Print Email Facebook Twitter A variance maximization criterion for active learning Title A variance maximization criterion for active learning Author Yang, Y. (TU Delft Pattern Recognition and Bioinformatics; National University of Defense Technology) Loog, M. (TU Delft Pattern Recognition and Bioinformatics; University of Copenhagen) Date 2018 Abstract Active learning aims to train a classifier as fast as possible with as few labels as possible. The core element in virtually any active learning strategy is the criterion that measures the usefulness of the unlabeled data based on which new points to be labeled are picked. We propose a novel approach which we refer to as maximizing variance for active learning or MVAL for short. MVAL measures the value of unlabeled instances by evaluating the rate of change of output variables caused by changes in the next sample to be queried and its potential labelling. In a sense, this criterion measures how unstable the classifier's output is for the unlabeled data points under perturbations of the training data. MVAL maintains, what we refer to as, retraining information matrices to keep track of these output scores and exploits two kinds of variance to measure the informativeness and representativeness, respectively. By fusing these variances, MVAL is able to select the instances which are both informative and representative. We employ our technique both in combination with logistic regression and support vector machines and demonstrate that MVAL achieves state-of-the-art performance in experiments on a large number of standard benchmark datasets. Subject Active learningRetraining information matrixVariance maximization To reference this document use: http://resolver.tudelft.nl/uuid:1c0e80f9-0a8e-4e34-9c0c-188f868a86ad DOI https://doi.org/10.1016/j.patcog.2018.01.017 Embargo date 2020-02-10 ISSN 0031-3203 Source Pattern Recognition, 78, 358-370 Bibliographical note Accepted Author Manuscript Part of collection Institutional Repository Document type journal article Rights © 2018 Y. Yang, M. Loog Files PDF 47686957_MVAL.pdf 613.33 KB Close viewer /islandora/object/uuid:1c0e80f9-0a8e-4e34-9c0c-188f868a86ad/datastream/OBJ/view