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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A self-adaptive local metric learning method for classification
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A self-adaptive local metric learning method for classification

机译:一种分类的自适应局部度量学习方法

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摘要

Measuring distance among data point pairs is a necessary step among numerous counts of algorithms in machine learning, pattern recognition and data mining. In the local perspective, the emphasis of all existing supervised metric learning algorithms is to shrink similar data points and to separate dissimilar ones in the local neighborhoods. This provides learning more appropriate distance metric in dealing with the within-class multi modal data. In this article, a new supervised local metric learning method named Self-Adaptive Local Metric Learning Method (SA-LM2) has been proposed. The contribution of this method is in five aspects. First, in this method, learning an appropriate metric and defining the radius of local neighborhood are integrated in a joint formulation. Second, unlike the traditional approaches, SA-LM2 learns the parameter of local neighborhood automatically thorough its formulation. As a result, it is a parameter free method, where it does not require any parameters that would need to be tuned. Third, SA-LM2 is formulated as a SemiDefinite Program (SDP) with a global convergence guarantee. Fourth, this method does not need the similar set S, the focus here is on local areas' data points and their separation from dissimilar ones. Finally, results of SA-LM2 are less influenced by noisy input data points than the other compared global and local algorithms. Results obtained from different experiments indicate the outperformance of this algorithm over its counterparts. (C) 2019 Elsevier Ltd. All rights reserved.
机译:数据点对之间的测量距离是机器学习,模式识别和数据挖掘中众多算法中的必要步骤。在本地的视角下,所有现有的监督度量学习算法的重点是缩小类似的数据点并分离当地社区中的异常相异议。这提供了在处理类内模态数据的情况下提供更合适的距离度量。在本文中,已经提出了一种名为自适应本地度量学习方法(SA-LM2)的新的监督本地度量学习方法。这种方法的贡献在五个方面。首先,在该方法中,学习适当的指标并定义本地邻域的半径集成在联合配方中。其次,与传统方法不同,SA-LM2从自动彻底的制定中学习本地社区的参数。因此,它是一个参数免费方法,在那里它不需要要调整的任何参数。第三,SA-LM2配制成具有全球收敛保证的半纤维程序(SDP)。第四,这种方法不需要类似的集,这里的焦点是局部区域的数据点及其与不同的分离。最后,SA-LM2的结果比其他比较的全局和本地算法的噪声输入数据点的影响较小。从不同实验获得的结果表明该算法在其对应物中的表现。 (c)2019年elestvier有限公司保留所有权利。

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