Diffusion-based semi-supervised learning on graphs consists of diffusing labeled information of a few nodes to infer the labels on the remaining ones. The performance of these methods heavily relies on the initial labeled set, which is either generated randomly or using heuristics. The first sometimes leads to unsatisfactory results because random labeling has no guarantees to label all classes while heuristic methods only yield a good performance when multiple recursive training stages are possible. In this paper, we put forth a new paradigm for one-shot active semi-supervised learning for graph diffusions. We rephrase active learning as the problem of selecting the output labels from a label propagation model. Subsequently, we develop two...
We present various results and methods for measuring uncertainty and applying active learning to gra...
Indexación ScopusIn real-world machine learning applications, unlabeled training data are readily av...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
Diffusion-based semi-supervised learning on graphs consists of diffusing labeled information of a fe...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
We consider the problem of offline, pool-based active semi-supervised learning on graphs. This probl...
Existing approaches for diffusion on graphs, e.g., for label propagation, are mainly focused on isot...
National audienceClassification through Graph-based semi-supervised learning algorithms can be viewe...
Existing approaches for diffusion on graphs, e.g., for label propagation, are mainly focused on isot...
We propose a new objective for graph-based semi-supervised learning based on minimizing the Kullback...
AbstractBoth semi-supervised learning (SSL) and active learning try to use unlabeled data to train h...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
We consider the problem of semi-supervised graphbased learning.Since in semi-supervised settings,the...
Graph diffusion is the process of spreading information from one or few nodes to the rest of the gra...
We present various results and methods for measuring uncertainty and applying active learning to gra...
Indexación ScopusIn real-world machine learning applications, unlabeled training data are readily av...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...
Diffusion-based semi-supervised learning on graphs consists of diffusing labeled information of a fe...
In statistical learning over large data-sets, labeling all points is expensive and time-consuming. S...
In a traditional machine learning task, the goal is training a classifier using only labeled data (d...
We consider the problem of offline, pool-based active semi-supervised learning on graphs. This probl...
Existing approaches for diffusion on graphs, e.g., for label propagation, are mainly focused on isot...
National audienceClassification through Graph-based semi-supervised learning algorithms can be viewe...
Existing approaches for diffusion on graphs, e.g., for label propagation, are mainly focused on isot...
We propose a new objective for graph-based semi-supervised learning based on minimizing the Kullback...
AbstractBoth semi-supervised learning (SSL) and active learning try to use unlabeled data to train h...
This work examines the problem of learning the topology of a network from the samples of a diffusion...
We consider the problem of semi-supervised graphbased learning.Since in semi-supervised settings,the...
Graph diffusion is the process of spreading information from one or few nodes to the rest of the gra...
We present various results and methods for measuring uncertainty and applying active learning to gra...
Indexación ScopusIn real-world machine learning applications, unlabeled training data are readily av...
Recent studies have shown that graph-based approaches are effective for semi-supervised learning. Th...