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X-WR-CALNAME:Centre for Mathematical Sciences
X-ORIGINAL-URL:https://math-sciences.org
X-WR-CALDESC:Events for Centre for Mathematical Sciences
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TZID:UTC
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TZOFFSETFROM:+0000
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DTSTART:20190101T000000
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DTSTART;TZID=UTC:20190403T020000
DTEND;TZID=UTC:20190403T150000
DTSTAMP:20210725T053807
CREATED:20180810T041717Z
LAST-MODIFIED:20190313T111318Z
UID:3020-1554256800-1554303600@math-sciences.org
SUMMARY:Guy Nason (Royal Statistical Society Vice President for Academic Affairs; University of Bristol)
DESCRIPTION:Title: Network Time Series \nAbstract: \n A network time series is a multivariate time series where the individual series are known to be linked by some underlying network structure. Sometimes this network is known a priori\, and sometimes the network has to be inferred\, often from the multivariate series itself. Network time series are becoming increasingly common\, long\, and collected over a large number of variables. We are particularly interested in network time series whose network structure changes over time. \n We describe some recent developments in the modeling and analysis of network time series via network autoregressive integrated moving average (NARIMA) process models. NARIMA models provide a network extension to a familiar environment that can be used to extract valuable information and aid prediction. As with classical ARIMA models\, trend can impair the estimation of NARIMA parameters. The scope for trend removal is somewhat wider with NARIMA models and we exhibit some possibilities. \n We will illustrate the operation of NARIMA modeling on some real data sets. \n This is joint work with Kathryn Leeming (Bristol)\, Marina Knight (York) and Matt Nunes (Lancaster).
URL:https://math-sciences.org/event/guy-nason-university-of-bristol/
LOCATION:Rolle 001
CATEGORIES:Seminars,Statistics and Data Science
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