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Logistic Component Analysis for Fast Distance Metric Learning

机译:用于快速距离度量学习的逻辑成分分析

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Discriminating feature extraction is important to achieve high recognition rate in a classification problem. Fisher's linear discriminant analysis (LDA) is one of the well-known discriminating feature extraction methods and is closely related to the Mahalanobis distance metric learning. Neighborhood component analysis (NCA) is one of the Mahalanobis distance metric learning methods based on stochastic nearest neighbor assignment. The objective function of NCA can be expressed as a within-class coherency by a simple formula, and NCA extracts discriminating features by minimizing the objective function. Unfortunately, the computational cost of NCA significantly increases as the number of input data increases. For reducing the computational cost, we propose a fast distance metric learning method by taking the between-class distinguish ability into account of nearest mean classification. According to the experimental results using standard repository datasets, the computational time of our method is evaluated as 27 times shorter than that of NCA while keeping or improving the accuracy.
机译:区分特征提取对于实现分类问题中的高识别率很重要。 Fisher的线性判别分析(LDA)是众所周知的判别特征提取方法之一,与马氏距离度量学习密切相关。邻域成分分析(NCA)是基于随机最近邻分配的马氏距离度量学习方法之一。 NCA的目标函数可以通过一个简单的公式表示为类内一致性,而NCA通过最小化目标函数来提取区分特征。不幸的是,NCA的计算成本随着输入数据数量的增加而显着增加。为了降低计算成本,我们提出了一种快速距离度量学习方法,该方法考虑了类之间的区分能力,并考虑了最近的均值分类。根据使用标准存储库数据集的实验结果,我们的方法的计算时间被评估为比NCA的计算时间短27倍,同时保持或提高了准确性。

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