用简单的语义过滤增强Twitter数据分析:以跟踪流感样疾病为例

S. Doan, L. Ohno-Machado, Nigel Collier
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引用次数: 48

摘要

利用公开可用的用户生成内容(如Twitter消息)的系统在追踪季节性流感方面取得了成功。我们利用Twitter微博上的5.87亿条信息开发了一种新的流感样疾病(ILI)相关信息过滤方法。首先,我们根据BioCaster本体(一个现有的外行术语知识模型)中的综合征关键词对消息进行过滤。然后,我们根据语义特征过滤信息,如否定、标签、表情符号、幽默和地理位置。数据涵盖2009年8月30日至2010年5月8日美国2009年流感季节的36周。结果表明,我们的系统获得了最高的Pearson相关系数98.46% (p值<;2.2e-16),比之前最先进的方法提高了3.98%。结果表明,对现有的挖掘Twitter数据的方法进行简单的基于nlp的增强可以增加这种廉价资源的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Twitter Data Analysis with Simple Semantic Filtering: Example in Tracking Influenza-Like Illnesses
Systems that exploit publicly available user generated content such as Twitter messages have been successful in tracking seasonal influenza. We developed a novel filtering method for Influenza-Like-Ilnesses (ILI)-related messages using 587 million messages from Twitter micro-blogs. We first filtered messages based on syndrome keywords from the BioCaster Ontology, an extant knowledge model of laymen's terms. We then filtered the messages according to semantic features such as negation, hashtags, emoticons, humor and geography. The data covered 36 weeks for the US 2009 influenza season from 30th August 2009 to 8th May 2010. Results showed that our system achieved the highest Pearson correlation coefficient of 98.46% (p-value<;2.2e-16), an improvement of 3.98% over the previous state-of-the-art method. The results indicate that simple NLP-based enhancements to existing approaches to mine Twitter data can increase the value of this inexpensive resource.
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