Selective sampling is an active variant of online learning in which the learner is allowed to adaptively query the label of an observed example. The goal of selective sampling is to achieve a good trade-off between prediction performance and the number of queried labels. Existing selective sampling al-gorithms are designed for vector-based data. In this paper, motivated by the ubiquity of graph representations in real-world applications, we propose to study selective sampling on graphs. We first present an online version of the well-known Learning with Local and Global Consistency method (OLLGC). It is essentially a second-order online learning al-gorithm, and can be seen as an online ridge regression in the Hilbert space of functions defin...
Most existing sampling algorithms on graphs (i.e., network-structured data) focus on sampling from m...
Many technological, socio-economic, environmental, biomedical phenomena exhibit an underlying graph ...
We model the sampling and recovery of clustered graph signals as a reinforcement learning (RL) probl...
Selective sampling is an active variant of online learning in which the learner is allowed to adapti...
Abstract—Traditional online learning algorithms are designed for vector data only, which assume that...
We are living in the Internet Age, in which information entities and objects are interconnected, the...
Motivated by a problem of targeted advertising in social networks, we introduce a new model of onlin...
AbstractMotivated by a problem of targeted advertising in social networks, we introduce a new model ...
We consider the problem of offline, pool-based active semi-supervised learning on graphs. This probl...
When data have a complex manifold structure or the characteristics of data evolve over time, it is u...
We propose a sampling theory for signals that are supported on either directed or undirected graphs....
We study the task of finding good local optima in combinatorial optimization problems. Although comb...
The aim of this paper is to propose optimal sampling strategies for adaptive learning of signals def...
A selective sampling algorithm is a learning algorithm for classification that, based on the past ob...
A selective sampling algorithm is a learning algorithm for classification that, based on the past o...
Most existing sampling algorithms on graphs (i.e., network-structured data) focus on sampling from m...
Many technological, socio-economic, environmental, biomedical phenomena exhibit an underlying graph ...
We model the sampling and recovery of clustered graph signals as a reinforcement learning (RL) probl...
Selective sampling is an active variant of online learning in which the learner is allowed to adapti...
Abstract—Traditional online learning algorithms are designed for vector data only, which assume that...
We are living in the Internet Age, in which information entities and objects are interconnected, the...
Motivated by a problem of targeted advertising in social networks, we introduce a new model of onlin...
AbstractMotivated by a problem of targeted advertising in social networks, we introduce a new model ...
We consider the problem of offline, pool-based active semi-supervised learning on graphs. This probl...
When data have a complex manifold structure or the characteristics of data evolve over time, it is u...
We propose a sampling theory for signals that are supported on either directed or undirected graphs....
We study the task of finding good local optima in combinatorial optimization problems. Although comb...
The aim of this paper is to propose optimal sampling strategies for adaptive learning of signals def...
A selective sampling algorithm is a learning algorithm for classification that, based on the past ob...
A selective sampling algorithm is a learning algorithm for classification that, based on the past o...
Most existing sampling algorithms on graphs (i.e., network-structured data) focus on sampling from m...
Many technological, socio-economic, environmental, biomedical phenomena exhibit an underlying graph ...
We model the sampling and recovery of clustered graph signals as a reinforcement learning (RL) probl...