pith. sign in

A Meta-Transfer Objective for Learning to Disentangle Causal Mechanisms

2 Pith papers cite this work. Polarity classification is still indexing.

2 Pith papers citing it
abstract

We propose to meta-learn causal structures based on how fast a learner adapts to new distributions arising from sparse distributional changes, e.g. due to interventions, actions of agents and other sources of non-stationarities. We show that under this assumption, the correct causal structural choices lead to faster adaptation to modified distributions because the changes are concentrated in one or just a few mechanisms when the learned knowledge is modularized appropriately. This leads to sparse expected gradients and a lower effective number of degrees of freedom needing to be relearned while adapting to the change. It motivates using the speed of adaptation to a modified distribution as a meta-learning objective. We demonstrate how this can be used to determine the cause-effect relationship between two observed variables. The distributional changes do not need to correspond to standard interventions (clamping a variable), and the learner has no direct knowledge of these interventions. We show that causal structures can be parameterized via continuous variables and learned end-to-end. We then explore how these ideas could be used to also learn an encoder that would map low-level observed variables to unobserved causal variables leading to faster adaptation out-of-distribution, learning a representation space where one can satisfy the assumptions of independent mechanisms and of small and sparse changes in these mechanisms due to actions and non-stationarities.

citation-role summary

background 1 baseline 1

citation-polarity summary

years

2026 1 2025 1

verdicts

UNVERDICTED 2

representative citing papers

TabICL: A Tabular Foundation Model for In-Context Learning on Large Data

cs.LG · 2025-02-08 · unverdicted · novelty 6.0

TabICL scales in-context learning to large tabular data via column-then-row attention for row embeddings followed by a transformer, matching TabPFNv2 speed and performance while outperforming it and CatBoost on datasets over 10K samples.

citing papers explorer

Showing 2 of 2 citing papers.