CHAPTER 1:<p>The default g-priors predominant in Bayesian Model Averaging tend to over-concentrate posterior mass on a tiny set of models - a feature we denote as 'supermodel effect'. To address it, we propose a 'hyper-g' prior specification, whose data-dependent shrinkage adapts posterior model distributions to data quality. We demonstrate the asymptotic consistency of the hyper-g prior, and its interpretation as a goodness-of-fit indicator. Moreover, we highlight the similarities between hyper-g and 'Empirical Bayes' priors, and introduce closed-form expressions essential to computationally feasibility. The robustness of the hyper-g prior is demonstrated via simulation analysis, and by comparing four vintages of economic growth data.<p><p...
This thesis consists of three empirical chapters that investigate the nature, reasons and consequenc...
Driven by the difficulty to predict the last financial crisis and possible distortion of predictive ...
This thesis covers the application of multifractal processes in modeling financial time series. It ...
The aim of this thesis is to deepen our understanding of new empirical methods, results and implicat...
Given the increasing availability of data and the evolution of computation, there is a growing body...
Given the increasing availability of data and the evolution of computation, there is a growing body...
Given the increasing availability of data and the evolution of computation, there is a growing body...
This master’s thesis tests the capital asset pricing model (CAPM) and the Fama-French 3-factor model...
Purpose: To empirically investigate whether income smoothing creates or destroys value after the ena...
Forecasting is central to economic and financial decision-making. Government institutions and agent...
The essay applies the methodology put forward in Baur (2003) with some modifications and extensions ...
This thesis examines Bayesian inference and its suitability for modern statistical applications. Mot...
Thesis (M.B.A.)--Massachusetts Institute of Technology, Sloan School of Management, 2013.Cataloged f...
A covariance matrix of asset returns plays an important role in modern portfolio analysis and risk m...
This thesis consists of three empirical chapters that investigate the nature, reasons and consequenc...
This thesis consists of three empirical chapters that investigate the nature, reasons and consequenc...
Driven by the difficulty to predict the last financial crisis and possible distortion of predictive ...
This thesis covers the application of multifractal processes in modeling financial time series. It ...
The aim of this thesis is to deepen our understanding of new empirical methods, results and implicat...
Given the increasing availability of data and the evolution of computation, there is a growing body...
Given the increasing availability of data and the evolution of computation, there is a growing body...
Given the increasing availability of data and the evolution of computation, there is a growing body...
This master’s thesis tests the capital asset pricing model (CAPM) and the Fama-French 3-factor model...
Purpose: To empirically investigate whether income smoothing creates or destroys value after the ena...
Forecasting is central to economic and financial decision-making. Government institutions and agent...
The essay applies the methodology put forward in Baur (2003) with some modifications and extensions ...
This thesis examines Bayesian inference and its suitability for modern statistical applications. Mot...
Thesis (M.B.A.)--Massachusetts Institute of Technology, Sloan School of Management, 2013.Cataloged f...
A covariance matrix of asset returns plays an important role in modern portfolio analysis and risk m...
This thesis consists of three empirical chapters that investigate the nature, reasons and consequenc...
This thesis consists of three empirical chapters that investigate the nature, reasons and consequenc...
Driven by the difficulty to predict the last financial crisis and possible distortion of predictive ...
This thesis covers the application of multifractal processes in modeling financial time series. It ...