Publication | Open Access
Nearly Exact Bayesian Estimation of Non-linear No-Arbitrage Term-Structure Models
76
Citations
31
References
2020
Year
EconomicsTerm Structure ModelFinancial EconomicsAsset PricingComputational FinancePosterior DistributionExact Bayesian EstimationBusinessEconometricsDeep Learning TechniquesBayesian EconometricsBayesian MethodsBroad ClassFinanceBayesian Hierarchical Modeling
Abstract We propose a general method for the Bayesian estimation of a very broad class of non-linear no-arbitrage term-structure models. The main innovation we introduce is a computationally efficient method, based on deep learning techniques, for approximating no-arbitrage model-implied bond yields to any desired degree of accuracy. Once the pricing function is approximated, the posterior distribution of model parameters and unobservable state variables can be estimated by standard Markov Chain Monte Carlo methods. As an illustrative example, we apply the proposed techniques to the estimation of a shadow-rate model with a time-varying lower bound and unspanned macroeconomic factors.
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