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Bond Default Prediction Based on Deep Learning and Knowledge Graph Technology

机译:基于深度学习和知识图技术的债券默认预测

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摘要

The traditional financial models used in bond default mainly focus on the analysis and prediction of bonds issued by listed companies, and they lack early warning abilities for a large number of bonds of nonlisted companies. At the same time, there is a great deal of relational data and category data in bond data. It is of great significance for bond default prediction to use these data reasonably, which may bring considerable revenue to companies in the near future. Therefore, this paper uses multisource information from bonds and issuers as well as macroeconomic data to predict bond defaults based on a knowledge graph and deep learning technology. On the basis of constructing a bond knowledge graph, knowledge representation learning technology is used to vectorize the knowledge in the graph, and the extracted vectors are inputted into the deep learning model as features to forecast bond default. The applied model is the deep factorization machine model, and good prediction results are obtained.
机译:债券违约中使用的传统金融模式主要关注上市公司发布的债券的分析和预测,而且缺乏大量非股份公司债券的预警能力。与此同时,债券数据中存在大量的关系数据和类别数据。对于合理使用这些数据的债券违约预测具有重要意义,这可能会在不久的将来带来相当大的收入。因此,本文使用来自债券和发行者的多源信息以及宏观经济数据,以基于知识图和深度学习技术来预测债券违约。在构建债券知识图形的基础上,知识表示学习技术用于向矢量化图中的知识,提取的向量被输入到深度学习模型中作为预测债券默认的功能。所应用的模型是深度分解机模型,获得了良好的预测结果。

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