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Learning Bregman Distance Functions and Its Application for Semi-Supervised Clustering

机译:Bregman距离函数的学习及其在半监督聚类中的应用

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Learning distance functions with side information plays a key role in many machine learning and data mining applications. Conventional approaches often assume a Mahalanobis distance function. These approaches are limited in two aspects: (i) they are computationally expensive (even infeasible) for high dimensional data because the size of the metric is in the square of dimensionality; (ii) they assume a fixed metric for the entire input space and therefore are unable to handle heterogeneous data. In this paper, we propose a novel scheme that learns nonlinear Bregman distance functions from side information using a non-parametric approach that is similar to support vector machines. The proposed scheme avoids the assumption of fixed metric by implicitly deriving a local distance from the Hessian matrix of a convex function that is used to generate the Bregman distance function. We also present an efficient learning algorithm for the proposed scheme for distance function learning. The extensive experiments with semi-supervised clustering show the proposed technique (i) outperforms the state-of-the-art approaches for distance function learning, and (ii) is computationally efficient for high dimensional data.
机译:具有辅助信息的学习距离功能在许多机器学习和数据挖掘应用程序中起着关键作用。传统方法通常采用马氏距离函数。这些方法在两个方面受到限制:(i)由于度量的大小在维数的平方中,因此对于高维数据而言,它们在计算上是昂贵的(甚至是不可行的); (ii)它们对整个输入空间采用固定的度量标准,因此无法处理异构数据。在本文中,我们提出了一种新颖的方案,该方案使用类似于支持向量机的非参数方法从辅助信息中学习非线性Bregman距离函数。所提出的方案通过从用于生成Bregman距离函数的凸函数的Hessian矩阵中隐式导出局部距离,避免了采用固定度量的假设。对于提出的距离函数学习方案,我们还提出了一种有效的学习算法。半监督聚类的广泛实验表明,所提出的技术(i)优于用于距离函数学习的最新方法,并且(ii)对于高维数据具有计算效率。

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