Litcius/Paper detail

Veridical Data Science

Bin Yu

202055 citationsDOIOpen Access PDF

Abstract

Veridical data science extracts reliable and reproducible information from data, with an enriched technical language to communicate and evaluate empirical evidence in the context of human decisions and domain knowledge. Building and expanding on principles of statistics, machine learning, and the sciences, we propose the predictability, computability, and stability (PCS) framework forveridical data science. Our framework is comprised of both a workflow and documentation and aims to provide responsible, reliable, reproducible, and transparent results across the entire data science life cycle. Moreover, we propose the PDR desiderata for interpretable machine learning as part of veridical data science (with PDR standing for predictive accuracy, predictive accuracy and relevancy to a human audience and a particular domain problem).

Topics & Concepts

Computer scienceWorkflowDomain (mathematical analysis)Context (archaeology)PredictabilityDocumentationData scienceArtificial intelligenceDatabaseProgramming languageMathematicsStatisticsBiologyPaleontologyMathematical analysisExplainable Artificial Intelligence (XAI)Anomaly Detection Techniques and ApplicationsData Analysis with R