Efficient training of machine learning algorithms requires a reliable labeled set from the application domain. Usually, data labeling is a costly process. Therefore, a selective approach is desirable. Active learning has been successfully used to reduce the labeling effort, due to its parsimonious process of querying the labeler. Nevertheless, many active learning strategies are dependent on early predictions made by learning algorithms. This might be a major problem when the learner is still unable to provide reliable information. In this context, agnostic strategies can be convenient, since they spare internal learners - usually favoring exploratory queries. On the other hand, prospective queries could benefit from a learning bias. In thi...
International audienceWe study active learning as a derandomized form of sampling. We show that full...
The problem of selecting the best classification algorithm for a specific problem continues to be ve...
Active learning methods have been proposed to reduce the labeling effort of human experts: based on ...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Active learning algorithms attempt to accelerate the learning process by requesting labels for the m...
Active Learning arises as an important issue in several supervised learning scenarios where obtainin...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
AbstractAn active learner has a collection of data points, each with a label that is initially hidde...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Abstract. In many cost-sensitive environments class probability estimates are used by decision maker...
International audienceWe study active learning as a derandomized form of sampling. We show that full...
The problem of selecting the best classification algorithm for a specific problem continues to be ve...
Active learning methods have been proposed to reduce the labeling effort of human experts: based on ...
Efficient training of machine learning algorithms requires a reliable labeled set from the applicati...
Machine learning models are often trained on data sets subject to selection bias. In particular, sel...
Active learning algorithms attempt to accelerate the learning process by requesting labels for the m...
Active Learning arises as an important issue in several supervised learning scenarios where obtainin...
An increased awareness concerning risks of algorithmic bias has driven a surge of efforts around bia...
Active learning is a machine learning technique in which a learning algorithm is able to interactive...
Active learning provides promising methods to optimize the cost of manually annotating a dataset. Ho...
Active machine learning algorithms are used when large numbers of unlabeled examples are available a...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
AbstractAn active learner has a collection of data points, each with a label that is initially hidde...
Traditional supervised machine learning algorithms are expected to have access to a large corpus of ...
Abstract. In many cost-sensitive environments class probability estimates are used by decision maker...
International audienceWe study active learning as a derandomized form of sampling. We show that full...
The problem of selecting the best classification algorithm for a specific problem continues to be ve...
Active learning methods have been proposed to reduce the labeling effort of human experts: based on ...