Projects and TPs developed at Graphical Computation at FEUP in 2020/2021
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Updated
Sep 23, 2022 - HTML
Projects and TPs developed at Graphical Computation at FEUP in 2020/2021
This is the code for our publication Inferring Latent States in a Network Influenced by Neighbor Activities: An Undirected Generative Approach, IEEE International Conference on Acoustics, Speech and Signal Processing, New Orleans, LA, 2017
Principal Component Analysis, PCA, Gaussian Markov Random Fields, Graphical model,
Ensemble of Trees of Pairwise Copulas for extremes
Assignments for the Probabilistic Graphical Models course (October - December 2018)
A re-implementation of a paper which uses graphical models for transferring style between images as my final project for course Graphical Models in Machine Learning, spring 2017.
change point detection and network inference for piecewise stationary data
Partial correlation (w. shrinkage estimation) networks and subsequent network analysis
Repository for tasks like Representation, Inference and Learning of Probabilistic Graphical Models.
Implementation of Hidden Markov model
Code for A Weighted Mini-Bucket Bound for Solving Influence Diagrams (UAI 2019) and Join-Graph Decomposition Bounds for Influence Diagrams (UAI 2018).
Package implementing Bayesian Spike-and-Slab Joint Graphical Lasso
This package implements the estimation of a topological ordering for a Linear Structural Equation Model (SEM) with non-Gaussian errors, as outlined in Ruiz et. al (2022+).
Markov Chain Monte Carlo: Foundations & Applications
Image labeling with graphical models
Projects from the Machine learning 2 Course on ICA, Inference in Graphical models, EM algorithm and VAE (October, 2020).
This is the repository for the C++ code of Bayesian Graphical Regression with Birth-Death Markov Process by Yuen et al.
Presentations I have prepared for different courses and lab seminar throughout my PhD
implementation of some inference and learning algorithms in probabilistic graphical model
Tutorial for using Bayesian joint spike-and-slab graphical lasso in R
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