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Activity Number: 419 - Quantifying the Anthropogenic Fingerprint in Climate Change
Type: Invited
Date/Time: Thursday, August 12, 2021 : 4:00 PM to 5:50 PM
Sponsor: Section on Statistics and the Environment
Abstract #316820
Title: Multivariate Integer-Valued Time Series with Flexible Autocovariances and Their Application to Major Hurricane Counts
Author(s): Vladas Pipiras*
Companies: University of North Carolina at Chapel Hill
Keywords: Count time series; Hurricanes; Long-range dependence; Negative autocorrelation; Poisson; Multivariate
Abstract:

This talk examines a bivariate count time series with some curious statistical features: Saffir-Simpson Category 3 and stronger annual hurricane counts in the North Atlantic and Pacific Ocean Basins. As land and ocean temperatures on our planet warm, an intense climatological debate has arisen over whether hurricanes are becoming more numerous, or whether the strengths of the individual storms are increasing. When examined statistically, a Poisson white noise model for the annual severe hurricane counts is difficult to resoundingly reject. Yet, decadal cycles (longer term dependence) in the hurricane counts is plausible. This talk takes a statistical look at the issue, developing a stationary multivariate count time series model with Poisson marginal distributions and a flexible autocovariance structure. Our auto- and cross-correlations can be negative and have long-range dependence, features that most previous count models cannot achieve in tandem. In the end, we conclude that severe hurricane counts are indeed negatively correlated across the two ocean basins. Some evidence for long-range dependence is also presented.


Authors who are presenting talks have a * after their name.

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