AIMar 17, 2024

Causality from Bottom to Top: A Survey

arXiv:2403.11219v19 citationsh-index: 5Mach learn
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners across multiple fields, but is incremental as a survey.

This paper surveys the development of causality over five decades, highlighting its differences from other approaches and its interactions with AI and machine learning methods.

Causality has become a fundamental approach for explaining the relationships between events, phenomena, and outcomes in various fields of study. It has invaded various fields and applications, such as medicine, healthcare, economics, finance, fraud detection, cybersecurity, education, public policy, recommender systems, anomaly detection, robotics, control, sociology, marketing, and advertising. In this paper, we survey its development over the past five decades, shedding light on the differences between causality and other approaches, as well as the preconditions for using it. Furthermore, the paper illustrates how causality interacts with new approaches such as Artificial Intelligence (AI), Generative AI (GAI), Machine and Deep Learning, Reinforcement Learning (RL), and Fuzzy Logic. We study the impact of causality on various fields, its contribution, and its interaction with state-of-the-art approaches. Additionally, the paper exemplifies the trustworthiness and explainability of causality models. We offer several ways to evaluate causality models and discuss future directions.

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