等量流形学习使用分层流

Ziqi Pan, Jianfu Zhang, Li Niu, Liqing Zhang
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引用次数: 0

摘要

本文提出了基于等距正则化约束的流形学习层次流模型,该模型将降维、推理、采样、投影和密度估计等流形学习目标整合到一个统一的框架中。我们提出的高频模型经过正则化,不仅产生了保留流形几何结构的嵌入,而且还以符合投影严格定义的方式将样本投影到流形上。理论保证了高频模型能够满足这两个期望的性质。为了检测流形的真实维数,我们还提出了一种两阶段降维算法,由于我们的高频模型的分层结构设计,这是一种省时的算法。实验结果验证了我们的理论分析,证明了我们的降维算法在训练时间成本上的优势,并验证了上述特性在提高下游任务(如异常检测)性能方面的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Isometric Manifold Learning Using Hierarchical Flow
We propose the Hierarchical Flow (HF) model constrained by isometric regularizations for manifold learning that combines manifold learning goals such as dimensionality reduction, inference, sampling, projection and density estimation into one unified framework. Our proposed HF model is regularized to not only produce embeddings preserving the geometric structure of the manifold, but also project samples onto the manifold in a manner conforming to the rigorous definition of projection. Theoretical guarantees are provided for our HF model to satisfy the two desired properties. In order to detect the real dimensionality of the manifold, we also propose a two-stage dimensionality reduction algorithm, which is a time-efficient algorithm thanks to the hierarchical architecture design of our HF model. Experimental results justify our theoretical analysis, demonstrate the superiority of our dimensionality reduction algorithm in cost of training time, and verify the effect of the aforementioned properties in improving performances on downstream tasks such as anomaly detection.
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