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Inference for a class of partially observed point process models

机译:一类部分观测点过程模型的推论

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This paper presents a simulation-based framework for sequential inference from partially and discretely observed point process models with static parameters. Taking on a Bayesian perspective for the static parameters, we build upon sequential Monte Carlo methods, investigating the problems of performing sequential filtering and smoothing in complex examples, where current methods often fail. We consider various approaches for approximating posterior distributions using SMC. Our approaches, with some theoretical discussion are illustrated on a doubly stochastic point process applied in the context of finance.
机译:本文提出了一个基于仿真的框架,用于从具有静态参数的部分和离散观测点过程模型进行顺序推理。从静态参数的贝叶斯角度出发,我们建立在顺序蒙特卡洛方法的基础上,研究在复杂示例中执行顺序滤波和平滑的问题,在这些示例中,当前方法经常失败。我们考虑使用SMC近似后验分布的各种方法。我们的方法,经过一些理论上的讨论,说明了在金融环境中应用的双随机点过程。

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