论文标题
在财务报表中学习抽样审核使用矢量量化自动编码器神经网络
Learning Sampling in Financial Statement Audits using Vector Quantised Autoencoder Neural Networks
论文作者
论文摘要
对财务报表的审核旨在收集合理的保证,即发行的声明没有物质错误陈述“真实和公平的演示”。国际审计标准要求评估陈述的“基本会计相关交易,称为“日记帐分录”,以检测潜在的错误陈述。为了有效地审核此类条目的数量增加,审计师会定期进行基于样本的评估,称为“审计抽样”。但是,审计抽样的任务通常是在整个审核过程的早期进行的。通常,在一个阶段,审核员可能不知道所有生成因素及其动态,从而导致日记帐分录审计的范围内。为了克服这一挑战,我们提出了矢量定量变量自动编码器(VQ-VAE)神经网络的应用。我们根据两个现实世界的付款数据集证明了这种人工神经网络能够学习会计数据的定量表示。我们表明,在财务报表审核中,学到的定量发现了(i)变异和(ii)的潜在因素可以用作高度代表性的审计样本。
The audit of financial statements is designed to collect reasonable assurance that an issued statement is free from material misstatement 'true and fair presentation'. International audit standards require the assessment of a statements' underlying accounting relevant transactions referred to as 'journal entries' to detect potential misstatements. To efficiently audit the increasing quantities of such entries, auditors regularly conduct a sample-based assessment referred to as 'audit sampling'. However, the task of audit sampling is often conducted early in the overall audit process. Often at a stage, in which an auditor might be unaware of all generative factors and their dynamics that resulted in the journal entries in-scope of the audit. To overcome this challenge, we propose the application of Vector Quantised-Variational Autoencoder (VQ-VAE) neural networks. We demonstrate, based on two real-world city payment datasets, that such artificial neural networks are capable of learning a quantised representation of accounting data. We show that the learned quantisation uncovers (i) the latent factors of variation and (ii) can be utilised as a highly representative audit sample in financial statement audits.