Most of the existing learning models, particularly deep neural networks, are reliant on large datasets whose hand-labeling is expensive and time demanding. A current trend is to make the learning of these models frugal and less dependent on large collections of labeled data. Among the existing solutions, deep active learning is currently witnessing a major interest and its purpose is to train deep networks using as few labeled samples as possible. However, the success of active learning is highly dependent on how critical are these samples when training models. In this paper, we devise a novel active learning approach for label-efficient training. The proposed method is iterative and aims at minimizing a constrained objective function that ...
Labeling a large set of data is expensive. Active learning aims to tackle this problem by asking to ...
Active learning theories and methods have been extensively studied in classical statistical learning...
Active learning (AL) prioritizes the labeling of the most informative data samples. However, the per...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
Deep neural networks have reached very high accuracy on object detection but their success hinges on...
Pool-based active learning (AL) is a promising technology for increasing data-efficiency of machine ...
The manual labeling of natural images is and has always been painstaking and slow process, especiall...
Large, annotated datasets are not widely available in medical image analysis due to the prohibitive ...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
As an important data selection schema, active learning emerges as the essential component when itera...
Models that can actively seek out the best quality training data hold the promise of more accurate, ...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Active learning typically focuses on training a model on few labeled examples alone, while unlabeled...
Labeling a large set of data is expensive. Active learning aims to tackle this problem by asking to ...
Active learning theories and methods have been extensively studied in classical statistical learning...
Active learning (AL) prioritizes the labeling of the most informative data samples. However, the per...
In this work we discuss the problem of active learning. We present an approach that is based on A-op...
Deep neural networks have reached very high accuracy on object detection but their success hinges on...
Pool-based active learning (AL) is a promising technology for increasing data-efficiency of machine ...
The manual labeling of natural images is and has always been painstaking and slow process, especiall...
Large, annotated datasets are not widely available in medical image analysis due to the prohibitive ...
Abstract We discuss a new paradigm for supervised learning that aims at improving the efficiency of ...
Object classification by learning from data is a vast area of statistics and machine learning. Withi...
As an important data selection schema, active learning emerges as the essential component when itera...
Models that can actively seek out the best quality training data hold the promise of more accurate, ...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
Active learning typically focuses on training a model on few labeled examples alone, while unlabeled...
Labeling a large set of data is expensive. Active learning aims to tackle this problem by asking to ...
Active learning theories and methods have been extensively studied in classical statistical learning...
Active learning (AL) prioritizes the labeling of the most informative data samples. However, the per...