Title
Adaptive Neighboring Selection Algorithm Based on Curvature Prediction in Manifold Learning
Abstract
Recently manifold learning algorithm for dimensionality reduction attracts more and more interests, and various linear and nonlinear,global and local algorithms are proposed. The key step of manifold learning algorithm is the neighboring region selection. However,so far for the references we know,few of which propose a generally accepted algorithm to well select the neighboring region. So in this paper,we propose an adaptive neighboring selection algorithm,which successfully applies the LLE and ISOMAP algorithms in the test. It is an algorithm that can find the optimal K nearest neighbors of the data points on the manifold. And the theoretical basis of the algorithm is the approximated curvature of the data point on the manifold. Based on Riemann Geometry,Jacob matrix is a proper mathematical concept to predict the approximated curvature. By verifying the proposed algorithm on embedding Swiss roll from R3 to R2 based on LLE and ISOMAP algorithm,the simulation results show that the proposed adaptive neighboring selection algorithm is feasible and able to find the optimal value of K,making the residual variance relatively small and better visualization of the results. By quantitative analysis,the embedding quality measured by residual variance is increased 45. 45% after using the proposed algorithm in LLE.
Year
DOI
Venue
2017
null
哈尔滨工业大学学报(英文版)
Keywords
Field
DocType
manifold learning,adaptive neighboring selection,residual variance,curvature prediction
Ramer–Douglas–Peucker algorithm,Dimensionality reduction,Selection algorithm,FSA-Red Algorithm,Manifold alignment,Statistics,Nonlinear dimensionality reduction,Population-based incremental learning,Mathematics,Isomap
Journal
Volume
Issue
Citations 
20
03
0
PageRank 
References 
Authors
0.34
2
8
Name
Order
Citations
PageRank
lin100.34
ma211.05
caifa3224.13
zhou442.50
xi500.34
liu643.82
yubin700.34
xu8143.08