R package for adaptive correlation and covariance matrix shrinkage.
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Updated
Jan 23, 2019 - R
R package for adaptive correlation and covariance matrix shrinkage.
Experiments with experimental rule-based models to go along with imodels.
This repository contains data and code relative to the manuscript "A large covariance matrix estimator under intermediate spikiness regimes" by Matteo Farnè and Angela Montanari (https://arxiv.org/abs/1711.08950).
Code for the paper E. Raninen and E. Ollila, "Bias Adjusted Sign Covariance Matrix," in IEEE Signal Processing Letters, vol. 29, pp. 339-343, 2022, doi: 10.1109/LSP.2021.3134940.
Code for the paper E. Raninen, D. E. Tyler and E. Ollila, "Linear pooling of sample covariance matrices," in IEEE Transactions on Signal Processing, Vol 70, pp. 659-672, 2022, doi: 10.1109/TSP.2021.3139207.
Horseshoe regression model fitted in PyMC.
A collaborative repository highlighting Bayesian autoregressive analysis with extensions. It is prepared by the students of Macroeconometrics at the University of Melbourne.
Code for the paper E. Raninen and E. Ollila, “Coupled regularized sample covariance matrix estimator for multiple classes,” in IEEE Transactions on Signal Processing, vol. 69, pp. 5681–5692, 2021, doi: 10.1109/TSP.2021.3118546.
My Master's thesis on Bayesian Classification with Regularized Gaussian Models
Deformable lattice Boltzmann method for diffusion in 1D moving domains
Introduction to Data Mining
Sliding Filter for AWGN Denoising
Word Enrichment Analysis using VEctor Representations
Jackstraw Weighted Shrinkage Methods
R package for Dirichlet adaptive shrinkage and smoothing
Nested Cross-Validation for Bayesian Optimized Linear Regularization
Some code related to our paper Per,Duc,Nes. Detection (2019). The objective is to detect block-exchangeable structures in correlation matrices. For any help, please contact me or leave a comment somewhere. I will be glad to help you.
Base saturation percentage determination using shrinkage method. Due to the multicollinearity issue, we chose shrinkage/penalized/regularized regression. Since, we have small number of samples, we had no luxury of having separate test set of data, so we did iterated k-Fold cross validation.
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