Improving ontology-based text classification: An occupational health and security application

Q1 Mathematics Journal of Applied Logic Pub Date : 2016-09-01 DOI:10.1016/j.jal.2015.09.008
Nayat Sanchez-Pi , Luis Martí , Ana Cristina Bicharra Garcia
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引用次数: 39

Abstract

Information retrieval has been widely studied due to the growing amounts of textual information available electronically. Nowadays organizations and industries are facing the challenge of organizing, analyzing and extracting knowledge from masses of unstructured information for decision making process. The development of automatic methods to produce usable structured information from unstructured text sources is extremely valuable to them. Opposed to the traditional text classification methods that need a set of well-classified trained corpus to perform efficient classification; the ontology-based classifier benefits from the domain knowledge and provides more accuracy. In a previous work we proposed and evaluated an ontology-based heuristic algorithm [28] for occupational health control process, particularly, for the case of automatic detection of accidents from unstructured texts. Our extended proposal is more domain dependent because it uses technical terms and contrast the relevance of these technical terms into the text, so the heuristic is more accurate. It divides the problem in subtasks such as: (i) text analysis, (ii) recognition and (iii) classification of failed occupational health control, resolving accidents as text analysis, recognition and classification of failed occupational health control, resolving accidents.

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改进基于本体的文本分类:职业健康与安全应用
由于电子文本信息的数量不断增加,信息检索得到了广泛的研究。当前,组织和行业都面临着从大量非结构化信息中组织、分析和提取知识以供决策过程使用的挑战。开发从非结构化文本源生成可用结构化信息的自动方法对他们来说是非常有价值的。与传统的文本分类方法需要一组经过良好分类训练的语料库来进行有效分类不同;基于本体的分类器受益于领域知识并提供更高的准确性。在之前的工作中,我们提出并评估了一种基于本体的启发式算法[28],用于职业健康控制过程,特别是用于从非结构化文本中自动检测事故的情况。我们的扩展提案更依赖于领域,因为它使用了技术术语,并将这些技术术语的相关性与文本进行对比,因此启发式更准确。它将问题划分为以下子任务:(i)文本分析,(ii)识别和(iii)分类失败的职业卫生控制,将事故解析为文本分析,识别和分类失败的职业卫生控制,解决事故。
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来源期刊
Journal of Applied Logic
Journal of Applied Logic COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, THEORY & METHODS
CiteScore
1.13
自引率
0.00%
发文量
0
审稿时长
>12 weeks
期刊介绍: Cessation.
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