Fine-grained General Entity Typing in German using GermaNet

Sabine Weber, Mark Steedman
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引用次数: 1

Abstract

Fine-grained entity typing is important to tasks like relation extraction and knowledge base construction. We find however, that fine-grained entity typing systems perform poorly on general entities (e.g. “ex-president”) as compared to named entities (e.g. “Barack Obama”). This is due to a lack of general entities in existing training data sets. We show that this problem can be mitigated by automatically generating training data from WordNets. We use a German WordNet equivalent, GermaNet, to automatically generate training data for German general entity typing. We use this data to supplement named entity data to train a neural fine-grained entity typing system. This leads to a 10% improvement in accuracy of the prediction of level 1 FIGER types for German general entities, while decreasing named entity type prediction accuracy by only 1%.
使用GermaNet在德语中进行细粒度一般实体键入
细粒度实体类型对于关系提取和知识库构建等任务非常重要。然而,我们发现,与命名实体(例如“巴拉克•奥巴马”)相比,细粒度实体类型系统在一般实体(例如“前总统”)上的表现较差。这是由于现有训练数据集中缺乏一般实体。我们表明,这个问题可以通过从WordNets自动生成训练数据来缓解。我们使用德语WordNet等效的GermaNet来自动生成德语通用实体类型的训练数据。我们使用这些数据来补充命名实体数据来训练神经细粒度实体类型系统。这导致德国一般实体的1级FIGER类型预测精度提高了10%,而命名实体类型预测精度仅降低了1%。
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