Indonesian news classification application with named entity recognition approach

N. Nurchim, N. Nurmalitasari, Zalizah Awang Long
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引用次数: 0

Abstract

Nowadays, many netizens search for news via search engines with countless amounts of information, so it is increasingly difficult to determine when the number of news articles that appear changes very quickly and dynamically. Thus, it is necessary to process the extraction of news information to display the core information of the news. Problems arise, especially in Indonesian, which has a structure of various noun phrase entities with shallow parsing or grammatical induction. Named Entity Recognition (NER) has the opportunity to overcome this because it can extract news entities in depth, starting from proper nouns in text documents containing information search, machine translation, answering questions, and automatic summarization. This study aims to apply NER in Indonesian language news classification. This study uses Design-Based Research whose process includes (1) pre-implementation, (2) design, (3) implementation and revision, and finally, (4) reflection and evaluation. This application was developed on the platform python, streamlit, BeautifulSoup, gnews, and spacy library. The results of application accuracy testing have an F1-score value of 89.69% for all entities consisting of place, figure, day, date, and organization.
采用命名实体识别方法的印尼语新闻分类应用
如今,许多网民通过搜索引擎搜索信息量巨大的新闻,因此越来越难以确定出现的新闻文章数量何时变化非常迅速和动态。因此,有必要对新闻信息的提取进行处理,以显示新闻的核心信息。问题出现了,尤其是在印尼语中,它有各种名词短语实体的结构,解析或语法归纳很浅。命名实体识别(NER)有机会克服这一点,因为它可以从包含信息搜索、机器翻译、回答问题和自动摘要的文本文档中的专有名词开始,深度提取新闻实体。本研究旨在将NER应用于印尼语新闻分类。本研究采用基于设计的研究,其过程包括(1)预实施,(2)设计,(3)实施和修订,最后,(4)反思和评估。该应用程序是在python、streamlit、BeautifulSoup、gnews和spacy库平台上开发的。对于由地点、数字、日期和组织组成的所有实体,应用程序准确性测试的结果的F1分值为89.69%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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0.00%
发文量
47
审稿时长
6 weeks
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