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Causal ML: Python package for causal inference machine learning

Yang Zhao, Qing Liu

2022SoftwareX29 citationsDOIOpen Access PDF

Abstract

Causality'' is a complex concept that is based on roots in almost all subject areas and aims to answer the ''why'' question. Causal inference is one of the important branches of causal analysis, which assumes the existence of relationships between variables and attempts to examine and quantify the actual relationships in the available data. Machine learning (ML) and causal inference are two techniques that emerged and developed separately. However, there is now an intersection between these two fields. Causal ML is a Python package that provides a set of uplift modeling and causal inference methods using machine learning algorithms based on recent research. It gives the user a standard interface that lets them estimate conditional average treatment effects (CATE) or individual treatment effects (ITE) based on experimental observational data.

Topics & Concepts

Causal inferencePython (programming language)Computer scienceMachine learningInferenceArtificial intelligenceCausal modelCausality (physics)Intersection (aeronautics)Programming languageEconometricsMathematicsStatisticsQuantum mechanicsAerospace engineeringPhysicsEngineeringAdvanced Causal Inference TechniquesStatistical Methods and InferenceStatistical Methods and Bayesian Inference
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