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A Theoretical Review of Modern Robust Statistics

Po‐Ling Loh

2024Annual Review of Statistics and Its Application11 citationsDOIOpen Access PDF

Abstract

Robust statistics is a fairly mature field that dates back to the early 1960s, with many foundational concepts having been developed in the ensuing decades. However, the field has drawn a new surge of attention in the past decade, largely due to a desire to recast robust statistical principles in the context of high-dimensional statistics. In this article, we begin by reviewing some of the central ideas in classical robust statistics. We then discuss the need for new theory in high dimensions, using recent work in high-dimensional M -estimation as an illustrative example. Next, we highlight a variety of interesting recent topics that have drawn a flurry of research activity from both statisticians and theoretical computer scientists, demonstrating the need for further research in robust estimation that embraces new estimation and contamination settings, as well as a greater emphasis on computational tractability in high dimensions.

Topics & Concepts

Variety (cybernetics)Context (archaeology)Field (mathematics)Computer scienceData scienceEstimationComputational statisticsProbability and statisticsRobust statisticsStatisticsManagement scienceOperations researchArtificial intelligenceMathematicsMachine learningHistoryEngineeringSystems engineeringOutlierPure mathematicsArchaeologyAdvanced Statistical Methods and ModelsAdvanced Statistical Process MonitoringStatistical Methods and Inference