Error Asymmetry in Causal and Anticausal Regression

10/11/2016
by   Patrick Blöbaum, et al.
0

It is generally difficult to make any statements about the expected prediction error in an univariate setting without further knowledge about how the data were generated. Recent work showed that knowledge about the real underlying causal structure of a data generation process has implications for various machine learning settings. Assuming an additive noise and an independence between data generating mechanism and its input, we draw a novel connection between the intrinsic causal relationship of two variables and the expected prediction error. We formulate the theorem that the expected error of the true data generating function as prediction model is generally smaller when the effect is predicted from its cause and, on the contrary, greater when the cause is predicted from its effect. The theorem implies an asymmetry in the error depending on the prediction direction. This is further corroborated with empirical evaluations in artificial and real-world data sets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/19/2018

Analysis of Cause-Effect Inference via Regression Errors

We address the problem of inferring the causal relation between two vari...
research
03/04/2015

Telling cause from effect in deterministic linear dynamical systems

Inferring a cause from its effect using observed time series data is a m...
research
10/15/2021

Causal Identification with Additive Noise Models: Quantifying the Effect of Noise

In recent years, a lot of research has been conducted within the area of...
research
11/22/2022

Variation-based Cause Effect Identification

Mining genuine mechanisms underlying the complex data generation process...
research
12/07/2014

Visual Causal Feature Learning

We provide a rigorous definition of the visual cause of a behavior that ...
research
03/15/2012

Inferring deterministic causal relations

We consider two variables that are related to each other by an invertibl...
research
05/05/2017

Group invariance principles for causal generative models

The postulate of independence of cause and mechanism (ICM) has recently ...

Please sign up or login with your details

Forgot password? Click here to reset