Invention Application
US20060235812A1 Partially supervised machine learning of data classification based on local-neighborhood Laplacian Eigenmaps 有权
基于局部邻域拉普拉斯特征映射的部分监督机器学习数据分类

  • Patent Title: Partially supervised machine learning of data classification based on local-neighborhood Laplacian Eigenmaps
  • Patent Title (中): 基于局部邻域拉普拉斯特征映射的部分监督机器学习数据分类
  • Application No.: US11108031
    Application Date: 2005-04-14
  • Publication No.: US20060235812A1
    Publication Date: 2006-10-19
  • Inventor: Ryan RifkinStuart Andrews
  • Applicant: Ryan RifkinStuart Andrews
  • Applicant Address: JP TOKYO
  • Assignee: HONDA MOTOR CO., LTD.
  • Current Assignee: HONDA MOTOR CO., LTD.
  • Current Assignee Address: JP TOKYO
  • Main IPC: G06F15/18
  • IPC: G06F15/18
Partially supervised machine learning of data classification based on local-neighborhood Laplacian Eigenmaps
Abstract:
A local-neighborhood Laplacian Eigenmap (LNLE) algorithm is provided for methods and systems for semi-supervised learning on manifolds of data points in a high-dimensional space. In one embodiment, an LNLE based method includes building an adjacency graph over a dataset of labelled and unlabelled points. The adjacency graph is then used for finding a set of local neighbors with respect to an unlabelled data point to be classified. An eigen decomposition of the local subgraph provides a smooth function over the subgraph. The smooth function can be evaluated and based on the function evaluation the unclassified data point can be labelled. In one embodiment, a transductive inference (TI) algorithmic approach is provided. In another embodiment, a semi-supervised inductive inference (SSII) algorithmic approach is provided for classification of subsequent data points. A confidence determination can be provided based on a number of labeled data points within the local neighborhood. Experimental results comparing LNLE and simple LE approaches are presented.
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