AIMay 17, 2023

A Survey on Causal Discovery: Theory and Practice

arXiv:2305.10032v2136 citations
Originality Synthesis-oriented
AI Analysis

It offers a comprehensive review for researchers and practitioners in causality, but is incremental as a survey.

This paper surveys recent advancements in causal discovery, providing a unified overview of algorithms, tools, and data, and presents real-world applications to demonstrate their utility.

Understanding the laws that govern a phenomenon is the core of scientific progress. This is especially true when the goal is to model the interplay between different aspects in a causal fashion. Indeed, causal inference itself is specifically designed to quantify the underlying relationships that connect a cause to its effect. Causal discovery is a branch of the broader field of causality in which causal graphs are recovered from data (whenever possible), enabling the identification and estimation of causal effects. In this paper, we explore recent advancements in causal discovery in a unified manner, provide a consistent overview of existing algorithms developed under different settings, report useful tools and data, present real-world applications to understand why and how these methods can be fruitfully exploited.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes