Likelihood-Free Overcomplete ICA and Applications in Causal Discovery

09/04/2019
by   Chenwei Ding, et al.
0

Causal discovery witnessed significant progress over the past decades. In particular, many recent causal discovery methods make use of independent, non-Gaussian noise to achieve identifiability of the causal models. Existence of hidden direct common causes, or confounders, generally makes causal discovery more difficult; whenever they are present, the corresponding causal discovery algorithms can be seen as extensions of overcomplete independent component analysis (OICA). However, existing OICA algorithms usually make strong parametric assumptions on the distribution of independent components, which may be violated on real data, leading to sub-optimal or even wrong solutions. In addition, existing OICA algorithms rely on the Expectation Maximization (EM) procedure that requires computationally expensive inference of the posterior distribution of independent components. To tackle these problems, we present a Likelihood-Free Overcomplete ICA algorithm (LFOICA) that estimates the mixing matrix directly by back-propagation without any explicit assumptions on the density function of independent components. Thanks to its computational efficiency, the proposed method makes a number of causal discovery procedures much more practically feasible. For illustrative purposes, we demonstrate the computational efficiency and efficacy of our method in two causal discovery tasks on both synthetic and real data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/27/2022

MissDAG: Causal Discovery in the Presence of Missing Data with Continuous Additive Noise Models

State-of-the-art causal discovery methods usually assume that the observ...
research
10/20/2022

On the pitfalls of Gaussian likelihood scoring for causal discovery

We consider likelihood score based methods for causal discovery in struc...
research
02/16/2023

Local Causal Discovery for Estimating Causal Effects

Even when the causal graph underlying our data is unknown, we can use ob...
research
10/22/2019

Leveraging directed causal discovery to detect latent common causes

The discovery of causal relationships is a fundamental problem in scienc...
research
09/12/2022

Meta-learning Causal Discovery

Causal discovery (CD) from time-varying data is important in neuroscienc...
research
01/24/2019

Overcomplete Independent Component Analysis via SDP

We present a novel algorithm for overcomplete independent components ana...
research
01/14/2022

Reliable Causal Discovery with Improved Exact Search and Weaker Assumptions

Many of the causal discovery methods rely on the faithfulness assumption...

Please sign up or login with your details

Forgot password? Click here to reset