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A Visual Cognitive Method Based on Hyper Surface for Data Understanding

机译:一种基于超曲面的视觉认知方法,用于数据理解

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Classification is a fundamental problem in data mining, which has extensive applications in information technology. Data understanding is highly relevant to how to sense and perceive them. However, the existing approaches for classification have been developed mainly based on dividing dataset space, less or no emphasis paid on simulating human or animal visual cognition. This chapter attempts to understand visual classification by using both psychophysical and machine learning techniques. A new Hyper Surface Classification method (HSC) has been studied since 2002. In HSC, a model of hyper surface is obtained by adaptively dividing the sample space and then the hyper surface is directly used to classify large database based on Jordan Curve Theorem in Topology. In this chapter we point out that HSC is a data understanding method which accords with visual cognitive mechanism. Simulation results show that the proposed method is effective on large test data with complex distribution and high density. In particular, we show that HSC can deal with high dimensional data and build corresponding visual hyper surface using dimension transposition or ensemble method which accords with visual dimension transposition and multi-dimension cognitive mechanism respectively.
机译:分类是数据挖掘中的一个基本问题,在信息技术中具有广泛的应用。数据理解与如何感知和感知它们是高度相关的。然而,已经发展了现有的分类方法,主要基于分割数据集空间,较少或没有对模拟人类或动物视觉认知的重视。本章尝试通过使用心理物理和机器学习技术来了解可视化分类。已经研究了新的超表面分类方法(HSC)自2002年。在HSC中,通过自适应地划分样本空间来获得超表面的模型,然后基于拓扑中的Jordan曲线定理来分类大型数据库。在本章中,我们指出,HSC是一种数据理解方法,符合视觉认知机制。仿真结果表明,该方法对具有复杂分布和高密度的大型测试数据有效。特别是,我们表明HSC可以处理高维数据,并使用尺寸转换或集合方法构建相应的可视超表面,该方法分别符合视觉尺寸转置和多维认知机构。

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