Knowledge Graph Extraction of Business Interactions from News Text for Business Networking Analysis

IF 4 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Machine learning and knowledge extraction Pub Date : 2024-01-07 DOI:10.3390/make6010007
Didier Gohourou, Kazuhiro Kuwabara
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引用次数: 0

Abstract

Network representation of data is key to a variety of fields and their applications including trading and business. A major source of data that can be used to build insightful networks is the abundant amount of unstructured text data available through the web. The efforts to turn unstructured text data into a network have spawned different research endeavors, including the simplification of the process. This study presents the design and implementation of TraCER, a pipeline that turns unstructured text data into a graph, targeting the business networking domain. It describes the application of natural language processing techniques used to process the text, as well as the heuristics and learning algorithms that categorize the nodes and the links. The study also presents some simple yet efficient methods for the entity-linking and relation classification steps of the pipeline.
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从新闻文本中提取商业互动知识图谱,用于商业网络分析
数据的网络表示是包括贸易和商业在内的各种领域及其应用的关键。可用于构建具有洞察力的网络的一个主要数据源是通过网络获得的大量非结构化文本数据。将非结构化文本数据转化为网络的努力催生了不同的研究工作,包括简化流程。本研究介绍了将非结构化文本数据转化为图的管道 TraCER 的设计和实施,目标是商业网络领域。它介绍了用于处理文本的自然语言处理技术的应用,以及对节点和链接进行分类的启发式算法和学习算法。研究还介绍了一些简单而高效的方法,用于管道中的实体链接和关系分类步骤。
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来源期刊
CiteScore
6.30
自引率
0.00%
发文量
0
审稿时长
7 weeks
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