黎曼流形
黎曼几何
测地线
统计流形
伪黎曼流形
内在维度
降维
信息几何学
数学
歧管(流体力学)
指数映射(黎曼几何)
非线性降维
人工智能
计算机科学
维数之咒
拓扑(电路)
纯数学
数学分析
几何学
里希曲率
组合数学
标量曲率
截面曲率
曲率
工程类
机械工程
标识
DOI:10.1109/tpami.2007.70735
摘要
Recently, manifold learning has been widely exploited in pattern recognition, data analysis, and machine learning. This paper presents a novel framework, called Riemannian manifold learning (RML), based on the assumption that the input high-dimensional data lie on an intrinsically low-dimensional Riemannian manifold. The main idea is to formulate the dimensionality reduction problem as a classical problem in Riemannian geometry, i.e., how to construct coordinate charts for a given Riemannian manifold? We implement the Riemannian normal coordinate chart, which has been the most widely used in Riemannian geometry, for a set of unorganized data points. First, two input parameters (the neighborhood size k and the intrinsic dimension d) are estimated based on an efficient simplicial reconstruction of the underlying manifold. Then, the normal coordinates are computed to map the input high-dimensional data into a low-dimensional space. Experiments on synthetic data as well as real world images demonstrate that our algorithm can learn intrinsic geometric structures of the data, preserve radial geodesic distances, and yield regular embeddings.
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