Invariant Gaussian Process Latent Variable Models and Application in Causal Discovery

03/15/2012
by   Kun Zhang, et al.
0

In nonlinear latent variable models or dynamic models, if we consider the latent variables as confounders (common causes), the noise dependencies imply further relations between the observed variables. Such models are then closely related to causal discovery in the presence of nonlinear confounders, which is a challenging problem. However, generally in such models the observation noise is assumed to be independent across data dimensions, and consequently the noise dependencies are ignored. In this paper we focus on the Gaussian process latent variable model (GPLVM), from which we develop an extended model called invariant GPLVM (IGPLVM), which can adapt to arbitrary noise covariances. With the Gaussian process prior put on a particular transformation of the latent nonlinear functions, instead of the original ones, the algorithm for IGPLVM involves almost the same computational loads as that for the original GPLVM. Besides its potential application in causal discovery, IGPLVM has the advantage that its estimated latent nonlinear manifold is invariant to any nonsingular linear transformation of the data. Experimental results on both synthetic and realworld data show its encouraging performance in nonlinear manifold learning and causal discovery.

READ FULL TEXT
research
10/10/2020

Generalized Independent Noise Condition for Estimating Linear Non-Gaussian Latent Variable Graphs

Causal discovery aims to recover causal structures or models underlying ...
research
07/22/2016

Latent Variable Discovery Using Dependency Patterns

The causal discovery of Bayesian networks is an active and important res...
research
01/29/2020

TPLVM: Portfolio Construction by Student's t-process Latent Variable Model

Optimal asset allocation is a key topic in modern finance theory. To rea...
research
07/12/2022

Latent Variable Models for Bayesian Causal Discovery

Learning predictors that do not rely on spurious correlations involves b...
research
07/26/2018

Entropic Latent Variable Discovery

We consider the problem of discovering the simplest latent variable that...
research
09/18/2020

Causal Clustering for 1-Factor Measurement Models on Data with Various Types

The tetrad constraint is a condition of which the satisfaction signals a...
research
02/14/2012

Sparse matrix-variate Gaussian process blockmodels for network modeling

We face network data from various sources, such as protein interactions ...

Please sign up or login with your details

Forgot password? Click here to reset