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arxiv: 1408.1319 · v1 · pith:YK3726WOnew · submitted 2014-08-06 · 📊 stat.ML · cs.LG

When does Active Learning Work?

classification 📊 stat.ML cs.LG
keywords performanceactivelearningwhenconsiderexperimentalquestionswork
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Active Learning (AL) methods seek to improve classifier performance when labels are expensive or scarce. We consider two central questions: Where does AL work? How much does it help? To address these questions, a comprehensive experimental simulation study of Active Learning is presented. We consider a variety of tasks, classifiers and other AL factors, to present a broad exploration of AL performance in various settings. A precise way to quantify performance is needed in order to know when AL works. Thus we also present a detailed methodology for tackling the complexities of assessing AL performance in the context of this experimental study.

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