1,354 research outputs found

    How to Model Operational Risk, If You Must. Lecture to The Faculty of Actuaries

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    The second Lecturer to the Faculty of Actuaries is Professor Paul Embrechts, Professor of Mathematics at the ETH Zurich (Swiss Federal Institute of Technology, Zurich), specialising in actuarial mathematics and mathematical finance. His previous academic positions include ones at the Universities of Leuven, Limburg and London (Imperial College), and he has held visiting appointments at various other universities. He is an elected Fellow of the Institute of Mathematical Statistics, an Honorary Fellow of the Institute of Actuaries, a Corresponding Member of the Italian Institute of Actuaries, Editor of the ASTIN Bulletin, on the Advisory Board of Finance and Stochastics and Associate Editor of numerous scientific journals. He is a member of the Board of the Swiss Association of Actuaries and belongs to various national and international research and academic advisory committees. His areas of specialisation include insurance risk theory, integrated risk management, the interplay between insurance and finance and the modelling of rare event

    On worst-case investment with applications in finance and insurance mathematics

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    We review recent results on the new concept of worst-case portfolio optimization, i.e. we consider the determination of portfolio processes which yield the highest worst-case expected utility bound if the stock price may have uncertain (down) jumps. The optimal portfolios are derived as solutions of non-linear differential equations which itself are consequences of a Bellman principle for worst-case bounds. They are by construction non-constant ones and thus differ from the usual constant optimal portfolios in the classical examples of the Merton problem. A particular application of such strategies is to model crash possibilities where both the number and the height of the crash is uncertain but bounded. We further solve optimal investment problems in the presence of an additional risk process which is the typical situation of an insurer

    Testing the Gaussian Copula Hypothesis for Financial Assets Dependences

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    Using one of the key property of copulas that they remain invariant under an arbitrary monotonous change of variable, we investigate the null hypothesis that the dependence between financial assets can be modeled by the Gaussian copula. We find that most pairs of currencies and pairs of major stocks are compatible with the Gaussian copula hypothesis, while this hypothesis can be rejected for the dependence between pairs of commodities (metals). Notwithstanding the apparent qualification of the Gaussian copula hypothesis for most of the currencies and the stocks, a non-Gaussian copula, such as the Student's copula, cannot be rejected if it has sufficiently many ``degrees of freedom''. As a consequence, it may be very dangerous to embrace blindly the Gaussian copula hypothesis, especially when the correlation coefficient between the pair of asset is too high as the tail dependence neglected by the Gaussian copula can be as large as 0.6, i.e., three out five extreme events which occur in unison are missed.Comment: Latex document of 43 pages including 14 eps figure

    THE RELATION BETWEEN THE NUMBER OF REPETITIONS AND THE RELATIVE LOAD IN STRENGTH TRAINING

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    It was the aim of this study to determine the relationship between the number of repetitions that can be lifted at a range of percentages of the 1RM load in leg curl and bench press. Comparisons were made between males and females, and between long distance runners and sprinters. Findings suggest that this relationship is different between the two types of exercise. No differences were found between males and females. When working with highly trained athletes in bench press it is recommended that different regression equations are employed when studying sprint trained or endurance trained athletes

    Risk margin for a non-life insurance run-off

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    For solvency purposes insurance companies need to calculate so-called best-estimate reserves for outstanding loss liability cash flows and a corresponding risk margin for non-hedgeable insurance-technical risks in these cash flows. In actuarial practice, the calculation of the risk margin is often not based on a sound model but various simplified methods are used. In the present paper we properly define these notions and we introduce insurance-technical probability distortions. We describe how the latter can be used to calculate a risk margin for non-life insurance run-off liabilities in a mathematically consistent way

    Asymptotic Conditional Distribution of Exceedance Counts: Fragility Index with Different Margins

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    Let X=(X1,...,Xd)\bm X=(X_1,...,X_d) be a random vector, whose components are not necessarily independent nor are they required to have identical distribution functions F1,...,FdF_1,...,F_d. Denote by NsN_s the number of exceedances among X1,...,XdX_1,...,X_d above a high threshold ss. The fragility index, defined by FI=limsE(NsNs>0)FI=\lim_{s\nearrow}E(N_s\mid N_s>0) if this limit exists, measures the asymptotic stability of the stochastic system X\bm X as the threshold increases. The system is called stable if FI=1FI=1 and fragile otherwise. In this paper we show that the asymptotic conditional distribution of exceedance counts (ACDEC) pk=limsP(Ns=kNs>0)p_k=\lim_{s\nearrow}P(N_s=k\mid N_s>0), 1kd1\le k\le d, exists, if the copula of X\bm X is in the domain of attraction of a multivariate extreme value distribution, and if lims(1Fi(s))/(1Fκ(s))=γi[0,)\lim_{s\nearrow}(1-F_i(s))/(1-F_\kappa(s))=\gamma_i\in[0,\infty) exists for 1id1\le i\le d and some κ1,...,d\kappa\in{1,...,d}. This enables the computation of the FI corresponding to X\bm X and of the extended FI as well as of the asymptotic distribution of the exceedance cluster length also in that case, where the components of X\bm X are not identically distributed

    News and price returns from threshold behaviour and vice-versa: exact solution of a simple agent-based market model

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    Starting from an exact relationship between news, threshold and price return distributions in the stationary state, I discuss the ability of the Ghoulmie-Cont-Nadal model of traders to produce fat-tailed price returns. Under normal conditions, this model is not able to transform Gaussian news into fat-tailed price returns. When the variance of the news so small that only the players with zero threshold can possibly react to news, this model produces Levy-distributed price returns with a -1 exponent. In the special case of super-linear price impact functions, fat-tailed returns are obtained from well-behaved news.Comment: 4 pages, 3 figures. This is quite possibly the final version. To appear in J. Phys

    Information Security Risk Assessment, Aggregation, and Mitigation

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