Research on income risk typically treats its proxy—income volatility, the expected magnitude of income changes—as if it were unchanged for an individual over time, the same for everyone at a point in time, or both. In reality, income risk evolves over time, and some people face more of it than others. To model heterogeneity and dynamics in (unobserved) income volatility, we develop a novel semiparametric Bayesian stochastic volatility model. Our Markovian hierarchical Dirichlet process (MHDP) prior augments the recently developed hierarchical Dirichlet process (HDP) prior to accommodate the serial dependence of panel data. We document dynamics and substantial heterogeneity in income volatility
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
A novel for multivariate dynamic panel data analysis with correlated random effects is proposed when...
In a standard model of earnings dynamics, we allow heterogeneous earnings risk to depend on unobserv...
Research on income risk typically treats its proxy—income volatility, the expected magnitude of inco...
Research on income risk typically treats its proxy—income volatility, the expected magnitude of inco...
Recent research has documented a significant rise in the volatility (e.g., expected squared change) ...
Abstract: This paper extends the existing fully parametric Bayesian literature on stochastic volatil...
Abstract. Empirical Bayes methods for Gaussian compound decision problems involving longitudinal dat...
ABSTRACT. Empirical Bayes methods for Gaussian compound decision problems involving longitudinal dat...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
Recent theoretical work has shown the importance of measuring microeconomic uncertainty for models o...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
This paper extends the Bayesian semiparametric stochastic volatility (SV-DPM) model of Jensen and M...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
In this paper I consider a model for the heterogeneity and dynamics of the conditional mean and the ...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
A novel for multivariate dynamic panel data analysis with correlated random effects is proposed when...
In a standard model of earnings dynamics, we allow heterogeneous earnings risk to depend on unobserv...
Research on income risk typically treats its proxy—income volatility, the expected magnitude of inco...
Research on income risk typically treats its proxy—income volatility, the expected magnitude of inco...
Recent research has documented a significant rise in the volatility (e.g., expected squared change) ...
Abstract: This paper extends the existing fully parametric Bayesian literature on stochastic volatil...
Abstract. Empirical Bayes methods for Gaussian compound decision problems involving longitudinal dat...
ABSTRACT. Empirical Bayes methods for Gaussian compound decision problems involving longitudinal dat...
This paper extends the existing fully parametric Bayesian literature on stochastic volatility to all...
Recent theoretical work has shown the importance of measuring microeconomic uncertainty for models o...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
This paper extends the Bayesian semiparametric stochastic volatility (SV-DPM) model of Jensen and M...
This article presents a new way of modeling time-varying volatility. We generalize the usual stochas...
In this paper I consider a model for the heterogeneity and dynamics of the conditional mean and the ...
We develop a Bayesian semiparametric method to estimate a time-varying parameter regression model wi...
A novel for multivariate dynamic panel data analysis with correlated random effects is proposed when...
In a standard model of earnings dynamics, we allow heterogeneous earnings risk to depend on unobserv...