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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >FRSVC: Towards making support vector clustering consume less
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FRSVC: Towards making support vector clustering consume less

机译:FRSVC:使支持向量集群消耗较少

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摘要

In spite of with great advantage of discovering arbitrary shapes of clusters, support vector clustering (SVC) is frustrated by large-scale data, especially on resource limited platform. It is due to pricey storage and computation consumptions from solving dual problem and labeling clusters upon the pre-computed kernel matrix and sampling point pairs, respectively. Towards on it, we first present a dual coordinate descent method to reformulate the solver that leads to a flexible training phase carried out on any runtime platform with/without sufficient memory. Then, a novel labeling phase who does connectivity analysis between two nearest neighboring decomposed convex hulls referring to clusters is proposed, in which a new designed strategy namely sample once connected checking first tries to reduces the scope of sampling analysis. By integrating them together, a faster and reformulated SVC (FRSVC) is created with less consumption achieved according to comparative analysis of time and space complexities. Furthermore, experimental results confirm a significant improvement on flexibility of selective efficiency without losing accuracy, with which a balance can be easily reached on the basis of resources a platform equipped. (C) 2017 Elsevier Ltd. All rights reserved.
机译:尽管支持向量聚类(SVC)在发现任意形状的聚类方面有很大的优势,但在资源有限的平台上,大规模数据的存在阻碍了SVC的应用。这是由于解决对偶问题和分别在预先计算的核矩阵和采样点对上标记簇所消耗的昂贵存储和计算量。针对这个问题,我们首先提出了一种双坐标下降方法来重新构造求解器,从而在任何运行时平台上(有/没有足够的内存)执行灵活的训练阶段。然后,提出了一种新的标记阶段,该阶段对两个最近相邻的分解凸包进行连通性分析,该阶段首先设计了一种新的策略,即样本一次连通检查,以缩小抽样分析的范围。根据时间和空间复杂性的对比分析,通过将它们结合在一起,可以创建一个更快、更精确的SVC(FRSVC),同时实现更少的消耗。此外,实验结果证实,在不损失精度的情况下,选择效率的灵活性得到了显著提高,在配备平台的基础上,可以轻松实现平衡。(C) 2017爱思唯尔有限公司版权所有。

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