Computational Modelling for Bankruptcy Prediction: Semantic Data Analysis Integrating Graph Database and Financial Ontology

Natalia Yerashenia, A. Bolotov
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引用次数: 7

Abstract

In this paper, we propose a novel intelligent methodology to construct a Bankruptcy Prediction Computation Model, which is aimed to execute a company's financial status analysis accurately. Based on the semantic data analysis and management, our methodology considers Semantic Database System as the core of the system. It comprises three layers: an Ontology of Bankruptcy Prediction, Semantic Search Engine, and a Semantic Analysis Graph Database system. The Ontological layer defines the basic concepts of the financial risk management as well as the objects that serve as sources of knowledge for predicting a company's bankruptcy. The Graph Database layer utilises a powerful semantic data technology, which serves as a semantic data repository for our model. The article provides a detailed description of the construction of the Ontology and its informal conceptual representation. We also present a working prototype of the Graph Database system, constructed using the Neo4j application, and show the connection between well-known financial ratios. We argue that this methodology which utilises state of the art semantic data management mechanisms enables data processing and relevant computations in a more efficient way than approaches using the traditional relational database. These give us solid grounds to build a system that is capable of tackling the data of any complexity level.
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破产预测的计算建模:整合图数据库和金融本体的语义数据分析
本文提出了一种新的智能方法来构建破产预测计算模型,以准确地执行公司财务状况分析。在语义数据分析和管理的基础上,将语义数据库系统作为系统的核心。它由破产预测本体、语义搜索引擎和语义分析图数据库系统三层组成。本体论层定义了财务风险管理的基本概念,以及作为企业破产预测知识来源的对象。图数据库层利用强大的语义数据技术,作为我们模型的语义数据存储库。本文详细描述了本体的构建及其非正式的概念表示。我们还展示了使用Neo4j应用程序构建的图形数据库系统的工作原型,并展示了众所周知的财务比率之间的联系。我们认为,这种方法利用了最先进的语义数据管理机制,使数据处理和相关计算比使用传统关系数据库的方法更有效。这为我们构建一个能够处理任何复杂程度的数据的系统提供了坚实的基础。
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