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首页> 外文期刊>Journal of Big Data >Ontology boosted deep learning for disease name extraction from Twitter messages
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Ontology boosted deep learning for disease name extraction from Twitter messages

机译:本体论促进了从Twitter消息中提取疾病名称的深度学习

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摘要

Abstract This paper presents an ontology based deep learning approach for extracting disease names from Twitter messages. The approach relies on simple features obtained via conceptual representations of messages to obtain results that out-perform those from word level models. The significance of this development is that it can potentially reduce the cost of generating named entity recognition models by reducing the cost of annotating training data since ontology creation is a one-time cost as the conceptual level the ontology is meant to be fairly static and reusable. This is of great importance when it comes to social media text like Twitter messages where you have a large, unbounded lexicon with spatial and temporal variations and other inherent biases that make it logistically untenable to annotate a representative amount of text for general purpose models for live applications.
机译:摘要本文提出了一种基于本体的深度学习方法,用于从Twitter消息中提取疾病名称。该方法依靠通过消息的概念表示获得的简单功能来获得优于词级模型的结果。此开发的意义在于,由于本体的创建是一次性的成本,因为本体的概念级别是静态的并且可重用,因此它可以通过减少注释训练数据的成本来潜在地减少生成命名实体识别模型的成本。 。当涉及到Twitter消息之类的社交媒体文本时,这是非常重要的,因为您有一个庞大的,无边界的词典,具有时空变化和其他固有偏差,从逻辑上讲,为通用通用模型注释大量的代表性文本是站不住脚的应用程序。

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