A flow based approach for learning multiple manifolds

Gang Shen, Dan Han
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引用次数: 2

Abstract

In this paper, we investigate the problem of learning multiple overlapped manifolds from data samples with noise. Learning low dimensional nonlinear manifolds embedded in high dimensional Euclidean space has been an important issue in many data driven pattern analysis applications. The work in this paper extends manifold learning into the complex situations where an unknown number of manifolds may overlap. The approach proposed introduces the notion of flow consisting of multi-agents in a formation exploring a smooth curve on a manifold and thus separating different manifolds. A flow generates an ordered sequence of neighborhoods visited by the agents and can be used to simplify elastic mapping to discover the principal manifold structures. Simulations in various settings demonstrate the effectiveness of the proposed approach.
基于流的多流形学习方法
本文研究了从带噪声的数据样本中学习多个重叠流形的问题。学习嵌入在高维欧几里德空间中的低维非线性流形已经成为许多数据驱动模式分析应用中的一个重要问题。本文的工作将流形学习扩展到未知数量流形可能重叠的复杂情况。该方法引入了由多智能体组成的流的概念,在流形上探索光滑曲线,从而分离不同的流形。流生成代理访问的有序邻域序列,可用于简化弹性映射以发现主要流形结构。在各种环境下的仿真验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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