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1
- Identifiability Background
2
- Structural Causal Models
3
- Interventions
4
- Identifiability in Causality
5
- Learning From Unknown-Target Interventions
6
- Learning in the Presence of Unobserved Variables
7
- Treks
8
- Latent Factor Causal Models LFCMs
9
- Causal Disentanglement Models
10
- Linear Causal Disentanglement via Intervention
11
- Ongoing Work
12
- Q+A
Description:
Explore the concept of identifiability in causal models and its applications to Perturb-seq data in this comprehensive lecture by Chandler Squires from Valence Labs. Delve into structural causal models, interventions, and learning techniques for unknown-target interventions and unobserved variables. Examine latent factor causal models, causal disentanglement models, and linear causal disentanglement via intervention. Gain insights into ongoing work in the field and participate in a Q&A session. Discover how these advanced concepts are applied to learning gene regulatory networks from Perturb-seq data and predicting the effects of novel perturbations.

Identifiability of Causal Models and Applications to Perturb-Seq Data

Valence Labs
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