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On the Quasi-Stationary Distribution of the Shiryaev-Roberts Diffusion

21 June 2016
Aleksey S. Polunchenko
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Abstract

We consider the diffusion (Rtr)t≥0(R_t^r)_{t\ge0}(Rtr​)t≥0​ generated by the equation dRtr=dt+μRtrdBtdR_t^r=dt+\mu R_t^r dB_tdRtr​=dt+μRtr​dBt​ with R0r≜r≥0R_0^r\triangleq r\ge0R0r​≜r≥0 fixed, and where μ≠0\mu\neq0μ=0 is given, and (Bt)t≥0(B_t)_{t\ge0}(Bt​)t≥0​ is standard Brownian motion. We assume that (Rtr)t≥0(R_t^r)_{t\ge0}(Rtr​)t≥0​ is stopped at SAr≜inf⁡{t≥0 ⁣:Rtr=A}\mathcal{S}_A^r\triangleq\inf\{t\ge0\colon R_t^r=A\}SAr​≜inf{t≥0:Rtr​=A} with A>0A>0A>0 preset, and obtain a closed-from formula for the quasi-stationary distribution of (Rtr)t≥0(R_t^r)_{t\ge0}(Rtr​)t≥0​, i.e., the limit QA(x)≜lim⁡t→+∞Pr⁡(Rtr≤x∣SAr>t)Q_A(x)\triangleq\lim_{t\to+\infty}\Pr(R_t^r\le x|\mathcal{S}_A^r>t)QA​(x)≜limt→+∞​Pr(Rtr​≤x∣SAr​>t), x∈[0,A]x\in[0,A]x∈[0,A]. Further, we also prove QA(x)Q_A(x)QA​(x) to be unimodal for any A>0A>0A>0, and obtain its entire moment series. More importantly, the pair (SAr,Rtr)(\mathcal{S}_A^r,R_t^r)(SAr​,Rtr​) with r≥0r\ge0r≥0 and A>0A>0A>0 is the well-known Generalized Shiryaev-Roberts change-point detection procedure, and its characteristics for r∼QA(x)r\sim Q_A(x)r∼QA​(x) are of particular interest, especially when A>0A>0A>0 is large. In view of this circumstance we offer an order-three large-AAA asymptotic approximation of QA(x)Q_A(x)QA​(x) valid for all x∈[0,A]x\in[0,A]x∈[0,A]. The approximation is rather accurate even if AAA is lower than what would be considered "large" in practice.

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