使用机器学习算法对 COVID-19 文档进行多类分类。

IF 2.3 3区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Gollam Rabby, Petr Berka
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引用次数: 0

摘要

在大多数生物医学研究论文语料库中,文档分类是一项至关重要的任务。即使是在全球流行病肆虐的情况下,对于各领域的研究人员来说,如何从大量生物医学研究论文中准确、快速地找出相关的科研论文也是一项至关重要的任务。它还能帮助学习者或研究人员将研究论文归入适当的类别,并在很短的时间内找到相关的研究论文。生物医学文档分类器的设计需要与 "一般 "文本分类器不同,因为它不仅依赖于文本本身(即标题和摘要),还可以利用其他信息,如利用一些医学分类标准或文献计量数据提取的实体。这项研究的主要目的是找出影响生物医学文档分类任务的信息或特征类型以及表示方法。为此,我们利用从标题、摘要和文献计量数据中提取的不同类型的特征,对传统文本分类方法进行了多次实验。这些过程包括数据清理、特征工程和多类分类。我们创建了 11 种不同的输入数据表,并使用 10 种机器学习算法进行了分析。我们还评估了这些模型的数据效率和可解释性,它们是任何生物医学研究论文分类系统的基本特征,特别适用于处理与 COVID-19 相关的健康危机。我们的主要发现是 TF-IDF 表示法优于实体提取方法,摘要本身也为正确分类提供了足够的信息。在所使用的机器学习算法中,随机森林和神经网络(BERT)在各种形式的文档表示中表现最佳。我们的研究结果为生物医学文档分类从业人员提供了具体指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Multi-class classification of COVID-19 documents using machine learning algorithms.

Multi-class classification of COVID-19 documents using machine learning algorithms.

Multi-class classification of COVID-19 documents using machine learning algorithms.

Multi-class classification of COVID-19 documents using machine learning algorithms.

In most biomedical research paper corpus, document classification is a crucial task. Even due to the global epidemic, it is a crucial task for researchers across a variety of fields to figure out the relevant scientific research papers accurately and quickly from a flood of biomedical research papers. It can also assist learners or researchers in assigning a research paper to an appropriate category and also help to find the relevant research paper within a very short time. A biomedical document classifier needs to be designed differently to go beyond a "general" text classifier because it's not dependent only on the text itself (i.e. on titles and abstracts) but can also utilize other information like entities extracted using some medical taxonomies or bibliometric data. The main objective of this research was to find out the type of information or features and representation method creates influence the biomedical document classification task. For this reason, we run several experiments on conventional text classification methods with different kinds of features extracted from the titles, abstracts, and bibliometric data. These procedures include data cleaning, feature engineering, and multi-class classification. Eleven different variants of input data tables were created and analyzed using ten machine learning algorithms. We also evaluate the data efficiency and interpretability of these models as essential features of any biomedical research paper classification system for handling specifically the COVID-19 related health crisis. Our major findings are that TF-IDF representations outperform the entity extraction methods and the abstract itself provides sufficient information for correct classification. Out of the used machine learning algorithms, the best performance over various forms of document representation was achieved by Random Forest and Neural Network (BERT). Our results lead to a concrete guideline for practitioners on biomedical document classification.

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来源期刊
Journal of Intelligent Information Systems
Journal of Intelligent Information Systems 工程技术-计算机:人工智能
CiteScore
7.20
自引率
11.80%
发文量
72
审稿时长
6-12 weeks
期刊介绍: The mission of the Journal of Intelligent Information Systems: Integrating Artifical Intelligence and Database Technologies is to foster and present research and development results focused on the integration of artificial intelligence and database technologies to create next generation information systems - Intelligent Information Systems. These new information systems embody knowledge that allows them to exhibit intelligent behavior, cooperate with users and other systems in problem solving, discovery, access, retrieval and manipulation of a wide variety of multimedia data and knowledge, and reason under uncertainty. Increasingly, knowledge-directed inference processes are being used to: discover knowledge from large data collections, provide cooperative support to users in complex query formulation and refinement, access, retrieve, store and manage large collections of multimedia data and knowledge, integrate information from multiple heterogeneous data and knowledge sources, and reason about information under uncertain conditions. Multimedia and hypermedia information systems now operate on a global scale over the Internet, and new tools and techniques are needed to manage these dynamic and evolving information spaces. The Journal of Intelligent Information Systems provides a forum wherein academics, researchers and practitioners may publish high-quality, original and state-of-the-art papers describing theoretical aspects, systems architectures, analysis and design tools and techniques, and implementation experiences in intelligent information systems. The categories of papers published by JIIS include: research papers, invited papters, meetings, workshop and conference annoucements and reports, survey and tutorial articles, and book reviews. Short articles describing open problems or their solutions are also welcome.
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