tawny-package |
Clean Covariance Matrices Using Random Matrix Theory and Shrinkage Estimators for Portfolio Optimization |
cor.clean |
Remove noise from a correlation matrix using RMT to identify the noise |
cor.empirical |
Remove noise from a correlation matrix using RMT to identify the noise |
cor.mean |
Shrink the covariance matrix towards some global mean |
cov.prior.cc |
Shrink the covariance matrix towards some global mean |
cov.prior.identity |
Shrink the covariance matrix towards some global mean |
cov.sample |
Shrink the covariance matrix towards some global mean |
cov.shrink |
Shrink the covariance matrix towards some global mean |
cov_sample |
Shrink the covariance matrix towards some global mean |
cov_shrink |
Shrink the covariance matrix towards some global mean |
deform |
Remove noise from a correlation matrix using RMT to identify the noise |
denoise |
Remove noise from a correlation matrix using RMT to identify the noise |
Denoiser |
Remove noise from a correlation matrix using RMT to identify the noise |
divergence |
Measure the divergence and stability between two correlation matrices |
divergence.kl |
Measure the divergence and stability between two correlation matrices |
divergence.stability |
Measure the divergence and stability between two correlation matrices |
divergence_lim |
Measure the divergence and stability between two correlation matrices |
EmpiricalDenoiser |
Remove noise from a correlation matrix using RMT to identify the noise |
ensure |
Utility functions for creating portfolios of returns and other functions |
getIndexComposition |
Utility functions for creating portfolios of returns and other functions |
getPortfolioReturns |
Utility functions for creating portfolios of returns and other functions |
KullbackLeibler |
Measure the divergence and stability between two correlation matrices |
normalize |
Remove noise from a correlation matrix using RMT to identify the noise |
optimizePortfolio |
Optimize a portfolio using the specified correlation filter |
p.optimize |
Optimize a portfolio using the specified correlation filter |
plotDivergenceLimit.kl |
Measure the divergence and stability between two correlation matrices |
RandomMatrixDenoiser |
Remove noise from a correlation matrix using RMT to identify the noise |
SampleDenoiser |
Remove noise from a correlation matrix using RMT to identify the noise |
shrinkage.c |
Shrink the covariance matrix towards some global mean |
shrinkage.intensity |
Shrink the covariance matrix towards some global mean |
shrinkage.p |
Shrink the covariance matrix towards some global mean |
shrinkage.r |
Shrink the covariance matrix towards some global mean |
ShrinkageDenoiser |
Remove noise from a correlation matrix using RMT to identify the noise |
sp500 |
A (mostly complete) subset of the SP500 with 250 data points |
sp500.subset |
A subset of the SP500 with 200 data points |
stability_lim |
Measure the divergence and stability between two correlation matrices |
tawny |
Clean Covariance Matrices Using Random Matrix Theory and Shrinkage Estimators for Portfolio Optimization |