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Accuracy at different parameters for ISOLET. l is the number hash function, w is the bucket width and |C| is the average number of centroids computed
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Many machine learning and pattern recognition algorithms rely heavily on good distance metrics to achieve competitive performance. While distance metrics can be learned, the computational expense of doing so is currently infeasible on large datasets. In this paper, we propose two efficient-and-effective approaches for selecting the training dataset...
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In partial label data, the ground-truth label of a training example is concealed in a set of candidate labels associated with the instance. As the ground-truth label is inaccessible, it is difficult to train the classifier via the label information. Consequently, manifold structure information is adopted, which is under the assumption that neighbor/similar instances in the feature space have similar labels in the label space. However, the real-world data may not fully satisfy this assumption. In this paper, a partial label metric learning method based on likelihood-ratio test is proposed to make partial label data satisfy the manifold assumption. Moreover, the proposed method needs no objective function and treats the data pairs asymmetrically. The experimental results on several real-world PLL datasets indicate that the proposed method outperforms the existing partial label metric learning methods in terms of classification accuracy and disambiguation accuracy while costs less time.