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Prediction Analysis for Measles Epidemics

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Published 10 December 2003 Copyright (c) 2003 The Japan Society of Applied Physics
, , Citation Ayako Sumi et al 2003 Jpn. J. Appl. Phys. 42 7611 DOI 10.1143/JJAP.42.7611

1347-4065/42/12R/7611

Abstract

A newly devised procedure of prediction analysis, which is a linearized version of the nonlinear least squares method combined with the maximum entropy spectral analysis method, was proposed. This method was applied to time series data of measles case notification in several communities in the UK, USA and Denmark. The dominant spectral lines observed in each power spectral density (PSD) can be safely assigned as fundamental periods. The optimum least squares fitting (LSF) curve calculated using these fundamental periods can essentially reproduce the underlying variation of the measles data. An extension of the LSF curve can be used to predict measles case notification quantitatively. Some discussions including a predictability of chaotic time series are presented.

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