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Methods and tools for causal discovery and causal inference

Ana Rita Nogueira, Andrea Pugnana, Salvatore Ruggieri, Dino Pedreschi, João Gama

2022Wiley Interdisciplinary Reviews Data Mining and Knowledge Discovery193 citationsDOIOpen Access PDF

Abstract

Abstract Causality is a complex concept, which roots its developments across several fields, such as statistics, economics, epidemiology, computer science, and philosophy. In recent years, the study of causal relationships has become a crucial part of the Artificial Intelligence community, as causality can be a key tool for overcoming some limitations of correlation‐based Machine Learning systems. Causality research can generally be divided into two main branches, that is, causal discovery and causal inference. The former focuses on obtaining causal knowledge directly from observational data. The latter aims to estimate the impact deriving from a change of a certain variable over an outcome of interest. This article aims at covering several methodologies that have been developed for both tasks. This survey does not only focus on theoretical aspects. But also provides a practical toolkit for interested researchers and practitioners, including software, datasets, and running examples. This article is categorized under: Algorithmic Development > Causality Discovery Fundamental Concepts of Data and Knowledge > Explainable AI Technologies > Machine Learning

Topics & Concepts

Causal inferenceCausality (physics)Computer scienceData scienceInferenceCausal modelArtificial intelligenceObservational studyOutcome (game theory)Key (lock)Causal reasoningFocus (optics)Machine learningManagement scienceEconometricsCognitionPsychologyMathematicsStatisticsMathematical economicsQuantum mechanicsEconomicsOpticsNeuroscienceComputer securityPhysicsBayesian Modeling and Causal InferenceAdvanced Causal Inference TechniquesStatistical Methods and Inference
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