Labeled data can be expensive to acquire in several application domains, including medical imaging, robotics, and computer vision. To efficiently train machine learning models under such high labeling costs, active learning (AL) judiciously selects the most informative data instances to label on-the-fly. This active sampling process can benefit from a statistical function model, that is typically captured by a Gaussian process (GP). While most GP-based AL approaches rely on a single kernel function, the present contribution advocates an ensemble of GP models with weights adapted to the labeled data collected incrementally. Building on this novel EGP model, a suite of acquisition functions emerges based on the uncertainty and disagreement ru...
Active learning (AL) is a branch of machine learning that deals with problems where unlabeled data i...
How can and should an agent actively learn a function? Psychological theories about function learnin...
Active learning aims to train a classifier as fast as possible with as few labels as possible. The c...
In this work, we face the problem of training sample collection for the estimation of biophysical pa...
International audienceIn the context of Active Learning for classification, the classification error...
Discriminative methods for visual object category recognition are typically non-probabilistic, predi...
Abstract. Active learning is an essential tool to reduce manual anno-tation costs in the presence of...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
We present a novel adaptation of active learning to graph-based semi-supervised learning (SSL) under...
This paper addresses the problem of active learning of a multi-output Gaussian process (MOGP) model ...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Abstract We present a noise resilient probabilistic model for active learning of a Gaussian process ...
Optimal active learning refers to a framework where the learner actively selects data points to be a...
Abstract. In this paper, we introduce a new general strategy for active learning. The key idea of ou...
What data should we gather to learn about the underlying structure of the world as quickly as possib...
Active learning (AL) is a branch of machine learning that deals with problems where unlabeled data i...
How can and should an agent actively learn a function? Psychological theories about function learnin...
Active learning aims to train a classifier as fast as possible with as few labels as possible. The c...
In this work, we face the problem of training sample collection for the estimation of biophysical pa...
International audienceIn the context of Active Learning for classification, the classification error...
Discriminative methods for visual object category recognition are typically non-probabilistic, predi...
Abstract. Active learning is an essential tool to reduce manual anno-tation costs in the presence of...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
We present a novel adaptation of active learning to graph-based semi-supervised learning (SSL) under...
This paper addresses the problem of active learning of a multi-output Gaussian process (MOGP) model ...
With the advent of the Internet and growth of storage capabilities, large collections of unlabelled ...
Abstract We present a noise resilient probabilistic model for active learning of a Gaussian process ...
Optimal active learning refers to a framework where the learner actively selects data points to be a...
Abstract. In this paper, we introduce a new general strategy for active learning. The key idea of ou...
What data should we gather to learn about the underlying structure of the world as quickly as possib...
Active learning (AL) is a branch of machine learning that deals with problems where unlabeled data i...
How can and should an agent actively learn a function? Psychological theories about function learnin...
Active learning aims to train a classifier as fast as possible with as few labels as possible. The c...