Bayesian Analysis of Bubbles in Asset Prices

Andras Fulop, Jun Yu
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引用次数: 8

Abstract

We develop a new model where the dynamic structure of the asset price, after the fundamental value is removed, is subject to two different regimes. One regime reflects the normal period where the asset price divided by the dividend is assumed to follow a mean-reverting process around a stochastic long run mean. The second regime reflects the bubble period with explosive behavior. Stochastic switches between two regimes and non-constant probabilities of exit from the bubble regime are both allowed. A Bayesian learning approach is employed to jointly estimate the latent states and the model parameters in real time. An important feature of our Bayesian method is that we are able to deal with parameter uncertainty and at the same time, to learn about the states and the parameters sequentially, allowing for real time model analysis. This feature is particularly useful for market surveillance. Analysis using simulated data reveals that our method has good power properties for detecting bubbles. Empirical analysis using price-dividend ratios of S&P500 highlights the advantages of our method.
资产价格泡沫的贝叶斯分析
我们开发了一个新的模型,其中资产价格的动态结构,在基本价值被移除后,受制于两种不同的制度。一种制度反映了正常时期,在这个时期,假设资产价格除以股息遵循一个随机长期均值的均值回归过程。第二种形态反映了泡沫时期的爆发行为。两种状态之间的随机切换和从泡沫状态退出的非恒定概率都是允许的。采用贝叶斯学习方法实时联合估计潜在状态和模型参数。我们的贝叶斯方法的一个重要特点是,我们能够处理参数的不确定性,同时,了解状态和参数顺序,允许实时模型分析。这一特性对市场监督特别有用。模拟数据分析表明,该方法对气泡检测具有良好的功率性能。利用标准普尔500指数的市盈率进行实证分析,可以看出本文方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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