English

Second-order difference subspace

Machine Learning 2024-09-16 v1 Computer Vision and Pattern Recognition

Abstract

Subspace representation is a fundamental technique in various fields of machine learning. Analyzing a geometrical relationship among multiple subspaces is essential for understanding subspace series' temporal and/or spatial dynamics. This paper proposes the second-order difference subspace, a higher-order extension of the first-order difference subspace between two subspaces that can analyze the geometrical difference between them. As a preliminary for that, we extend the definition of the first-order difference subspace to the more general setting that two subspaces with different dimensions have an intersection. We then define the second-order difference subspace by combining the concept of first-order difference subspace and principal component subspace (Karcher mean) between two subspaces, motivated by the second-order central difference method. We can understand that the first/second-order difference subspaces correspond to the velocity and acceleration of subspace dynamics from the viewpoint of a geodesic on a Grassmann manifold. We demonstrate the validity and naturalness of our second-order difference subspace by showing numerical results on two applications: temporal shape analysis of a 3D object and time series analysis of a biometric signal.

Keywords

Cite

@article{arxiv.2409.08563,
  title  = {Second-order difference subspace},
  author = {Kazuhiro Fukui and Pedro H. V. Valois and Lincon Souza and Takumi Kobayashi},
  journal= {arXiv preprint arXiv:2409.08563},
  year   = {2024}
}

Comments

18 pages, 11 figures