Initial Results for Pairwise Causal Discovery Using Quantitative Information Flow

12/02/2022
by   Felipe Giori, et al.
0

Pairwise Causal Discovery is the task of determining causal, anticausal, confounded or independence relationships from pairs of variables. Over the last few years, this challenging task has promoted not only the discovery of novel machine learning models aimed at solving the task, but also discussions on how learning the causal direction of variables may benefit machine learning overall. In this paper, we show that Quantitative Information Flow (QIF), a measure usually employed for measuring leakages of information from a system to an attacker, shows promising results as features for the task. In particular, experiments with real-world datasets indicate that QIF is statistically tied to the state of the art. Our initial results motivate further inquiries on how QIF relates to causality and what are its limitations.

READ FULL TEXT
research
02/22/2021

Towards Causal Representation Learning

The two fields of machine learning and graphical causality arose and dev...
research
09/12/2022

Meta-learning Causal Discovery

Causal discovery (CD) from time-varying data is important in neuroscienc...
research
06/08/2020

Supervised Whole DAG Causal Discovery

We propose to address the task of causal structure learning from data in...
research
12/21/2022

Interpretability and causal discovery of the machine learning models to predict the production of CBM wells after hydraulic fracturing

Machine learning approaches are widely studied in the production predict...
research
05/26/2016

Discovering Causal Signals in Images

This paper establishes the existence of observable footprints that revea...
research
09/02/2019

Causal Discovery by Kernel Intrinsic Invariance Measure

Reasoning based on causality, instead of association has been considered...
research
11/29/2017

Causality Refined Diagnostic Prediction

Applying machine learning in the health care domain has shown promising ...

Please sign up or login with your details

Forgot password? Click here to reset