Dasgupta, Sanjoy; Kalai, Adam Tauman; Monteleoni, Claire Analysis of perceptron-based active learning. (English) Zbl 1235.68143 J. Mach. Learn. Res. 10, 281-299 (2009). Summary: We start by showing that in an active learning setting, the Perceptron algorithm needs \(\Omega (1/\epsilon ^{2})\) labels to learn linear separators within generalization error \(\epsilon \). We then present a simple active learning algorithm for this problem, which combines a modification of the perceptron update with an adaptive filtering rule for deciding which points to query. For data distributed uniformly over the unit sphere, we show that our algorithm reaches generalization error \(\epsilon \) after asking for just \(\widetilde{O}(d \log 1/\epsilon )\) labels. This exponential improvement over the usual sample complexity of supervised learning had previously been demonstrated only for the computationally more complex query-by-committee algorithm. Cited in 9 Documents MSC: 68T05 Learning and adaptive systems in artificial intelligence Keywords:active learning; perceptron; label complexity bounds; online learning PDFBibTeX XMLCite \textit{S. Dasgupta} et al., J. Mach. Learn. Res. 10, 281--299 (2009; Zbl 1235.68143) Full Text: Link