Bayesian analysis of bubbles in asset prices
We develop a new asset price 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 s...
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sg-smu-ink.soe_research-32082020-03-31T06:24:15Z Bayesian analysis of bubbles in asset prices FULOP, Andras YU, Jun We develop a new asset price 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. This latter is allowed to account for possible smooth structural change. 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 better power for detecting bubbles compared to existing alternative procedures. Empirical analysis using price/dividend ratios of S&P500 highlights the advantages of our method. 2017-12-01T08:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/2209 info:doi/10.3390/econometrics5040047 https://ink.library.smu.edu.sg/context/soe_research/article/3208/viewcontent/econometrics_05_00047_pvoa.pdf http://creativecommons.org/licenses/by/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Parameter Learning Markov Switching MCMC Econometrics |
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Parameter Learning Markov Switching MCMC Econometrics FULOP, Andras YU, Jun Bayesian analysis of bubbles in asset prices |
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We develop a new asset price 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. This latter is allowed to account for possible smooth structural change. 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 better power for detecting bubbles compared to existing alternative procedures. Empirical analysis using price/dividend ratios of S&P500 highlights the advantages of our method. |
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FULOP, Andras YU, Jun |
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FULOP, Andras YU, Jun |
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FULOP, Andras |
title |
Bayesian analysis of bubbles in asset prices |
title_short |
Bayesian analysis of bubbles in asset prices |
title_full |
Bayesian analysis of bubbles in asset prices |
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Bayesian analysis of bubbles in asset prices |
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Bayesian analysis of bubbles in asset prices |
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bayesian analysis of bubbles in asset prices |
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Institutional Knowledge at Singapore Management University |
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2017 |
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https://ink.library.smu.edu.sg/soe_research/2209 https://ink.library.smu.edu.sg/context/soe_research/article/3208/viewcontent/econometrics_05_00047_pvoa.pdf |
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