结合命名实体识别和关系提取的人物摘要

Xiaojiang Liu, Nenghai Yu
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引用次数: 5

摘要

在Web实体信息摘要中,两个最重要的任务是命名实体识别和关系提取。对于用于理解命名实体及其关系的集成统计模型,人们做的工作很少。之前大多数关于关系提取的工作都假定命名实体是预先给定的。这些序列模型的缺点是关系提取的结果不能用于指导命名实体识别,而命名实体识别已被证明是有用的。本文提出了一种新的集成框架EntSum,通过迭代优化实现了命名实体识别和关系提取的双向集成。在一百万个大型真实Web数据集上的实验表明,EntSum在这两个任务上的性能都比顺序方法好得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
People Summarization by Combining Named Entity Recognition and Relation Extraction
The two most important tasks in entity information summarization from the Web are named entity recognition and relation extraction. Little work has been done toward an integrated statistical model for understanding both named entities and their relationships. Most of the previous works on relation extraction assume the named entities are pre-given. The drawbacks of these sequential models are that the results of relation extraction cannot be used to guide the named entity recognition, which have been proven useful. This paper proposed a novel integrate framework called EntSum, which enables bidirectional integration of named entity recognition and relation extraction using iterative optimization. Experiments on a one million large real Web data set show that EntSum achieves much better performance on both tasks than sequential methods.
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