Enforcing and Discovering Structure in Machine Learning

11/26/2021
by   Francesco Locatello, et al.
0

The world is structured in countless ways. It may be prudent to enforce corresponding structural properties to a learning algorithm's solution, such as incorporating prior beliefs, natural constraints, or causal structures. Doing so may translate to faster, more accurate, and more flexible models, which may directly relate to real-world impact. In this dissertation, we consider two different research areas that concern structuring a learning algorithm's solution: when the structure is known and when it has to be discovered.

READ FULL TEXT
research
07/01/2023

Causal Structure Learning by Using Intersection of Markov Blankets

In this paper, we introduce a novel causal structure learning algorithm ...
research
07/04/2022

Invariant and Transportable Representations for Anti-Causal Domain Shifts

Real-world classification problems must contend with domain shift, the (...
research
07/18/2022

A Meta-Reinforcement Learning Algorithm for Causal Discovery

Causal discovery is a major task with the utmost importance for machine ...
research
07/18/2020

Strudel: Learning Structured-Decomposable Probabilistic Circuits

Probabilistic circuits (PCs) represent a probability distribution as a c...
research
02/27/2019

Atomistic structure learning

One endeavour of modern physical chemistry is to use bottom-up approache...
research
06/12/2023

Mitigating Prior Errors in Causal Structure Learning: Towards LLM driven Prior Knowledge

Causal structure learning, a prominent technique for encoding cause and ...

Please sign up or login with your details

Forgot password? Click here to reset