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Disagreement-Based Active Learning in Online Settings

Boshuang Huang, Sudeep Salgia, Qing Zhao

2022IEEE Transactions on Signal Processing19 citationsDOI

Abstract

We study online active learning for classifying streaming instances within the framework of statistical learning theory. At each time, the learner either queries the label of the current instance or predicts the label based on past seen examples. The objective is to minimize the number of queries while constraining the number of prediction errors over a horizon of length <inline-formula><tex-math notation="LaTeX">$T$</tex-math></inline-formula>. We develop a disagreement-based online learning algorithm for a general hypothesis space and under the Tsybakov noise and establish its label complexity under a constraint of bounded regret in terms of classification errors. We further establish a matching (up to a poly-logarithmic factor) lower bound, demonstrating the order optimality of the proposed algorithm. We address the tradeoff between label complexity and regret and show that the algorithm can be modified to operate at a different point on the tradeoff curve.

Topics & Concepts

RegretBounded functionLogarithmUpper and lower boundsMatching (statistics)Constraint (computer-aided design)Computer scienceOnline learningProbably approximately correct learningNotationMathematicsPoint (geometry)Active learning (machine learning)Computational learning theoryArtificial intelligenceAlgorithmTheoretical computer scienceMachine learningStatisticsWorld Wide WebMathematical analysisArithmeticGeometryMachine Learning and AlgorithmsAdvanced Bandit Algorithms ResearchAlgorithms and Data Compression
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