Analysis and Forecasting of Risk in Count Processes

Risk measures are commonly used to prepare for a prospective occurrence of an adverse event. If we are concerned with discrete risk phenomena such as counts of natural disasters, counts of infections by a serious disease, or counts of certain economic events, then the required risk forecasts are to...

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Main Authors: Annika Homburg, Christian H. Weiß, Gabriel Frahm, Layth C. Alwan, Rainer Göb
Format: Article
Language:English
Published: MDPI AG 2021-04-01
Series:Journal of Risk and Financial Management
Subjects:
Online Access:https://www.mdpi.com/1911-8074/14/4/182
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spelling doaj-74da008593c845c0b0f75ab29ee20d8c2021-04-16T23:03:54ZengMDPI AGJournal of Risk and Financial Management1911-80661911-80742021-04-011418218210.3390/jrfm14040182Analysis and Forecasting of Risk in Count ProcessesAnnika Homburg0Christian H. Weiß1Gabriel Frahm2Layth C. Alwan3Rainer Göb4Department of Mathematics and Statistics, Helmut Schmidt University, 22043 Hamburg, GermanyDepartment of Mathematics and Statistics, Helmut Schmidt University, 22043 Hamburg, GermanyDepartment of Mathematics and Statistics, Helmut Schmidt University, 22043 Hamburg, GermanySheldon B. Lubar School of Business, University of Wisconsin-Milwaukee, Milwaukee, WI 53211, USADepartment of Statistics, Institute of Mathematics, University of Würzburg, 97070 Würzburg, GermanyRisk measures are commonly used to prepare for a prospective occurrence of an adverse event. If we are concerned with discrete risk phenomena such as counts of natural disasters, counts of infections by a serious disease, or counts of certain economic events, then the required risk forecasts are to be computed for an underlying count process. In practice, however, the discrete nature of count data is sometimes ignored and risk forecasts are calculated based on Gaussian time series models. But even if methods from count time series analysis are used in an adequate manner, the performance of risk forecasting is affected by estimation uncertainty as well as certain discreteness phenomena. To get a thorough overview of the aforementioned issues in risk forecasting of count processes, a comprehensive simulation study was done considering a broad variety of risk measures and count time series models. It becomes clear that Gaussian approximate risk forecasts substantially distort risk assessment and, thus, should be avoided. In order to account for the apparent estimation uncertainty in risk forecasting, we use bootstrap approaches for count time series. The relevance and the application of the proposed approaches are illustrated by real data examples about counts of storm surges and counts of financial transactions.https://www.mdpi.com/1911-8074/14/4/182count time seriesexpected shortfallexpectilesGaussian approximationmid quantilestail conditional expectation
collection DOAJ
language English
format Article
sources DOAJ
author Annika Homburg
Christian H. Weiß
Gabriel Frahm
Layth C. Alwan
Rainer Göb
spellingShingle Annika Homburg
Christian H. Weiß
Gabriel Frahm
Layth C. Alwan
Rainer Göb
Analysis and Forecasting of Risk in Count Processes
Journal of Risk and Financial Management
count time series
expected shortfall
expectiles
Gaussian approximation
mid quantiles
tail conditional expectation
author_facet Annika Homburg
Christian H. Weiß
Gabriel Frahm
Layth C. Alwan
Rainer Göb
author_sort Annika Homburg
title Analysis and Forecasting of Risk in Count Processes
title_short Analysis and Forecasting of Risk in Count Processes
title_full Analysis and Forecasting of Risk in Count Processes
title_fullStr Analysis and Forecasting of Risk in Count Processes
title_full_unstemmed Analysis and Forecasting of Risk in Count Processes
title_sort analysis and forecasting of risk in count processes
publisher MDPI AG
series Journal of Risk and Financial Management
issn 1911-8066
1911-8074
publishDate 2021-04-01
description Risk measures are commonly used to prepare for a prospective occurrence of an adverse event. If we are concerned with discrete risk phenomena such as counts of natural disasters, counts of infections by a serious disease, or counts of certain economic events, then the required risk forecasts are to be computed for an underlying count process. In practice, however, the discrete nature of count data is sometimes ignored and risk forecasts are calculated based on Gaussian time series models. But even if methods from count time series analysis are used in an adequate manner, the performance of risk forecasting is affected by estimation uncertainty as well as certain discreteness phenomena. To get a thorough overview of the aforementioned issues in risk forecasting of count processes, a comprehensive simulation study was done considering a broad variety of risk measures and count time series models. It becomes clear that Gaussian approximate risk forecasts substantially distort risk assessment and, thus, should be avoided. In order to account for the apparent estimation uncertainty in risk forecasting, we use bootstrap approaches for count time series. The relevance and the application of the proposed approaches are illustrated by real data examples about counts of storm surges and counts of financial transactions.
topic count time series
expected shortfall
expectiles
Gaussian approximation
mid quantiles
tail conditional expectation
url https://www.mdpi.com/1911-8074/14/4/182
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