A foundational problem in semi-supervised learning is the construction of a graph underlying the data. We propose to use a method which optimally combines a number of differently constructed graphs. For each of these graphs we associate a basic graph kernel. We then compute an optimal combined kernel. This kernel solves an extended regularization problem which requires a joint minimization over both the data and the set of graph kernels. We present encouraging results on different OCR tasks where the optimal combined kernel is computed from graphs constructed with a variety of distances functions and the ‘k ’ in nearest neighbors.
We study the behavior of the popular Laplacian Regularization method for Semi-Supervised Learning at...
Recent years have seen a growing number of graph-based semi-supervised learning methods. While the l...
Discussions about different graph Laplacian, mainly normalized and unnormalized versions of graph La...
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...
International audienceWe study a semi-supervised learning method based on the similarity graph and R...
Existing semi-supervised learning methods are mostly based on either the cluster assumption or the m...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised l...
In recent years, the need for pattern recognition and data analysis has grown exponentially in vario...
We study a semi-supervised learning method based on the similarity graph and RegularizedLaplacian. W...
Normalized graph Laplacian has been widely used in many practical machine learning algorithms, e.g.,...
We propose multitask Laplacian learning, a new method for jointly learning clusters of closely relat...
Graph Semi-Supervised learning is an important data analysis tool, where given a graph and a set of ...
Graph Semi-Supervised learning is an important data analysis tool, where given a graph and a set of ...
Abstract—This paper studies the problem of learning from a set of input graphs, each of them represe...
We study the behavior of the popular Laplacian Regularization method for Semi-Supervised Learning at...
Recent years have seen a growing number of graph-based semi-supervised learning methods. While the l...
Discussions about different graph Laplacian, mainly normalized and unnormalized versions of graph La...
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...
International audienceWe study a semi-supervised learning method based on the similarity graph and R...
Existing semi-supervised learning methods are mostly based on either the cluster assumption or the m...
We present an algorithm based on convex optimization for constructing kernels for semi-supervised l...
In recent years, the need for pattern recognition and data analysis has grown exponentially in vario...
We study a semi-supervised learning method based on the similarity graph and RegularizedLaplacian. W...
Normalized graph Laplacian has been widely used in many practical machine learning algorithms, e.g.,...
We propose multitask Laplacian learning, a new method for jointly learning clusters of closely relat...
Graph Semi-Supervised learning is an important data analysis tool, where given a graph and a set of ...
Graph Semi-Supervised learning is an important data analysis tool, where given a graph and a set of ...
Abstract—This paper studies the problem of learning from a set of input graphs, each of them represe...
We study the behavior of the popular Laplacian Regularization method for Semi-Supervised Learning at...
Recent years have seen a growing number of graph-based semi-supervised learning methods. While the l...
Discussions about different graph Laplacian, mainly normalized and unnormalized versions of graph La...