4,785 research outputs found

    Small and Large Time Stability of the Time taken for a L\'evy Process to Cross Curved Boundaries

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    This paper is concerned with the small time behaviour of a L\'{e}vy process XX. In particular, we investigate the {\it stabilities} of the times, \Tstarb(r) and \Tbarb(r), at which XX, started with X0=0X_0=0, first leaves the space-time regions {(t,y)R2:yrtb,t0}\{(t,y)\in\R^2: y\le rt^b, t\ge 0\} (one-sided exit), or {(t,y)R2:yrtb,t0}\{(t,y)\in\R^2: |y|\le rt^b, t\ge 0\} (two-sided exit), 0b<10\le b<1, as r\dto 0. Thus essentially we determine whether or not these passage times behave like deterministic functions in the sense of different modes of convergence; specifically convergence in probability, almost surely and in LpL^p. In many instances these are seen to be equivalent to relative stability of the process XX itself. The analogous large time problem is also discussed

    Stability of the Exit Time for L\'evy Processes

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    This paper is concerned with the behaviour of a L\'{e}vy process when it crosses over a positive level, uu, starting from 0, both as uu becomes large and as uu becomes small. Our main focus is on the time, τu\tau_u, it takes the process to transit above the level, and in particular, on the {\it stability} of this passage time; thus, essentially, whether or not τu\tau_u behaves linearly as u\dto 0 or uu\to\infty. We also consider conditional stability of τu\tau_u when the process drifts to -\infty, a.s. This provides information relevant to quantities associated with the ruin of an insurance risk process, which we analyse under a Cram\'er condition

    Asymptotic Distributions of the Overshoot and Undershoots for the L\'evy Insurance Risk Process in the Cram\'er and Convolution Equivalent Cases

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    Recent models of the insurance risk process use a L\'evy process to generalise the traditional Cram\'er-Lundberg compound Poisson model. This paper is concerned with the behaviour of the distributions of the overshoot and undershoots of a high level, for a L\'{e}vy process which drifts to -\infty and satisfies a Cram\'er or a convolution equivalent condition. We derive these asymptotics under minimal conditions in the Cram\'er case, and compare them with known results for the convolution equivalent case, drawing attention to the striking and unexpected fact that they become identical when certain parameters tend to equality. Thus, at least regarding these quantities, the "medium-heavy" tailed convolution equivalent model segues into the "light-tailed" Cram\'er model in a natural way. This suggests a usefully expanded flexibility for modelling the insurance risk process. We illustrate this relationship by comparing the asymptotic distributions obtained for the overshoot and undershoots, assuming the L\'evy process belongs to the "GTSC" class
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