Bayesian Econometrics
Since the advent of Markov chain Monte Carlo (MCMC) methods in the early 1990s, Bayesian methods have been proposed for a large and growing number of applications. One of the main advantages of Bayesian inference is the ability to deal with many different sources of uncertainty, including data, mode...
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Physical Description: | 1 electronic resource (146 p.) |
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Bernardi, Mauro edt Bayesian Econometrics Basel, Switzerland MDPI - Multidisciplinary Digital Publishing Institute 2020 1 electronic resource (146 p.) text txt rdacontent computer c rdamedia online resource cr rdacarrier Open access Unrestricted online access star Since the advent of Markov chain Monte Carlo (MCMC) methods in the early 1990s, Bayesian methods have been proposed for a large and growing number of applications. One of the main advantages of Bayesian inference is the ability to deal with many different sources of uncertainty, including data, models, parameters and parameter restriction uncertainties, in a unified and coherent framework. This book contributes to this literature by collecting a set of carefully evaluated contributions that are grouped amongst two topics in financial economics. The first three papers refer to macro-finance issues for real economy, including the elasticity of factor substitution (ES) in the Cobb–Douglas production function, the effects of government public spending components, and quantitative easing, monetary policy and economics. The last three contributions focus on cryptocurrency and stock market predictability. All arguments are central ingredients in the current economic discussion and their importance has only been further emphasized by the COVID-19 crisis. English Technology: general issues bicssc unconventional monetary policy transmission channel Bayesian TVP-SV-VAR Bayesian econometrics portfolio choice sentiments stock market predictability cryptocurrency Bitcoin forecasting point forecast density forecast dynamic model averaging dynamic model selection forgetting factors military and civilian spending DSGE model fiscal policy monetary policy Bayesian estimation Bayesian VAR density forecasting time-varying volatility ES CES function Bayesian nonlinear mixed-effects regression MCMC methods macroeconomic and financial applications 3-03943-785-2 3-03943-786-0 Grassi, Stefano edt Ravazzolo, Francesco edt Bernardi, Mauro oth Grassi, Stefano oth Ravazzolo, Francesco oth |
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English |
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Grassi, Stefano Ravazzolo, Francesco Bernardi, Mauro Grassi, Stefano Ravazzolo, Francesco |
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Grassi, Stefano Ravazzolo, Francesco Bernardi, Mauro Grassi, Stefano Ravazzolo, Francesco |
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HerausgeberIn HerausgeberIn Sonstige Sonstige Sonstige |
title |
Bayesian Econometrics |
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Bayesian Econometrics |
title_full |
Bayesian Econometrics |
title_fullStr |
Bayesian Econometrics |
title_full_unstemmed |
Bayesian Econometrics |
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Bayesian Econometrics |
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Bayesian Econometrics |
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bayesian econometrics |
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MDPI - Multidisciplinary Digital Publishing Institute |
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2020 |
physical |
1 electronic resource (146 p.) |
isbn |
3-03943-785-2 3-03943-786-0 |
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Not Illustrated |
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Bayesian Econometrics |
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