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Semiparametric estimation in the optimal dividend barrier for the classical risk model

Semiparametric estimation in the optimal dividend barrier for the classical risk model
Semiparametric estimation in the optimal dividend barrier for the classical risk model
In the context of an insurance portfolio which provides dividend income for the insurance company’s shareholders, an important problem in risk theory is how the premium income will be paid to the shareholders as dividends according to a barrier strategy until the next claim occurs whenever the surplus attains the level of “barrier”. In this paper, we are concerned with the estimation of optimal dividend barrier, defined as the level of the barrier that maximizes the expected discounted dividends until ruin, under the widely used compound Poisson
model as the aggregate claims process. We propose a semi-parametric statistical procedure for estimation of the optimal dividend barrier, which is critically needed in applications. We first construct a consistent estimator of the objective function that is complexly related to the expected discounted dividends and then the estimated optimal dividend barrier as the minimizer of the estimated objective function. In theory we show that the constructed estimator of the optimal dividend barrier is statistically consistent. Numerical experiments by both simulated and real data analyses demonstrate that the proposed estimators work reasonably well with an appropriate size of samples.
0346-1238
Shiraishi, Hiroshi
f87c5d08-bb4b-4f49-bb4c-ef6eec31aaac
Lu, Zudi
4aa7d988-ac2b-4150-a586-ca92b8adda95
Shiraishi, Hiroshi
f87c5d08-bb4b-4f49-bb4c-ef6eec31aaac
Lu, Zudi
4aa7d988-ac2b-4150-a586-ca92b8adda95

Shiraishi, Hiroshi and Lu, Zudi (2018) Semiparametric estimation in the optimal dividend barrier for the classical risk model. Scandinavian Actuarial Journal. (doi:10.1080/03461238.2018.1463557).

Record type: Article

Abstract

In the context of an insurance portfolio which provides dividend income for the insurance company’s shareholders, an important problem in risk theory is how the premium income will be paid to the shareholders as dividends according to a barrier strategy until the next claim occurs whenever the surplus attains the level of “barrier”. In this paper, we are concerned with the estimation of optimal dividend barrier, defined as the level of the barrier that maximizes the expected discounted dividends until ruin, under the widely used compound Poisson
model as the aggregate claims process. We propose a semi-parametric statistical procedure for estimation of the optimal dividend barrier, which is critically needed in applications. We first construct a consistent estimator of the objective function that is complexly related to the expected discounted dividends and then the estimated optimal dividend barrier as the minimizer of the estimated objective function. In theory we show that the constructed estimator of the optimal dividend barrier is statistically consistent. Numerical experiments by both simulated and real data analyses demonstrate that the proposed estimators work reasonably well with an appropriate size of samples.

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dividend-3 - Accepted Manuscript
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Accepted/In Press date: 8 April 2018
e-pub ahead of print date: 25 April 2018

Identifiers

Local EPrints ID: 420277
URI: http://eprints.soton.ac.uk/id/eprint/420277
ISSN: 0346-1238
PURE UUID: b1391024-48c5-4295-aa00-b91bb11640b1
ORCID for Zudi Lu: ORCID iD orcid.org/0000-0003-0893-832X

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Date deposited: 03 May 2018 16:30
Last modified: 16 Mar 2024 06:32

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Contributors

Author: Hiroshi Shiraishi
Author: Zudi Lu ORCID iD

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