Simultaneous Inference of the Mean of Functional Time Series

Date

2015-08-25

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Institute of Mathematical Statistics

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Abstract

For functional time series with physical dependence, we construct confidence bands for its mean function. The physical dependence is a general dependence framework, and it slightly relaxes the conditions of m-approximable dependence.We estimate functional time series mean functions via a spline smoothing technique. Confidence bands have been constructed based on a long-run variance and a strong approximation theorem, which is satisfied with mild regularity conditions. Simulation experiments provide strong evidence that corroborates the asymptotic theories. Additionally, an application to S&P500 index data demonstrates a non-constant volatility mean function at a certain significance level. © 2015, Institute of Mathematical Statistics. All rights reserved.

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Keywords

Mathematical statistics, Functional time series, High-frequency data, Regression analysis, Nonparametric statistics, Splines

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Rights

CC BY 2.5 (Attribution), ©2015 Institute of Mathematical Statistics. All rights reserved.

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