Towards Causal Representation Learning with Observable Sources as Auxiliaries
- URL: http://arxiv.org/abs/2509.19058v1
- Date: Tue, 23 Sep 2025 14:22:39 GMT
- Title: Towards Causal Representation Learning with Observable Sources as Auxiliaries
- Authors: Kwonho Kim, Heejeong Nam, Inwoo Hwang, Sanghack Lee,
- Abstract summary: Causal representation learning seeks to recover latent factors that generate observational data through a mixing function.<n>We introduce a framework of observable sources being auxiliaries, serving as effective conditioning variables.<n>Our main results show that one can identify entire latent variables up to subspace-wise transformations.
- Score: 15.361097817317429
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Causal representation learning seeks to recover latent factors that generate observational data through a mixing function. Needing assumptions on latent structures or relationships to achieve identifiability in general, prior works often build upon conditional independence given known auxiliary variables. However, prior frameworks limit the scope of auxiliary variables to be external to the mixing function. Yet, in some cases, system-driving latent factors can be easily observed or extracted from data, possibly facilitating identification. In this paper, we introduce a framework of observable sources being auxiliaries, serving as effective conditioning variables. Our main results show that one can identify entire latent variables up to subspace-wise transformations and permutations using volume-preserving encoders. Moreover, when multiple known auxiliary variables are available, we offer a variable-selection scheme to choose those that maximize recoverability of the latent factors given knowledge of the latent causal graph. Finally, we demonstrate the effectiveness of our framework through experiments on synthetic graph and image data, thereby extending the boundaries of current approaches.
Related papers
- Causal Graph Learning via Distributional Invariance of Cause-Effect Relationship [54.575090553659074]
We develop an algorithm that efficiently uncovers causal relationships with quadratic complexity in the number of observational variables.<n>Our experiments on a varied benchmark of large-scale datasets show superior or equivalent performance compared to existing works.
arXiv Detail & Related papers (2026-02-03T10:26:16Z) - Temporal Latent Variable Structural Causal Model for Causal Discovery under External Interferences [53.308122815325326]
We introduce latent variables to represent unobserved factors that affect the observed data.<n>Specifically, to capture the causal strength and adjacency information, we propose a new temporal latent variable structural causal model.<n>Considering that expert knowledge can provide information about unknown interferences in certain scenarios, we develop a method that facilitates the incorporation of prior knowledge into parameter learning.
arXiv Detail & Related papers (2025-11-13T07:10:10Z) - Nonparametric Partial Disentanglement via Mechanism Sparsity: Sparse
Actions, Interventions and Sparse Temporal Dependencies [58.179981892921056]
This work introduces a novel principle for disentanglement we call mechanism sparsity regularization.
We propose a representation learning method that induces disentanglement by simultaneously learning the latent factors.
We show that the latent factors can be recovered by regularizing the learned causal graph to be sparse.
arXiv Detail & Related papers (2024-01-10T02:38:21Z) - A Versatile Causal Discovery Framework to Allow Causally-Related Hidden
Variables [28.51579090194802]
We introduce a novel framework for causal discovery that accommodates the presence of causally-related hidden variables almost everywhere in the causal network.
We develop a Rank-based Latent Causal Discovery algorithm, RLCD, that can efficiently locate hidden variables, determine their cardinalities, and discover the entire causal structure over both measured and hidden ones.
Experimental results on both synthetic and real-world personality data sets demonstrate the efficacy of the proposed approach in finite-sample cases.
arXiv Detail & Related papers (2023-12-18T07:57:39Z) - Approximating Counterfactual Bounds while Fusing Observational, Biased
and Randomised Data Sources [64.96984404868411]
We address the problem of integrating data from multiple, possibly biased, observational and interventional studies.
We show that the likelihood of the available data has no local maxima.
We then show how the same approach can address the general case of multiple datasets.
arXiv Detail & Related papers (2023-07-31T11:28:24Z) - Identifiability Guarantees for Causal Disentanglement from Soft
Interventions [26.435199501882806]
Causal disentanglement aims to uncover a representation of data using latent variables that are interrelated through a causal model.
In this paper, we focus on the scenario where unpaired observational and interventional data are available, with each intervention changing the mechanism of a latent variable.
When the causal variables are fully observed, statistically consistent algorithms have been developed to identify the causal model under faithfulness assumptions.
arXiv Detail & Related papers (2023-07-12T15:39:39Z) - Interventional Causal Representation Learning [75.18055152115586]
Causal representation learning seeks to extract high-level latent factors from low-level sensory data.
Can interventional data facilitate causal representation learning?
We show that interventional data often carries geometric signatures of the latent factors' support.
arXiv Detail & Related papers (2022-09-24T04:59:03Z) - Causal Discovery in Linear Structural Causal Models with Deterministic
Relations [27.06618125828978]
We focus on the task of causal discovery form observational data.
We derive a set of necessary and sufficient conditions for unique identifiability of the causal structure.
arXiv Detail & Related papers (2021-10-30T21:32:42Z) - Discovering Latent Causal Variables via Mechanism Sparsity: A New
Principle for Nonlinear ICA [81.4991350761909]
Independent component analysis (ICA) refers to an ensemble of methods which formalize this goal and provide estimation procedure for practical application.
We show that the latent variables can be recovered up to a permutation if one regularizes the latent mechanisms to be sparse.
arXiv Detail & Related papers (2021-07-21T14:22:14Z) - Disentangling Observed Causal Effects from Latent Confounders using
Method of Moments [67.27068846108047]
We provide guarantees on identifiability and learnability under mild assumptions.
We develop efficient algorithms based on coupled tensor decomposition with linear constraints to obtain scalable and guaranteed solutions.
arXiv Detail & Related papers (2021-01-17T07:48:45Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.