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Title:

Estimating functional time series by moving average model fitting

Document type:
Zeitungsartikel
Author(s):
Aue, A. and Klepsch, J.
Abstract:
Functional time series have become an integral part of both functional data and time series analysis. Important contributions to methodology, theory and application for the prediction of future trajectories and the estimation of functional time series parameters have been made in the recent past. This paper continues this line of research by proposing a first principled approach to estimate invertible functional time series by fitting functional moving average processes. The idea is to estimate...     »
Keywords:
Dimension reduction; Estimation, Functional data analysis; Functional linear process; Functional time series, Hilbert spaces; Innovations Algorithm, Moving average process
Journal title:
Preprint
Year:
2017
Year / month:
2017-01
Quarter:
1. Quartal
Month:
Jan
Status:
Preprint / submitted
TUM Institution:
Lehrstuhl für Mathematische Statistik
Format:
Text
 BibTeX