the proposed tests. Then based on these critical values, another Monte Carlo simulation is conducted to study the finite sample level and power behavior of these tests at some alternatives. The article also contains a simulation study that assesses the effect of estimating the nonparametric regression function on an estimate of the long memory parameter of the errors. It is observed that the estimate based on direct observations is generally preferable over the one based on the estimated nonparametric residuals.
Keywords:Fractional Brownian motion  Monte Carlo simulation  Partial sum process
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