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Ontology driven machine learning approach for disease name extraction from Twitter messages

机译:本体驱动的机器学习方法,用于从Twitter消息中提取疾病名称

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Twitter and social media as a whole has great potential as a source of disease surveillance data however the general messiness of tweets presents several challenges for standard information extraction methods. Current methods for disease surveillance on twitter rely on inflexible keyword based approaches that require messages to be pre-filtered on the basis of a disease name which is supplied a priori and are not capable of detecting new ailments. In this paper we present an ontology based machine learning approach to extract disease names and expressions describing ailments from tweets which may be employed as part of a larger general purpose system for automated disease incidence monitoring. We also propose a simple methodology for automatic detection and correction of errors.
机译:Twitter和整个社交媒体作为疾病监测数据的来源具有巨大的潜力,然而,推文的普遍混乱给标准信息提取方法带来了一些挑战。当前在Twitter上进行疾病监视的方法依赖于基于僵化关键字的方法,这些方法要求根据事先提供的疾病名称预先过滤消息,并且无法检测到新的疾病。在本文中,我们提出了一种基于本体的机器学习方法,该方法可从推文中提取描述疾病的疾病名称和表达,并可以将其用作自动化疾病发病率监测的大型通用系统的一部分。我们还提出了一种自动检测和纠正错误的简单方法。

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