Multiple-view multiple-learner active learning

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摘要

Generally, collecting a large quantity of unlabeled examples is feasible, but labeling them all is not. Active learning can reduce the number of labeled examples needed to train a good classifier. Existing active learning algorithms can be roughly divided into three categories: single-view single-learner (SVSL) active learning, multiple-view single-learner (MVSL) active learning and single-view multiple-learner (SVML) active learning. In this paper, a new approach that incorporates multiple views and multiple learners (MVML) into active learning is proposed. Multiple artificial neural networks are used as learners in each view, and they are set with different numbers of hidden neurons and weights to ensure each of them has a different bias. The selective sampling of our proposed method is implemented in three different ways. For comparative purpose, the traditional methods MVSL and SVML active learning as well as bagging active learning and adaboost active learning are also implemented together with MVML active learning in our experiments. The empirical results indicate that the MVML active learning outperforms the other traditional methods.

论文关键词:Multiple-view learning,Multiple-learner learning,Active learning,Artificial neural network

论文评审过程:Received 13 June 2009, Revised 3 February 2010, Accepted 3 April 2010, Available online 10 April 2010.

论文官网地址:https://doi.org/10.1016/j.patcog.2010.04.004