Conjugate processes: Theory and application to risk forecasting |
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Authors: | Eduardo Horta Flavio Ziegelmann |
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Affiliation: | Universidade Federal do Rio Grande do Sul, Department of Statistics, 9500 Bento Gonçalves Av., 43–111, Porto Alegre, RS, 91509-900, Brazil |
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Abstract: | Many dynamical phenomena display a cyclic behavior, in the sense that time can be partitioned into units within which distributional aspects of a process are homogeneous. In this paper, we introduce a class of models – called conjugate processes – allowing the sequence of marginal distributions of a cyclic, continuous-time process to evolve stochastically in time. The connection between the two processes is given by a fundamental compatibility equation. Key results include Laws of Large Numbers in the presented framework. We provide a constructive example which illustrates the theory, and give a statistical implementation to risk forecasting in financial data. |
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Keywords: | 60G57 60G10 62G99 62M99 Random measure Covariance operator Dimension reduction Functional time series High frequency financial data Risk forecasting |
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