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Block sampler and posterior mode estimation for asymmetric stochastic volatility models

机译:非对称随机波动率模型的块采样器和后验模式估计

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摘要

A new efficient simulation smoother and disturbance smoother are introduced for asymmetric stochastic volatility models where there exists a correlation between today's return and tomorrow's volatility. The state vector is divided into several blocks where each block consists of many state variables. For each block, corresponding disturbances are sampled simultaneously from their conditional posterior distribution. The algorithm is based on the multivariate normal approximation of the conditional posterior density and exploits a conventional simulation smoother for a linear and Gaussian state-space model. The performance of our method is illustrated using two examples: (1) simple asymmetric stochastic volatility model and (2) asymmetric stochastic volatility model with state-dependent variances. The popular single move sampler which samples a state variable at a time is also conducted for comparison in the first example. It is shown that our proposed sampler produces considerable improvement in the mixing property of the Markov chain Monte Carlo chain.
机译:针对不对称随机波动率模型引入了新的高效模拟平滑器和扰动平滑器,该模型在今天的收益率和明天的波动率之间存在相关性。状态向量被分成几个块,其中每个块由许多状态变量组成。对于每个块,从其条件后验分布同时采样相应的干扰。该算法基于条件后验密度的多元正态近似,并为线性和高斯状态空间模型开发了传统的仿真器。使用两个示例说明了我们方法的性能:(1)简单的非对称随机波动率模型和(2)具有状态相关方差的非对称随机波动率模型。在第一示例中,还进行了流行的单次移动采样器,该采样器一次对状态变量进行采样,以进行比较。结果表明,我们提出的采样器在马尔可夫链蒙特卡洛链的混合特性方面产生了可观的改进。

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