Active learning methods have been proposed to reduce the labeling effort of human experts: based on the initially available labeled instances and information about the unlabeled data those algorithms choose only the most informative instances for labeling. They have been shown to significantly reduce the size of the required labeled dataset to generate a precise model [17]. However, active learning framework assumes "perfect" labelers, which is not true in practice (e.g., [22, 23]). In particular, an empirical study for hand-written digit recognition [5] has shown that active learning works poorly when a human labeler is used. Thus, as active learning enters the realm of practical applications, it will need to confront the practicalities an...
We extend the traditional active learning framework to include feedback on features in addition to l...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
Acquiring labels for large datasets can be a costly and time-consuming process. This has motivated t...
Active learning methods have been proposed to reduce the labeling effort of human experts: based on ...
Active learning aims to label the most informative data points in order to minimize the cost of lab...
International audienceMost existing active learning methods for classification, assume that the obse...
Supervised machine learning methods are increasingly employed in political science. Such models requ...
Obtaining hand-labeled training data is one of the most tedious and expensive parts of the machine l...
Active learning has been proven a reliable strategy to reduce manual efforts in training data labeli...
We execute a careful study of the effects of feature selection and human feedback on features in act...
Getting correctly labelled data is an important preliminary stage for many supervisedmachine learnin...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
<p>Most classic machine learning methods depend on the assumption that humans can annotate all the d...
The labeling of data sets is a time-consuming task, which is, however, an important prerequisite for...
We extend the traditional active learning framework to include feedback on features in addition to l...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
Acquiring labels for large datasets can be a costly and time-consuming process. This has motivated t...
Active learning methods have been proposed to reduce the labeling effort of human experts: based on ...
Active learning aims to label the most informative data points in order to minimize the cost of lab...
International audienceMost existing active learning methods for classification, assume that the obse...
Supervised machine learning methods are increasingly employed in political science. Such models requ...
Obtaining hand-labeled training data is one of the most tedious and expensive parts of the machine l...
Active learning has been proven a reliable strategy to reduce manual efforts in training data labeli...
We execute a careful study of the effects of feature selection and human feedback on features in act...
Getting correctly labelled data is an important preliminary stage for many supervisedmachine learnin...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
Labeling data instances is an important task in machine learning and visual analytics. Both fields p...
<p>Most classic machine learning methods depend on the assumption that humans can annotate all the d...
The labeling of data sets is a time-consuming task, which is, however, an important prerequisite for...
We extend the traditional active learning framework to include feedback on features in addition to l...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
Acquiring labels for large datasets can be a costly and time-consuming process. This has motivated t...