Machine learning in accounting: Insight from the March 2023 bank failures

M. Mulyadi, Y. Anwar
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引用次数: 2

Abstract

This research investigates the bank failures in the United States in March 2023, concentrating on the impact of held-to-maturity debt instruments in the event and the implications for accounting methods. Our research deciphers the alleged “accounting loophole” (Farrell, 2023) associated with these securities and provides an in-depth analysis of the associated accounting treatment. We analyze the accounting treatment using the Accounting Standards Codification (ASC) and International Financial Reporting Standards (IFRS). Furthermore, our study employs automated machine learning techniques and the local interpretable model-agnostic explanations (LIME) method to identify key accounting features that could explain bank failures. The research identifies five essential accounting aspects, two of which are related to held-to-maturity assets. The findings underscore the importance of these accounting features in evaluating financial institutions, thereby providing valuable insights for stakeholders, decision-makers, and future research. Our research also advocates for increased transparency and accuracy in accounting practices, via ASC 825 (Financial Accounting Standards Board [FASB], n.d.-a), particularly related to the fair value of held-to-maturity securities.
会计中的机器学习:从2023年3月银行倒闭事件中得出的见解
本研究调查了2023年3月美国的银行倒闭事件,重点研究了持有至到期债务工具在该事件中的影响及其对会计方法的影响。我们的研究破译了与这些证券相关的所谓“会计漏洞”(Farrell, 2023),并对相关的会计处理进行了深入分析。我们使用会计准则编纂(ASC)和国际财务报告准则(IFRS)分析会计处理。此外,我们的研究采用了自动机器学习技术和本地可解释模型不可知解释(LIME)方法来识别可能解释银行倒闭的关键会计特征。该研究确定了五个基本的会计方面,其中两个与持有至到期资产有关。研究结果强调了这些会计特征在评估金融机构中的重要性,从而为利益相关者、决策者和未来的研究提供了有价值的见解。我们的研究还主张通过ASC 825(财务会计准则委员会[FASB], n.d.a)提高会计实践的透明度和准确性,特别是与持有至到期证券的公允价值有关。
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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