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Manifold Alignment without Correspondence

机译:无关的歧管对齐

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摘要

Manifold alignment has been found to be useful in many areas of machine learning and data mining. In this paper we introduce a novel manifold alignment approach, which differs from "semi-supervised alignment" and "Procrustes alignment" in that it does not require predetermining correspondences. Our approach learns a projection that maps data instances (from two different spaces) to a lower dimensional space simultaneously matching the local geometry and preserving the neighborhood relationship within each set. This approach also builds connections between spaces defined by different features and makes direct knowledge transfer possible. The performance of our algorithm is demonstrated and validated in a series of carefully designed experiments in information retrieval and bioinformatics.
机译:已经发现歧管对准在机器学习和数据挖掘的许多领域是有用的。在本文中,我们引入了一种新的歧管对准方法,其不同于“半监督对准”和“促进对准”中的,因为它不需要预先确定的对应关系。我们的方法了解一个投影,该投影将数据实例(从两个不同的空格从两个不同的空格)映射到匹配局部几何形状并保留每个集合内的邻域关系的低维空间。此方法还在不同功能定义的空格之间构建连接,并成为可直接的知识传输。在信息检索和生物信息学的一系列经过精心设计的实验中,对我们的算法的性能进行了说明和验证。

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