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Stream-based active learning for sliding windows under the influence of verification latency

Tuan Anh Pham, Daniel Kottke, Georg Krempl, Bernhard Sick

2021Machine Learning20 citationsDOIOpen Access PDF

Abstract

Abstract Stream-based active learning (AL) strategies minimize the labeling effort by querying labels that improve the classifier’s performance the most. So far, these strategies neglect the fact that an oracle or expert requires time to provide a queried label. We show that existing AL methods deteriorate or even fail under the influence of such verification latency. The problem with these methods is that they estimate a label’s utility on the currently available labeled data. However, when this label would arrive, some of the current data may have gotten outdated and new labels have arrived. In this article, we propose to simulate the available data at the time when the label would arrive. Therefore, our method Forgetting and Simulating (FS) forgets outdated information and simulates the delayed labels to get more realistic utility estimates. We assume to know the label’s arrival date a priori and the classifier’s training data to be bounded by a sliding window. Our extensive experiments show that FS improves stream-based AL strategies in settings with both, constant and variable verification latency.

Topics & Concepts

Computer scienceOracleSliding window protocolClassifier (UML)Machine learningData streamLatency (audio)Artificial intelligenceForgettingBounded functionLabeled dataOnline learningData stream miningData miningWindow (computing)LinguisticsWorld Wide WebPhilosophyOperating systemTelecommunicationsMathematical analysisMathematicsSoftware engineeringMachine Learning and AlgorithmsData Stream Mining TechniquesMachine Learning and Data Classification