2 research outputs found

    Unsupervised Active Learning in Large Domains

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    Active learning is a powerful approach to analyzing data eectively. We show that the feasibility of active learning depends crucially on the choice of measure with respect to which the query is being optimized. The standard information gain, for example, does not permit an accurate evaluation with a small committee, a representative subset of the model space. We propose a surrogate measure requiring only a small committee and discuss the properties of this new measure
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