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LoCH: A neighborhood-based multidimensional projection technique for high-dimensional sparse spaces

机译:LoCH:高维稀疏空间的基于邻域的多维投影技术

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On the last few years multidimensional projection techniques have advanced towards defining faster and user-centered approaches. However, most of existing methods are designed as generic tools without considering particular features of the data under processing, such as the distance distribution when the data is embedded into a certain metric space. In this paper we split the projection techniques into two groups, global and local techniques, conduct an analysis of them, and present a novel local technique specially designed for projecting heavy tail distance distributions, such as the one produced by high-dimensional sparse spaces. This novel approach, called Local Convex Hull (LoCH), relies on an iterative process that seeks to place each point close to the convex hull of its nearest neighbors. The accuracy, in terms of neighborhood preservation, is confirmed by a set of comparisons and tests, showing that LoCH is capable of successfully segregating groups of similar instances embedded in high-dimensional sparse spaces and of defining the borders between them, significantly better than most projection techniques. (C) 2014 Elsevier B.V. All rights reserved.
机译:在过去的几年中,多维投影技术已经朝着定义更快和以用户为中心的方法发展。但是,大多数现有方法被设计为通用工具,而没有考虑正在处理的数据的特定功能,例如,将数据嵌入特定度量空间时的距离分布。在本文中,我们将投影技术分为全局技术和局部技术两类,进行了分析,并提出了一种专门设计用于投影重尾距分布(例如由高维稀疏空间产生的投影)的新颖局部技术。这种称为局部凸包(LoCH)的新颖方法依赖于迭代过程,该过程试图将每个点都放置在与其最近邻居的凸包接近的位置。通过一系列比较和测试,证实了邻域保护的准确性,表明LoCH能够成功分离嵌入在高维稀疏空间中的相似实例的组并定义它们之间的边界,这比大多数情况要好得多。投影技术。 (C)2014 Elsevier B.V.保留所有权利。

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