Adversarial Semi-supervised Learning for Corporate Credit Ratings

Bojing Feng, Wenfang Xue
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引用次数: 1

Abstract

Corporate credit rating is an analysis of credit risks withina corporation, which plays a vital role during the management of financial risk. Traditionally, the rating assessment process based on the historical profile of corporation is usually expensive and complicated, which often takes months. Therefore, most of the corporations, duetothelack in money and time, can’t get their own credit level. However, we believe that although these corporations haven’t their credit rating levels (unlabeled data), this big data contains useful knowledgeto improve credit system. In this work, its major challenge lies in how to effectively learn the knowledge from unlabeled data and help improve the performance of the credit rating system. Specifically, we consider the problem of adversarial semi-supervised learning (ASSL) for corporate credit rating which has been rarely researched before. A novel framework adversarial semi-supervised learning for corporate credit rating (ASSL4CCR) which includes two phases is proposed to address these problems. In the first phase, we train a normal rating system via a machine-learning algorithm to give unlabeled data pseudo rating level. Then in the second phase, adversarial semi-supervised learning is applied uniting labeled data and pseudo-labeleddatato build the final model. To demonstrate the effectiveness of the proposed ASSL4CCR, we conduct extensive experiments on the Chinese public-listed corporate rating dataset, which proves that ASSL4CCR outperforms the state-of-the-art methods consistently.
企业信用评级的对抗性半监督学习
企业信用评级是对企业内部信用风险的分析,在财务风险管理中起着至关重要的作用。传统上,基于公司历史概况的评级评估过程通常是昂贵和复杂的,通常需要数月的时间。因此,大多数企业由于缺乏资金和时间,无法获得自己的信用水平。然而,我们认为,虽然这些企业没有他们的信用评级水平(未标记数据),但这些大数据包含了有用的知识,以完善信用体系。在这项工作中,其主要挑战在于如何有效地从未标记数据中学习知识,并帮助提高信用评级系统的性能。具体来说,我们考虑了以前很少研究的对抗性半监督学习(ASSL)用于企业信用评级的问题。为了解决这些问题,提出了一种新的企业信用评级的对抗性半监督学习框架(ASSL4CCR)。在第一阶段,我们通过机器学习算法训练一个正常的评级系统,给未标记的数据伪评级水平。然后,在第二阶段,将标记数据和伪标记数据结合起来,应用对抗性半监督学习来构建最终模型。为了证明所提出的ASSL4CCR的有效性,我们在中国上市公司评级数据集上进行了广泛的实验,证明ASSL4CCR始终优于最先进的方法。
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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