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Online named entity recognition method for microtexts in social networking services: A case study of twitter

机译:社交网络服务中微文本的在线命名实体识别方法:以twitter为例

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摘要

Named entity recognition (NER) methods have been regarded as an efficient strategy to extract relevant entities for answering a given query. The aim of this work is to exploit the conventional NER methods for analyzing a large set of microtexts of which lengths are short. Particularly, the microtexts are streaming on online social media, e.g., Twitter. To do so, this paper proposes three properties of contextual associ ation among the microtexts to discover contextual clusters of the microtexts, which can be expected to improve the performance of NER tasks. As a case study, we have applied the proposed NER system to Twitter. Experimental results demonstrate the feasibility of the proposed method (around 90.3% of pre cision) for extracting relevant information in online social network applications.
机译:命名实体识别(NER)方法已被视为提取相关实体以回答给定查询的有效策略。这项工作的目的是利用常规的NER方法来分析大量长度较短的微文本。特别地,微文本在诸如Twitter的在线社交媒体上流式传输。为此,本文提出了微文本之间的上下文关联的三个属性,以发现微文本的上下文聚类,这有望改善NER任务的性能。作为案例研究,我们将提议的NER系统应用于Twitter。实验结果证明了该方法在网络社交网络应用中提取相关信息的可行性(精度约90.3%)。

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