This paper proposes a Near Explosive Random-Coefficient autoregressive model for asset pricing which accommodates both the fundamental asset value and the recurrent presence of autonomous deviations or bubbles. Such a process can be stationary with or without fat tails, unit-root nonstationary or exhibit temporary exponential growth. We develop the asymptotic theory to analyze ordinary least-squares (OLS) estimation. One important theoretical observation is that the estimator distribution in the random coefficient model is qualitatively different from its distribution in the equivalent fixed coefficient model. We conduct recursive and full-sample inference by inverting the asymptotic distribution of the OLS test statistic, a common procedur...
Recent research has proposed using recursive right-tailed unit root tests to date the start and end ...
Noncausal autoregressive models with heavy-tailed errors generate locally explosive processes and th...
We propose new methods for the real-time detection of explosive bubbles in financial time series. Mo...
We propose a near explosive random coefficient autoregressive model (NERC) to obtain predictive prob...
This paper investigates one-step ahead density forecasts of mixed causal-noncausal models. It analys...
Price bubbles in multiple assets are sometimes nearly coincident in occurrence. Such near-coincidenc...
Given the financial and economic damage that can be caused by the collapse of an asset price bubble,...
This paper studies the impact of permanent volatility shifts in the innovation process on the perfor...
In the presence of bubbles, asset prices consist of a fundamental and a bubble component, with the b...
Price bubbles in multiple assets are sometimes nearly coincident in occurrence. Such near-coincidenc...
It is common knowledge that the more prices deviate from fundamentals, the more likely it is for pri...
This study considers state of the art subset selection and shrinkage procedures − stepwise regressio...
We propose new methods for the real-time detection of explosive bubbles in financial time series. Mo...
It is very important for investors, market regulators, and policy makers to possess a trustworthy ex...
We present a methodology to identify change-points in financial markets where the governing regime s...
Recent research has proposed using recursive right-tailed unit root tests to date the start and end ...
Noncausal autoregressive models with heavy-tailed errors generate locally explosive processes and th...
We propose new methods for the real-time detection of explosive bubbles in financial time series. Mo...
We propose a near explosive random coefficient autoregressive model (NERC) to obtain predictive prob...
This paper investigates one-step ahead density forecasts of mixed causal-noncausal models. It analys...
Price bubbles in multiple assets are sometimes nearly coincident in occurrence. Such near-coincidenc...
Given the financial and economic damage that can be caused by the collapse of an asset price bubble,...
This paper studies the impact of permanent volatility shifts in the innovation process on the perfor...
In the presence of bubbles, asset prices consist of a fundamental and a bubble component, with the b...
Price bubbles in multiple assets are sometimes nearly coincident in occurrence. Such near-coincidenc...
It is common knowledge that the more prices deviate from fundamentals, the more likely it is for pri...
This study considers state of the art subset selection and shrinkage procedures − stepwise regressio...
We propose new methods for the real-time detection of explosive bubbles in financial time series. Mo...
It is very important for investors, market regulators, and policy makers to possess a trustworthy ex...
We present a methodology to identify change-points in financial markets where the governing regime s...
Recent research has proposed using recursive right-tailed unit root tests to date the start and end ...
Noncausal autoregressive models with heavy-tailed errors generate locally explosive processes and th...
We propose new methods for the real-time detection of explosive bubbles in financial time series. Mo...