Discovering causal structures in binary exclusive-or skew acyclic models

02/14/2012
by   Takanori Inazumi, et al.
0

Discovering causal relations among observed variables in a given data set is a main topic in studies of statistics and artificial intelligence. Recently, some techniques to discover an identifiable causal structure have been explored based on non-Gaussianity of the observed data distribution. However, most of these are limited to continuous data. In this paper, we present a novel causal model for binary data and propose a new approach to derive an identifiable causal structure governing the data based on skew Bernoulli distributions of external noise. Experimental evaluation shows excellent performance for both artificial and real world data sets.

READ FULL TEXT
research
01/22/2014

Causal Discovery in a Binary Exclusive-or Skew Acyclic Model: BExSAM

Discovering causal relations among observed variables in a given data se...
research
09/15/2017

Learning Functional Causal Models with Generative Neural Networks

We introduce a new approach to functional causal modeling from observati...
research
09/19/2020

Causal Discovery with Multi-Domain LiNGAM for Latent Factors

Discovering causal structures among latent factors from observed data is...
research
01/22/2014

Identifiability of an Integer Modular Acyclic Additive Noise Model and its Causal Structure Discovery

The notion of causality is used in many situations dealing with uncertai...
research
06/12/2023

Mitigating Prior Errors in Causal Structure Learning: Towards LLM driven Prior Knowledge

Causal structure learning, a prominent technique for encoding cause and ...
research
06/05/2020

Parallel ensemble methods for causal direction inference

Inferring the causal direction between two variables from their observat...
research
04/03/2019

OpBerg: Discovering causal sentences using optimal alignments

The biological literature is rich with sentences that describe causal re...

Please sign up or login with your details

Forgot password? Click here to reset