Proactive learning with multiple class-sensitive labelersDownload PDFOpen Website

2014 (modified: 25 Aug 2021)DSAA 2014Readers: Everyone
Abstract: Proactive learning extends active learning by considering multiple labelers with different accuracies and costs, thus optimizing labeler selection as well as instance selection. In this paper, we propose a novel method to estimate labeler accuracy per class and to select labelers based on both cost and estimated accuracy, combined with an ensemble approach called multi-class information density (MCID) as a selection criterion. Our approach relaxes the common assumption found in past work that labeler accuracy is independent of class for multi-class learning, and by estimating the class-conditional accuracy better assigns instances to labelers. Results on several datasets with both real and simulated experts strongly demonstrate the efficacy of these methods.
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