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Semi-supervised Coefficient-Based Distance Metric Learning

机译:基于半监督系数的距离度量学习

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Distance metric learning plays an important role in real-world applications, such as image classification and clustering. Previous works mainly learn a distance metric through learning a Mahalanobis metric or learning a linear transformation. In this paper, we propose to learn a distance metric from a new perspective. We first randomly generate a set of base vectors and then learn a linear combination of these vectors to approximate the target metric. Compared with previous distance metric learning methods, we only need to learn the coefficients of these base vectors instead of learning the target metric or the linear transformation. Consequently, the number of variables needed to be determined is the same as the number of base vectors, which is irrelevant to the dimension of the data. Furthermore, considering the situation that labeled samples are insufficient in some cases, we extend our proposed distance metric learning method into a semi-supervised learning framework. Additionally, an optimization algorithm is proposed to accelerate training of our proposed methods. Experiments are conducted on several datasets and the results demonstrate the effectiveness of our proposed methods.
机译:距离度量学习在诸如图像分类和聚类之类的实际应用中起着重要作用。以前的作品主要是通过学习马哈拉诺比斯度量或学习线性变换来学习距离度量。在本文中,我们建议从新的角度学习距离度量。我们首先随机生成一组基本向量,然后学习这些向量的线性组合以近似目标度量。与以前的距离度量学习方法相比,我们只需要学习这些基本向量的系数,而无需学习目标度量或线性变换。因此,需要确定的变量数量与基本向量的数量相同,这与数据的维数无关。此外,考虑到某些情况下标记样本不足的情况,我们将提出的距离度量学习方法扩展到半监督学习框架中。另外,提出了一种优化算法来加速对我们提出的方法的训练。在几个数据集上进行了实验,结果证明了我们提出的方法的有效性。

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