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1
Intro
2
Motivation: From single-cell measurements to mechanisms
3
Overview
4
Structural equation models
5
Markov equivalence classes on 3 nodes
6
Interventional Markov equivalence class
7
Causal inference and genomics
8
Multidomain translation & integration using autoencoders
9
Lineage tracing using autoencoders and optimal transport
10
Memorization in autoencoders
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Single-layer fully connected autoencoders
12
Memorization of training images by iteration
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Different interpolating solutions for autoencoders
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Memorization: Storing and retrieving images
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Memorization: Storing and retrieving sequences
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Conclusions
Description:
Explore a comprehensive lecture on the intersection of causal inference, autoencoders, memorization, and gene regulation presented by Caroline Uhler from MIT at the Alan Turing Institute. Delve into the development of a causal inference framework based on observational and interventional data in genomics, and learn about the first provably consistent algorithm for learning causal networks. Discover approaches for integrating different data modalities using autoencoders, and examine the theoretical analysis linking overparameterization to memorization in autoencoders. Gain insights into how overparameterized autoencoders implement associative memory and provide mechanisms for memorization and retrieval of real-valued data. This 42-minute talk covers topics ranging from structural equation models and interventional Markov equivalence classes to multidomain translation, lineage tracing, and the behavior of single-layer fully connected autoencoders.

From Causal Inference to Autoencoders, Memorization & Gene Regulation - Caroline Uhler, MIT

Alan Turing Institute
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