Text Mining with Information Extraction for Chinese Financial Knowledge Graph

Yung-Wei Teng, Min-Yuh Day, Pei-Tz Chiu
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Abstract

Financial Documents reveal important financial information about a company's financial performance which plays a vital role not only to the stakeholders but also to the public. Therefore, many researchers utilize dynamic Text mining methods in financial document to identify, analyze, predict or evaluate a company's future financial value. In order to find deeply the relationship between companies and the stakeholders, provide a simplified method for them to identify the future financial performance of the corporation. In this paper, we present a Chinese Information Extraction System (CFIES) for Financial Knowledge Graph (FinKG). The major findings of the research show an increased importance of the key audit matters in finance. The major research contribution of this paper is that we have developed CFIES which can extract the tuples from the financial reports. The adoption of the information system can assist the development of a knowledge graph that can discover deep financial knowledge in the finance domain. The managerial implication is that building CFIES can efficiently enable us to clarify the complicated relationship between the corporations, board of directors, investors, and especially the asset, assisting the stakeholders to discover a new financial knowledge representation and to make a financial decision.
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基于信息抽取的中文金融知识图谱文本挖掘
财务文件揭示了公司财务业绩的重要财务信息,不仅对利益相关者,而且对公众都起着至关重要的作用。因此,许多研究者利用财务文件中的动态文本挖掘方法来识别、分析、预测或评估公司未来的财务价值。为了深入发现公司与利益相关者之间的关系,为他们识别公司未来的财务绩效提供一种简化的方法。本文提出了一种面向金融知识图谱(FinKG)的中文信息抽取系统(CFIES)。研究的主要结果表明,关键审计事项在财务中的重要性日益增加。本文的主要研究贡献是开发了能够从财务报告中提取元组的CFIES。信息系统的采用有助于知识图谱的开发,从而发现金融领域的深层次金融知识。其管理意义在于,建立CFIES可以有效地理清公司、董事会、投资者,尤其是资产之间的复杂关系,帮助利益相关者发现新的金融知识表示,做出财务决策。
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