YoVDO

Large-Scale Differentiable Causal Discovery of Factor Graphs - Lecture and Primer

Offered By: Broad Institute via YouTube

Tags

Causal Inference Courses CRISPR Courses

Course Description

Overview

Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only!
Explore cutting-edge research on large-scale causal discovery and factor directed acyclic graphs (f-DAGs) in this comprehensive seminar from the Broad Institute's Models, Inference and Algorithms series. Delve into Romain Lopez's presentation on Differentiable Causal Discovery of Factor Graphs (DCD-FG), a novel approach for analyzing high-dimensional interventional data. Learn about the challenges of causal discovery in large datasets and how f-DAGs can restrict the search space to non-linear low-rank causal interaction models. Discover the theoretical analysis of edge perturbations on f-DAG skeletons and their implications for high-dimensional causal discovery. Additionally, engage with Jiaqi Zhang's primer on causal representation learning of genetic perturbations, exploring identifiability and combinatorial extrapolation in the context of single-cell assays and CRISPR experiments. Gain insights into predicting the effects of unseen intervention combinations and the implementation of causal disentanglement frameworks using autoencoding variational Bayes. This seminar offers valuable knowledge for researchers and practitioners working in causal inference, computational biology, and machine learning.

Syllabus

MIA: Romain Lopez, Large-Scale Differentiable Causal Discovery Factor Graphs; Primer by Jiaqi Zhang


Taught by

Broad Institute

Related Courses

Data Science in Real Life
Johns Hopkins University via Coursera
A Crash Course in Causality: Inferring Causal Effects from Observational Data
University of Pennsylvania via Coursera
Causal Diagrams: Draw Your Assumptions Before Your Conclusions
Harvard University via edX
Causal Inference
Columbia University via Coursera
Causal Inference 2
Columbia University via Coursera