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New York University (NYU)

James-Stein Estimation of Minimum Variance Portfolios - BQE Lecture Series

New York University (NYU) via YouTube

Overview

Explore James-Stein estimation of minimum variance portfolios in this NYU Brooklyn Quant Experience lecture by Alex Shkolnik, Assistant Professor at UC Santa Barbara. Delve into the Marks Optimization Enigma, spiked covariance model, and Markowitz Enigma. Examine optimization bias, future work in optimization bias-free PCA, and key assumptions. Learn about data matrix analysis, bias correction techniques, and the recipe for boundedness. Investigate numerical evidence, beta adjustments, and the sign paradox. Understand shrinkage formulas, the shrinkage paradox, and James-time estimators. Conclude with a summary of mean squared error and angles in portfolio optimization.

Syllabus

Introduction
Marks Optimization Enigma
Spiked Covariance Model
Markowitz Enigma
Optimization Bias
Future Work
Optimization Bias Free PCA
Assumptions
Data Matrix
Correction for Bias
Recipe
Boundedness
Numerical Evidence
Beta Adjustments
The Sign Paradox
shrinkage formula
shrinkage paradox
jamestime estimator
summary
mean squared error
angles

Taught by

NYU Tandon School of Engineering

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