Litcius/Paper detail

Causal Data Integration

Brit Youngmann, Michael Cafarella, Babak Salimi, Anna Zeng

2023Proceedings of the VLDB Endowment13 citationsDOI

Abstract

Causal inference is fundamental to empirical scientific discoveries in natural and social sciences; however, in the process of conducting causal inference, data management problems can lead to false discoveries. Two such problems are (i) not having all attributes required for analysis, and (ii) misidentifying which attributes are to be included in the analysis. Analysts often only have access to partial data, and they critically rely on (often unavailable or incomplete) domain knowledge to identify attributes to include for analysis, which is often given in the form of a causal DAG. We argue that data management techniques can surmount both of these challenges. In this work, we introduce the Causal Data Integration (CDI) problem, in which unobserved attributes are mined from external sources and a corresponding causal DAG is automatically built. We identify key challenges and research opportunities in designing a CDI system, and present a system architecture for solving the CDI problem. Our preliminary experimental results demonstrate that solving CDI is achievable and pave the way for future research.

Topics & Concepts

Causal inferenceComputer scienceData scienceCausal modelInferenceCausal analysisKey (lock)Process (computing)Domain (mathematical analysis)Causal reasoningCausality (physics)Management scienceRisk analysis (engineering)Data miningArtificial intelligenceEconometricsPsychologyEngineeringMathematicsComputer securityMedicineOperating systemNeuroscienceQuantum mechanicsCognitionStatisticsMathematical analysisPhysicsBayesian Modeling and Causal InferenceData Quality and ManagementGeochemistry and Geologic Mapping