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Research

Access the latest research in Causal AI development

Research Papers

Mayo Clinic x causaLens: Towards Causal Analysis of Genetic Factors for Colorectal Cancer

Mayo Clinic and causaLens researchers leveraged Causal AI techniques and […]

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Research Papers

Data Generating Process to Evaluate Causal Discovery Techniques for Time Series Data

causaLens’ NeurIPS 2020 paper sets out a framework for benchmarking […]

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Research Papers

Domain Knowledge in A*-Based Causal Discovery

Causal discovery has become a vital tool for scientists and practitioners wanting to discover causal relationships from observational data. While...

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Research Papers

Unsuitability of NOTEARS for Causal Graph Discovery

Many popular causal discovery algorithms have significant limitations in applied […]

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Research Papers

An Overview of the Methodologies of Causal Discovery

Until recently, discovering cause-and-effect relationships involved conducting a carefully controlled […]

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Research Papers

Equality of Effort via Algorithmic Recourse

AI systems are increasingly used in many socially significant applications, such as loan approval, hiring decisions, legal processes, and healthcare,...

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Research Papers

Causal Analysis of the TOPCAT Trial: Spironolactone for Preserved Cardiac Function Heart Failure

Our Analysis of the TOPCAT Trial: Complex trials with heterogeneities […]

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Research Papers

A Causal Analysis of Harm

Defining harm is essential for dealing with the many legal and regulatory issues around the growing integration of autonomous systems...

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Research Papers

On Testing for Discrimination Using Causal Models

causaLens’ own Hana Chockler in collaboration with Cornell’s Joe Halpern […]

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