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Bayesian estimation and likelihood-based comparison of agent-based volatility models

机译:基于代理的波动性模型的贝叶斯估计与基于似然的比较

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摘要

The statistical description and modeling of volatility plays a prominent role in econometrics, risk management and finance. GARCH and stochastic volatility models have been extensively studied and are routinely fitted to market data, albeit providing a phenomenological description only. In contrast, agent-based modeling starts from the premise that modern economies consist of a vast number of individual actors with heterogeneous expectations and incentives. Observed market statistics then emerge from the collective dynamics of many actors following heterogeneous, yet simple rules. On the one hand, such models generate volatility dynamics, qualitatively matching several stylized facts. On the other hand, they illustrate the possible role of different mechanisms, such as chartist trading and herding behavior. Yet, rigorous and quantitative statistical fits are still mostly lacking. Here, we proposeHamiltonian Monte Carlo, an efficient and scalable Markov chain Monte Carlo algorithm, as a general method for Bayesian inference of agent-based models. In particular, we implement several models by Vikram and Sinha, Franke and Westerhoff and Alfarano, Lux and Wagner in Stan, an accessible probabilistic programming language for Bayesian modeling. We also compare the performance of these models with standard econometric models of the GARCH and stochastic volatility families. We find that the best agent-based models are on par with stochastic volatility models in terms of predictive likelihood, yet exhibit challenging posterior geometries requiring care in model comparison and sophisticated sampling algorithms.
机译:波动性的统计描述和建模在经济学,风险管理和金融中起着突出的作用。 GARCH和随机波动率模型已被广泛研究,并且通常适用于市场数据,尽管仅提供了现象学描述。相比之下,基于代理的建模从现代经济体由具有异质期望和激励措施的广大个别演员组成的前提。观察到的市场统计数据从异构但简单的规则之后的许多演员的集体动态出现。一方面,这种模型产生波动动力学,定性匹配几个程式化的事实。另一方面,它们说明了不同机制的可能作用,例如图表交易和掠过行为。然而,严格和量化的统计契合仍然缺乏。在这里,我们推荐蒙特卡罗,一种高效且可伸缩的马尔可夫链蒙特卡罗算法,作为基于代理的模型的贝叶斯推断的一般方法。特别是,我们通过Vikram和Sinha,Franke和Westerhoff和Alfarano,Lux和Wagner在STAN,这是一个可访问的概率编程语言,实现了多种型号,是贝叶斯建模的可访问的概率编程语言。我们还将这些模型的性能与Garch和随机波动率家庭的标准计量模型进行了比较。我们发现,基于代理的模型在预测可能性方面都与随机波动率模型相提并论,但在模型比较和复杂的采样算法中表现出挑战的后几何。

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