Selective Sampling Using the Query by Committee Algorithm

作者:Yoav Freund, H. Sebastian Seung, Eli Shamir, Naftali Tishby

摘要

We analyze the “query by committee” algorithm, a method for filtering informative queries from a random stream of inputs. We show that if the two-member committee algorithm achieves information gain with positive lower bound, then the prediction error decreases exponentially with the number of queries. We show that, in particular, this exponential decrease holds for query learning of perceptrons.

论文关键词:selective sampling, query learning, Bayesian Learning, experimental design

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论文官网地址:https://doi.org/10.1023/A:1007330508534