In natural language acquisition, it is di#- cult to gather the annotated data needed for supervised learning; however, unannotated data is fairly plentiful. Active learning methods attempt to select for annotation and training only the most informative examples, and therefore are potentially very useful in natural language applications. However, existing results for active learning have only considered standard classification tasks
Many natural language processing systems rely on machine learning models that are trained on large a...
Active learning has been applied to different NLP tasks, with the aim of limiting the amount of time...
Data Selection has emerged as a common issue in language technologies. We define Data Selection as t...
In natural language acquisition, it is difficult to gather the annotated data needed for supervised ...
In natural language acquisition, it is difficult to gather the annotated data needed for supervised ...
Active learning is a supervised machine learning technique in which the learner is in control of the...
As supervised machine learning methods for addressing tasks in natural language process-ing (NLP) pr...
As supervised machine learning methods for addressing tasks in natural language processing (NLP) pro...
<p>Most classic machine learning methods depend on the assumption that humans can annotate all the d...
Active learning reduces annotation costs for supervised learning by concentrating labelling efforts ...
The key idea behind active learning is that a machine learning algorithm can achieve greater accurac...
Despite the availability and ease of collecting a large amount of free, unlabeled data, the expensiv...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
We report on an active learning experiment for named entity recognition in the astronomy domain. A...
AbstractSupervised machine learning methods for clinical natural language processing (NLP) research ...
Many natural language processing systems rely on machine learning models that are trained on large a...
Active learning has been applied to different NLP tasks, with the aim of limiting the amount of time...
Data Selection has emerged as a common issue in language technologies. We define Data Selection as t...
In natural language acquisition, it is difficult to gather the annotated data needed for supervised ...
In natural language acquisition, it is difficult to gather the annotated data needed for supervised ...
Active learning is a supervised machine learning technique in which the learner is in control of the...
As supervised machine learning methods for addressing tasks in natural language process-ing (NLP) pr...
As supervised machine learning methods for addressing tasks in natural language processing (NLP) pro...
<p>Most classic machine learning methods depend on the assumption that humans can annotate all the d...
Active learning reduces annotation costs for supervised learning by concentrating labelling efforts ...
The key idea behind active learning is that a machine learning algorithm can achieve greater accurac...
Despite the availability and ease of collecting a large amount of free, unlabeled data, the expensiv...
In recent decades, the availability of a large amount of data has propelled the field of machine lea...
We report on an active learning experiment for named entity recognition in the astronomy domain. A...
AbstractSupervised machine learning methods for clinical natural language processing (NLP) research ...
Many natural language processing systems rely on machine learning models that are trained on large a...
Active learning has been applied to different NLP tasks, with the aim of limiting the amount of time...
Data Selection has emerged as a common issue in language technologies. We define Data Selection as t...