<p>We present novel methods to construct compact natural language lexicons within a graphbased semi-supervised learning framework, an attractive platform suited for propagating soft labels onto new natural language types from seed data. To achieve compactness, we induce sparse measures at graph vertices by incorporating sparsity-inducing penalties in Gaussian and entropic pairwise Markov networks constructed from labeled and unlabeled data. Sparse measures are desirable for high-dimensional multi-class learning problems such as the induction of labels on natural language types, which typically associate with only a few labels. Compared to standard graph-based learning methods, for two lexicon expansion problems, our approach produces signif...
This paper investigates classification by dictionary learning. A novel unified framework termed self...
Abstract — When the amount of labeled data are limited, semi-supervised learning can improve the lea...
We consider the problem of semi-supervised graphbased learning. Since in semi-supervised settings, t...
We present novel methods to construct compact natural language lexicons within a graphbased semi-sup...
Graph-based semi-supervised learning techniques have recently attracted increasing attention as a me...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
In this paper, we propose a novel dictionary learning method in the semi-supervised setting by dynam...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
We propose a method for learning dictionaries towards sparse ap-proximation of signals defined on ve...
We propose a method for learning dictionaries towards sparse ap-proximation of signals defined on ve...
Graphs and networks offer a convenient way to study systems around us, including such complex ones a...
We study the problem of learning constitutive features for the ef-fective representation of graph si...
We consider the problem of semi-supervised graphbased learning.Since in semi-supervised settings,the...
Abstract—A new graph based constrained semi-supervised learning (G-CSSL) framework is proposed. Pair...
Over the last few years, a number of ar-eas of natural language processing have begun applying graph...
This paper investigates classification by dictionary learning. A novel unified framework termed self...
Abstract — When the amount of labeled data are limited, semi-supervised learning can improve the lea...
We consider the problem of semi-supervised graphbased learning. Since in semi-supervised settings, t...
We present novel methods to construct compact natural language lexicons within a graphbased semi-sup...
Graph-based semi-supervised learning techniques have recently attracted increasing attention as a me...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
In this paper, we propose a novel dictionary learning method in the semi-supervised setting by dynam...
In sparse signal representation, the choice of a dictionary often involves a tradeoff between two de...
We propose a method for learning dictionaries towards sparse ap-proximation of signals defined on ve...
We propose a method for learning dictionaries towards sparse ap-proximation of signals defined on ve...
Graphs and networks offer a convenient way to study systems around us, including such complex ones a...
We study the problem of learning constitutive features for the ef-fective representation of graph si...
We consider the problem of semi-supervised graphbased learning.Since in semi-supervised settings,the...
Abstract—A new graph based constrained semi-supervised learning (G-CSSL) framework is proposed. Pair...
Over the last few years, a number of ar-eas of natural language processing have begun applying graph...
This paper investigates classification by dictionary learning. A novel unified framework termed self...
Abstract — When the amount of labeled data are limited, semi-supervised learning can improve the lea...
We consider the problem of semi-supervised graphbased learning. Since in semi-supervised settings, t...