Some presentations on machine learning papers from other authors.
Papers Presented on:
"The Autoencoding Variational Autoencoder" -> autoVAE.pdf
"GraphEDM: A Unified Framework for Machine Learning on Graphs" -> GraphEDM.pdf
"Graphite: Iterative Generative Modeling of Graphs" -> Graphite.pdf
"Bayesian Causal Structural Learning with Zero-Inflated Poisson Bayesian Networks" -> ZIPBN.pdf
"Application of Phylogenetic Networks in Evolutionary Studies" -> PhylogeneticNetworks.pdf
"Fully Bayesian analysis of RNA-seq counts for the detection of gene expression heterosis" -> FullyBayesRNA.pdf
"A hierarchical Bayesian model for single-cell clustering using RNA-sequencing data" -> BasClu.pdf "Amortized Monte Carlo Integration" -> AMCI.pdf
"Surrogate Likelihoods for Variational Annealed Importance Sampling" -> Surrogate_Likelihoods.pdf
Probabilstic Machine Learning: Advanced Topics - Variational Inference -> VI_Talk.pdf
Advanced Data Analysis from an Elementary Point of View (Part III: Causal Inference) -> Causal_Inference_Talk.pdf
deepST.pdf is a presentation about the early stages of my personal work with Graph Neural Networks and Spatial Transcriptomics.