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首页> 外文期刊>Journal of Econometrics >Bayesian estimation of dynamic asset pricing models with informative observations
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Bayesian estimation of dynamic asset pricing models with informative observations

机译:具有信息性观测的动态资产定价模型的贝叶斯估算

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In dynamic asset pricing models, when the model structure becomes complex and derivatives data are introduced in estimation, traditional MCMC methods converge slowly, are difficult to design efficient proposals for parameters, and have large computational cost. We propose a two-stage sequential Monte Carlo sampler based on common random numbers and a smooth particle filter. This method is robust to potential model misspecification and can deliver almost full-likelihood-based inference at a much smaller computational cost. It is applied to estimate a class of volatility models that take into account price-volatility co-jumps, non-affineness, and self-excitation. An empirical study using S&P 500 index and variance swap rates shows that both non-affineness and self-excitation need to be introduced in modeling volatility dynamics. (C) 2018 Elsevier B.V. All rights reserved.
机译:在动态资产定价模型中,当模型结构变得复杂并且衍生物数据估计时,传统的MCMC方法会慢慢收敛,很难为参数设计有效的提案,并且具有大的计算成本。 我们提出了一种基于常见随机数和平滑粒子滤波器的两级序贯蒙特卡罗采样器。 该方法对潜在的模型拼写尺寸稳健,并且可以以更小的计算成本提供几乎全面的基于似然的推断。 它适用于估计一类挥发性模型,以考虑价格 - 波动共同跳跃,非束缚和自我激发。 使用S&P 500指数和方差交换速率的实证研究表明,需要在建模波动动力学中引入非束缚和自激。 (c)2018 Elsevier B.v.保留所有权利。

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