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, wit...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
The application of kernel-based learning algorithms has, so far, largely been confined to realvalue...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised l...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised le...
Existing semi-supervised learning methods are mostly based on either the cluster assumption or the m...
Abstract For existing kernel learning based semi-supervised clustering algorithms, it is generally d...
For existing kernel learning based semi-supervised clustering algorithms, it is generally difficult ...
A foundational problem in semi-supervised learning is the construction of a graph underlying the dat...
Due to the growing ubiquity of unlabeled data, learning with unlabeled data is attracting increasing...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
We consider a framework for semi-supervised learning using spectral decomposition based un-supervise...
We present a unified framework to study graph kernels, special cases of which include the random wal...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
The application of kernel-based learning algorithms has, so far, largely been confined to realvalue...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised l...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised le...
Existing semi-supervised learning methods are mostly based on either the cluster assumption or the m...
Abstract For existing kernel learning based semi-supervised clustering algorithms, it is generally d...
For existing kernel learning based semi-supervised clustering algorithms, it is generally difficult ...
A foundational problem in semi-supervised learning is the construction of a graph underlying the dat...
Due to the growing ubiquity of unlabeled data, learning with unlabeled data is attracting increasing...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel learning is a powerful framework for nonlinear data modeling. Using the kernel trick, a numbe...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
We consider a framework for semi-supervised learning using spectral decomposition based un-supervise...
We present a unified framework to study graph kernels, special cases of which include the random wal...
Kernel-based learning algorithms work by embedding the data into a Euclidean space, and then searchi...
The application of kernel-based learning algorithms has, so far, largely been confined to realvalue...
Nowadays, developing effective techniques able to deal with data coming from structured domains is b...