Author_Institution :
Dept. of Comput. Sci., POSTECH, Pohang, South Korea
Abstract :
Isomap is a manifold learning algorithm, which extends classical multidimensional scaling by considering approximate geodesic distance instead of Euclidean distance. The approximate geodesic distance matrix can be interpreted as a kernel matrix, which implies that Isomap can be solved by a kernel eigenvalue problem. However, the geodesic distance kernel matrix is not guaranteed to be positive semi-definite. A constant-adding method is employed, which leads to the Mercer kernel-based Isomap algorithm. Numerical experimental results with noisy. ´Swiss roll´ data, confirm the validity and high performance of the kernel Isomap algorithm.
Keywords :
differential geometry; eigenvalues and eigenfunctions; generalisation (artificial intelligence); learning (artificial intelligence); matrix algebra; pattern recognition; Euclidean distance; Mercer kernel based Isomap algorithm; constant-adding method; generalisation; geodesic distance kernel matrix; kernel eigenvalue problem; learning algorithm; multidimensional scaling algorithm; swiss roll data;