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PARTIAL ANNOTATION SCHEME FOR ACTIVE LEARNING ON NAMED ENTITY RECOGNITION TASKS

机译:用于任命实体识别任务的活动学习的部分注释方案

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摘要

Active learning is a promising approach to alleviate the expensive annotation cost for making training data on named entity recognition (NER) tasks. However, since existing active learning methods on NER tasks implicitly assume the full annotation scheme of which the unit of an annotation request is the whole sentence, the efficiency of the data instance selection is limited. In this paper, we propose a new active learning method based on a partial annotation scheme, which selects a part of the sentences to be annotated and asks human annotators to label a specific part of the target sentences. In the experiment, we show that the partial annotation scheme can quickly train the proposed point-wise prediction model compared to the existing active learning methods on NER tasks.
机译:积极学习是一种有希望的方法,可以缓解在命名实体识别(ner)任务上进行培训数据的昂贵注释成本。然而,由于NER任务的现有活动学习方法隐含地假设注释请求的单位是整个句子的完整注释方案,所以数据实例选择的效率受到限制。在本文中,我们提出了一种基于部分注释方案的新的主动学习方法,它选择要注释的句子的一部分,并要求人类的注释标记目标句子的特定部分。在实验中,我们表明,与NER任务上的现有主动学习方法相比,部分注释方案可以快速培训所提出的点明智预测模型。

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