Financial reporting quality and its determinants: A machine learning approach

Dau Hoang Hung, V. T. T. Binh, D. Hung, H. Ha, Nguyen Viet Ha, Vu Thi Thuy Van
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Abstract

The high-quality of financial reporting provides suitable information for economic decision-making of the country whilst, the low quality of financial reporting causes a serious impact on the economy. This research aims to classify financial reporting quality (FRQ) as well as determines the drivers of FRQ. This study uses a panel dataset from 2014 to 2020 that is collected from the Vietnamese listed companies. The study applies machine learning algorithms to classify and assess FRQ of non-financial companies on the Vietnamese stock exchange. New contribution considers the FRQ, on the auditor's opinion and the variance between pre-audit and post-audit profit. This research classifies FRQ into normal and poor categories, and a rate of 9.35% in the sample is considered poor FRQ. This research shows that the return on assets’ ratio and the ownership concentration have the most important influence on FRQ. Furthermore, the results which are predicting FRQ by using the random forest algorithm have an accuracy rate of 94%. This study is valuable for the forecast of FRQ and for the support of stakeholders in decision-making. With the high accuracy of machine learning techniques and its usage, it can help analysts and investors in generating reliable accounting information for decision-making purposes. Corporate sector needs to pay attention towards financial ratios and reinforcement of corporate governance.
财务报告质量及其决定因素:机器学习方法
高质量的财务报告为国家的经济决策提供了合适的信息,而低质量的财务报告则对经济产生了严重的影响。本研究旨在对财务报告质量进行分类,并确定财务报告质量的驱动因素。本研究使用2014 - 2020年越南上市公司的面板数据集。该研究应用机器学习算法对越南证券交易所非金融公司的财务状况进行分类和评估。新的贡献考虑了FRQ、审计人员的意见以及审计前和审计后利润之间的差异。本研究将FRQ分为正常和差两类,样本中9.35%为差FRQ。研究表明,资产收益率和股权集中度对企业财务状况的影响最为重要。此外,使用随机森林算法预测FRQ的结果准确率达到94%。本研究对预测FRQ和利益相关者的决策提供了一定的参考价值。凭借机器学习技术及其使用的高准确性,它可以帮助分析师和投资者为决策目的生成可靠的会计信息。企业部门需要关注财务比率和加强公司治理。
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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