An INteger AutoRegressive afternoon - Statistical analysis of discrete valued time series
31/05/2013 Friday 31st May 2013, 15:00 (Room P3.10, Mathematics Building)
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Isabel Silva and Maria Eduarda Silva, Faculdade de Engenharia, Universidade do Porto, and Faculdade de Economia, Universidade do Porto
Part I: Univariate and multivariate models based on thinning
Part II: Modelling and forecasting time series of counts
Time series of counts arise when the interest lies on the number of certain
events occurring during a specified time interval. Many of these data sets are
characterized by low counts, asymmetric distributions, excess zeros, over
dispersion, etc, ruling out normal approximations. Thus, during the last
decades there has been considerable interest in models for integer-valued
time series and a large volume of work is now available in specialized
monographs. Among the most successful models for integer-valued time
series are the INteger- valued AutoRegressive Moving Average, INARMA,
models based on the thinning operation. These models are attractive since
they are linear-like models for discrete time series which exhibit recognizable
correlation structures. Furthermore, in many situations the collected time
series are multivariate in the sense that there are counts of several events
observed over time and the counts at each time point are correlated. The first
talk introduces univariate and multivariate models for time series of counts
based on the thinning operator and discusses their statistical and probabilistic
properties. The second talk addresses estimation and diagnostic issues and
illustrates the inference procedures with simulated and observed data.
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