posted on 1995-11-01, 00:00authored byXiaojin Zhu, Jan Kandola, Zoubin Ghahramani, John D. Lafferty
We present an algorithm based on convex optimization for constructing
kernels for semi-supervised learning. The kernel matrices are derived
from the spectral decomposition of graph Laplacians, and combine labeled
and unlabeled data in a systematic fashion. Unlike previous work
using diffusion kernels and Gaussian random field kernels, a nonparametric
kernel approach is presented that incorporates order constraints
during optimization. This results in flexible kernels and avoids the need
to choose among different parametric forms. Our approach relies on
a quadratically constrained quadratic program (QCQP), and is computationally
feasible for large datasets. We evaluate the kernels on real
datasets using support vector machines, with encouraging results.