In many graph-based semi-supervised learning algorithms, edge weights are assumed to be fixed and determined by the data points’ (often symmetric) relationships in input space, without considering directionality. However, relationships may be more informative in one direction (e.g. from labelled to unlabelled) than in the reverse direction, and some relationships (e.g. strong weights between oppositely labelled points) are unhelpful in either direction. Undesirable edges may reduce the amount of influence an informative point can propagate to its neighbours – the point and its outgoing edges have been “blunted.” We present an approach to “sharpening” in which weights are adjusted to meet an optimization criterion wherever they are directed ...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
© 2017, Science Press. All right reserved. Semi-supervised learning algorithm based on non-negative ...
Graph-based algorithms have drawn much attention thanks to their impressive success in semi-supervis...
In many graph-based semi-supervised learning algorithms, edge weights are assumed to be fixed and de...
Motivation: Predicting protein function is a central problem in bioinformatics, and many approaches ...
As for semisupervised learning, both label information and side information serve as pivotal indicat...
In the literature, most existing graph-based semi-supervised learning methods only use the label inf...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
Graph-based learning algorithms including label propagation and spectral clustering are known as the...
Graph-based semi-supervised learning methods are based on some smoothness assumption about the data....
∗ Both authors contributed equally to this work. Motivation: Predicting protein function is a centra...
In computational biology, it is common to represent domain knowledge using graphs. Frequently there ...
In many graph-based machine learning and data mining approaches, the quality of the graph is critica...
A common issue in graph learning under the semi-supervised setting is referred to as gradient scarc...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
© 2017, Science Press. All right reserved. Semi-supervised learning algorithm based on non-negative ...
Graph-based algorithms have drawn much attention thanks to their impressive success in semi-supervis...
In many graph-based semi-supervised learning algorithms, edge weights are assumed to be fixed and de...
Motivation: Predicting protein function is a central problem in bioinformatics, and many approaches ...
As for semisupervised learning, both label information and side information serve as pivotal indicat...
In the literature, most existing graph-based semi-supervised learning methods only use the label inf...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
Graph-based learning algorithms including label propagation and spectral clustering are known as the...
Graph-based semi-supervised learning methods are based on some smoothness assumption about the data....
∗ Both authors contributed equally to this work. Motivation: Predicting protein function is a centra...
In computational biology, it is common to represent domain knowledge using graphs. Frequently there ...
In many graph-based machine learning and data mining approaches, the quality of the graph is critica...
A common issue in graph learning under the semi-supervised setting is referred to as gradient scarc...
Graph-based semi-supervised learning has been intensively investigated for a long history. However, ...
Abstract—Graphs play a role in many semi-supervised learn-ing algorithms, where unlabeled samples ar...
© 2017, Science Press. All right reserved. Semi-supervised learning algorithm based on non-negative ...
Graph-based algorithms have drawn much attention thanks to their impressive success in semi-supervis...