Integer-valued trawl processes: A class of stationary infinitely divisible processes
Ole Barndorff-Nielsen,
Asger Lunde,
Neil Shephard and
Almut Veraart
Scholarly Articles from Harvard University Department of Economics
Abstract:
This paper introduces a new continuous-time framework for modelling serially correlated count and integer-valued data. The key component in our new model is the class of integer-valued trawl processes, which are serially correlated, stationary, infinitely divisible processes. We analyse the probabilistic properties of such processes in detail and, in addition, study volatility modulation and multivariate extensions within the new modelling framework. Moreover, we describe how the parameters of a trawl process can be estimated and obtain promising estimation results in our simulation study. Finally, we apply our new modelling framework to high-frequency financial data.
Date: 2014
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Citations: View citations in EconPapers (9)
Published in Scandinavian Journal of Statistics
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Journal Article: Integer-valued Trawl Processes: A Class of Stationary Infinitely Divisible Processes (2014) 
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Persistent link: https://EconPapers.repec.org/RePEc:hrv:faseco:34650304
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