Continuous Bayesian Model Selection for Multivariate Causal Discovery
- URL: http://arxiv.org/abs/2411.10154v1
- Date: Fri, 15 Nov 2024 12:55:05 GMT
- Title: Continuous Bayesian Model Selection for Multivariate Causal Discovery
- Authors: Anish Dhir, Ruby Sedgwick, Avinash Kori, Ben Glocker, Mark van der Wilk,
- Abstract summary: Current causal discovery approaches require restrictive model assumptions or assume access to interventional data to ensure structure identifiability.
Recent work has shown that Bayesian model selection can greatly improve accuracy by exchanging restrictive modelling for more flexible assumptions.
We demonstrate the competitiveness of our approach on both synthetic and real-world datasets.
- Score: 22.945274948173182
- License:
- Abstract: Current causal discovery approaches require restrictive model assumptions or assume access to interventional data to ensure structure identifiability. These assumptions often do not hold in real-world applications leading to a loss of guarantees and poor accuracy in practice. Recent work has shown that, in the bivariate case, Bayesian model selection can greatly improve accuracy by exchanging restrictive modelling for more flexible assumptions, at the cost of a small probability of error. We extend the Bayesian model selection approach to the important multivariate setting by making the large discrete selection problem scalable through a continuous relaxation. We demonstrate how for our choice of Bayesian non-parametric model, the Causal Gaussian Process Conditional Density Estimator (CGP-CDE), an adjacency matrix can be constructed from the model hyperparameters. This adjacency matrix is then optimised using the marginal likelihood and an acyclicity regulariser, outputting the maximum a posteriori causal graph. We demonstrate the competitiveness of our approach on both synthetic and real-world datasets, showing it is possible to perform multivariate causal discovery without infeasible assumptions using Bayesian model selection.
Related papers
- Robust Gaussian Processes via Relevance Pursuit [17.39376866275623]
We propose and study a GP model that achieves robustness against sparse outliers by inferring data-point-specific noise levels.
We show, surprisingly, that the model can be parameterized such that the associated log marginal likelihood is strongly concave in the data-point-specific noise variances.
arXiv Detail & Related papers (2024-10-31T17:59:56Z) - Calibrating Neural Simulation-Based Inference with Differentiable
Coverage Probability [50.44439018155837]
We propose to include a calibration term directly into the training objective of the neural model.
By introducing a relaxation of the classical formulation of calibration error we enable end-to-end backpropagation.
It is directly applicable to existing computational pipelines allowing reliable black-box posterior inference.
arXiv Detail & Related papers (2023-10-20T10:20:45Z) - Stable Training of Probabilistic Models Using the Leave-One-Out Maximum Log-Likelihood Objective [0.7373617024876725]
Kernel density estimation (KDE) based models are popular choices for this task, but they fail to adapt to data regions with varying densities.
An adaptive KDE model is employed to circumvent this, where each kernel in the model has an individual bandwidth.
A modified expectation-maximization algorithm is employed to accelerate the optimization speed reliably.
arXiv Detail & Related papers (2023-10-05T14:08:42Z) - Bivariate Causal Discovery using Bayesian Model Selection [11.726586969589]
We show how to incorporate causal assumptions within the Bayesian framework.
This enables us to construct models with realistic assumptions.
We then outperform previous methods on a wide range of benchmark datasets.
arXiv Detail & Related papers (2023-06-05T14:51:05Z) - A Variational Inference Approach to Inverse Problems with Gamma
Hyperpriors [60.489902135153415]
This paper introduces a variational iterative alternating scheme for hierarchical inverse problems with gamma hyperpriors.
The proposed variational inference approach yields accurate reconstruction, provides meaningful uncertainty quantification, and is easy to implement.
arXiv Detail & Related papers (2021-11-26T06:33:29Z) - Modeling the Second Player in Distributionally Robust Optimization [90.25995710696425]
We argue for the use of neural generative models to characterize the worst-case distribution.
This approach poses a number of implementation and optimization challenges.
We find that the proposed approach yields models that are more robust than comparable baselines.
arXiv Detail & Related papers (2021-03-18T14:26:26Z) - Gaussian Process Latent Class Choice Models [7.992550355579791]
We present a non-parametric class of probabilistic machine learning within discrete choice models (DCMs)
The proposed model would assign individuals probabilistically to behaviorally homogeneous clusters (latent classes) using GPs.
The model is tested on two different mode choice applications and compared against different LCCM benchmarks.
arXiv Detail & Related papers (2021-01-28T19:56:42Z) - On Statistical Efficiency in Learning [37.08000833961712]
We address the challenge of model selection to strike a balance between model fitting and model complexity.
We propose an online algorithm that sequentially expands the model complexity to enhance selection stability and reduce cost.
Experimental studies show that the proposed method has desirable predictive power and significantly less computational cost than some popular methods.
arXiv Detail & Related papers (2020-12-24T16:08:29Z) - Identification of Probability weighted ARX models with arbitrary domains [75.91002178647165]
PieceWise Affine models guarantees universal approximation, local linearity and equivalence to other classes of hybrid system.
In this work, we focus on the identification of PieceWise Auto Regressive with eXogenous input models with arbitrary regions (NPWARX)
The architecture is conceived following the Mixture of Expert concept, developed within the machine learning field.
arXiv Detail & Related papers (2020-09-29T12:50:33Z) - Efficient Ensemble Model Generation for Uncertainty Estimation with
Bayesian Approximation in Segmentation [74.06904875527556]
We propose a generic and efficient segmentation framework to construct ensemble segmentation models.
In the proposed method, ensemble models can be efficiently generated by using the layer selection method.
We also devise a new pixel-wise uncertainty loss, which improves the predictive performance.
arXiv Detail & Related papers (2020-05-21T16:08:38Z) - Decision-Making with Auto-Encoding Variational Bayes [71.44735417472043]
We show that a posterior approximation distinct from the variational distribution should be used for making decisions.
Motivated by these theoretical results, we propose learning several approximate proposals for the best model.
In addition to toy examples, we present a full-fledged case study of single-cell RNA sequencing.
arXiv Detail & Related papers (2020-02-17T19:23:36Z)
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.