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Tree-based localized fuzzy twin support vector clustering with square loss function

机译:基于树的本地化模糊双胞胎支持矢量聚类与方形损耗功能

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摘要

Twin support vector machine (TWSVM) is an efficient supervised learning algorithm, proposed for the classification problems. Motivated by its success, we propose Tree-based localized fuzzy twin support vector clustering (Tree-TWSVC). Tree-TWSVC is a novel clustering algorithm that builds the cluster model as a binary tree, where each node comprises of proposed TWSVM-based classifier, termed as localized fuzzy TWSVM (LF-TWSVM). The proposed clustering algorithm Tree-TWSVC has efficient learning time, achieved due to the tree structure and the formulation that leads to solving a series of systems of linear equations. Tree-TWSVC delivers good clustering accuracy because of the square loss function and it uses nearest neighbour graph based initialization method. The proposed algorithm restricts the cluster hyperplane from extending indefinitely by using cluster prototype, which further improves its accuracy. It can efficiently handle large datasets and outperforms other TWSVM-based clustering methods. In this work, we propose two implementations of Tree-TWSVC: Binary Tree-TWSVC and One-against-all Tree-TWSVC. To prove the efficacy of the proposed method, experiments are performed on a number of benchmark UCI datasets. We have also given the application of Tree-TWSVC as an image segmentation tool.
机译:双支持向量机(TWSVM)是一种高效的监督学习算法,提出了分类问题。我们的成功激励,我们提出了基于树的本地化模糊双胞胎支持向量聚类(树-WSVC)。 TRE-TWSVC是一种新的聚类算法,它将群集模型构建为二进制树,其中每个节点包括所提出的基于TWSVM的分类器,称为本地化模糊TWSVM(LF-TWSVM)。所提出的聚类算法树-WSVC具有有效的学习时间,由于树结构和制定,导致求解一系列线性方程系统。 TRE-TWSVC由于方形损耗功能而提供良好的聚类精度,并且它使用基于最近的基于邻居图的初始化方法。所提出的算法通过使用集群原型来限制群集超平面延伸,这进一步提高了其准确性。它可以有效地处理大型数据集并优于基于其他TWSVM的聚类方法。在这项工作中,我们提出了两种树-WSVC的两种实现:二进制树-WSVC和一个反对所有树-WSVC。为了证明所提出的方法的功效,对许多基准UCI数据集进行实验。我们还给出了树-TWSVC作为图像分割工具的应用。

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