使用深度学习的多语种医学文献分类

W. Karaa, Dridi Kawther
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引用次数: 0

摘要

由于网络上有大量可用的文档,查找文档中包含的一组信息等操作已经成为一项艰巨的任务,特别是对于多语言文档。因此,有必要使用性能工具来查找、组织和分类信息。人们提出了多种分类方法来解决这类问题,但这些方法都有局限性,比如信息丢失,词与词之间的关系丢失,这些都会影响分类过程的有效性和性能。因此,本文尝试使用一种基于深度学习的新方法来支持多语言文档分类的想法,特别是在生物医学领域。关键思想是生成文本多语言医学文档的新概念表示,以方便分类任务。在这种情况下,深度学习技术将被用于良好的表示。为了证明我们方法的可行性,我们实现了一个与数据挖掘界越来越关注的领域相关的系统:生物医学领域。使用从生物医学基准语料库(称为Oshumed)中提取的文档进行实验研究,该语料库包含按不同类别分布的文档。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Multilingual Medical Documents using Deep Learning
Due to a large number of documents available on the web, operations such as finding a set of information contained in a document has become a difficult task, especially with multilingual documents. Hence the necessity to have performance tools for finding, organizing and classifying information. A variety of classification methods are proposed to resolve this kind of problem but these techniques suffer from limits such as the loss of information, and the loss of relations between words that affects the effectiveness and the performance of the classification process. So, this paper attempts to support the idea of multilingual document classification, especially in the biomedical domain using a new approach, based on deep learning. The key idea is to generate a new conceptual representation of textual multilingual medical documents to facilitate the classification task. In this context, a deep learning technique will be exploited for a good representation. To show the feasibility of our approach, we implemented a system related to a domain that attracts more and more attention from the data mining community: the biomedical domain. An experimental study is performed, using documents extracted from the biomedical benchmark corpus, called Oshumed, which contains documents distributed by different categories.
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