Dealing with Data: An Empirical Analysis of Bayesian Black-Litterman Model Extensions
Abstract
Portfolio Optimization is a common financial econometric application that draws on
various types of statistical methods. The goal of portfolio optimization is to determine
the ideal allocation of assets to a given set of possible investments. Many optimization
models use classical statistical methods, which do not fully account for estimation
risk in historical returns or the stochastic nature of future returns. By using a
fully Bayesian analysis, however, this analysis is able to account for these aspects
and also incorporate a complete information set as a basis for the investment decision.
The information set is made up of the market equilibrium, an investor/expert’s personal
views, and the historical data on the assets in question. All of these inputs are
quantified and Bayesian methods are used to combine them into a succinct portfolio
optimization model. For the empirical analysis, the model is tested using monthly
re- turn data on stock indices from Australia, Canada, France, Germany, Japan, the
U.K. and the U.S.
Description
Economics Honors Thesis
Type
Honors thesisDepartment
EconomicsPermalink
https://hdl.handle.net/10161/9583Provenance
Fixed typo in Title field at request of author--mjf33 2018-06-08
Citation
Roeder, Daniel (2015). Dealing with Data: An Empirical Analysis of Bayesian Black-Litterman Model Extensions.
Honors thesis, Duke University. Retrieved from https://hdl.handle.net/10161/9583.Collections
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