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An improved incremental nonlinear dimensionality reduction for isometric data embedding

机译:等距数据嵌入的改进增量非线性降维

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摘要

Manifold learning has become a hot issue in the field of machine learning and data mining. There are some algorithms proposed to extract the intrinsic characteristics of different type of high-dimensional data by performing nonlinear dimensionality reduction, such as ISOMAP, LIE and so on. Most of these algorithms operate in a batch mode and cannot be effectively applied when data are collected sequentially. In this paper, we proposed a new incremental version of ISOMAP which can use the previous computation results as much as possible and effectively update the low dimensional representation of data points as many new samples are accumulated. Experimental results on synthetic data as well as real world images demonstrate that our approaches can construct an accurate low-dimensional representation of the data in an efficient manner.
机译:流形学习已成为机器学习和数据挖掘领域的热门问题。提出了通过进行非线性降维来提取不同类型高维数据的内在特征的算法,例如ISOMAP,LIE等。这些算法大多数以批处理模式运行,并且在顺序收集数据时无法有效应用。在本文中,我们提出了一个新的增量版本的ISOMAP,它可以尽可能多地使用以前的计算结果,并可以在积累了许多新样本的情况下有效地更新数据点的低维表示形式。对合成数据以及真实世界图像的实验结果表明,我们的方法可以有效地构建数据的准确低维表示。

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