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Adversary-Resilient Distributed and Decentralized Statistical Inference and Machine Learning: An Overview of Recent Advances Under the Byzantine Threat Model

Zhixiong Yang, Arpita Gang, Waheed U. Bajwa

2020IEEE Signal Processing Magazine80 citationsDOIOpen Access PDF

Abstract

Statistical inference and machine-learning algorithms have traditionally been developed for data available at a single location. Unlike this centralized setting, modern data sets are increasingly being distributed across multiple physical entities (sensors, devices, machines, data centers, and so on) for a multitude of reasons that range from storage, memory, and computational constraints to privacy concerns and engineering needs. This has necessitated the development of inference and learning algorithms capable of operating on noncolocated data. For this article, we divide such algorithms into two broad categories, namely, distributed algorithms and decentralized algorithms (see "Is It Distributed or Is It Decentralized?").

Topics & Concepts

Computer scienceInferenceStatistical inferenceStatistical modelRange (aeronautics)Distributed computingDistributed databaseData modelingByzantine fault toleranceMachine learningDistributed algorithmData miningTheoretical computer scienceArtificial intelligenceThreat modelInformation privacyData scienceApproximate inferenceKey (lock)MultitudeOutcome (game theory)Big dataAlgorithm designAdversarial Robustness in Machine LearningPrivacy-Preserving Technologies in DataSmart Grid Security and Resilience