Title :
Extending Manifold Leaning Algorithms by Neural Networks
Author :
Jiang, Jiayan ; Zhang, Liming
Author_Institution :
Fudan Univ., Shanghai
Abstract :
Manifold learning algorithms have been recently reported superior to classical dimensionality reduction techniques, such as PCA or MDS, in their ability to discover a more meaningful low-dimensional embedding of the high-dimensional samples. However, most of them encounter the problem of extension to novel samples. In this paper, we propose a regression model to extend three well-known manifold learning algorithms, i.e. Isomap, LLE, and Laplacian Eigenmap to novel samples by neural networks. We first examine these algorithms, and then show that the nonlinear dimensionality reduction ability can be acquired by neural networks, thus the extension problem is easily addressed. This model is very flexible and still preserves the nonlinear nature of the manifold leaning algorithms. Experimental results of data visualization and classification are reported, which validate the feasibility of the proposed model.
Keywords :
classification; data visualisation; learning (artificial intelligence); neural nets; data classification; data visualization; high-dimensional samples; low-dimensional embedding; manifold learning algorithm; neural network; nonlinear dimensionality reduction ability; Data analysis; Data visualization; Extraterrestrial measurements; Laplace equations; Linear approximation; Manifolds; Neural networks; Principal component analysis; Stochastic processes; Testing;
Conference_Titel :
Neural Networks, 2006. IJCNN '06. International Joint Conference on
Conference_Location :
Vancouver, BC
Print_ISBN :
0-7803-9490-9
DOI :
10.1109/IJCNN.2006.246849