机器学习算法在应收账款管理中的适用性

IF 3.9 Q1 BUSINESS, FINANCE
Marko Kureljusic, Jonas Metz
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引用次数: 2

摘要

对现金流量的准确预测使现金管理更加有效,并使企业能够根据前瞻性信息制定企业规划。虽然大多数公司都意识到这些预测的好处,但许多公司仍然难以确定和实施适当的预测模型。随着机器学习算法的兴起,出现了许多新的预测技术。这些新的预测技术在理论上适用于预测客户的支付行为,但尚未得到充分的研究。本研究旨在通过研究哪种机器学习算法最适合预测客户付款日期来缩小这一研究差距。通过使用各种机器学习算法,作者评估是否可以识别和预测客户的支付行为模式。该研究基于DAX-40公司的真实交易数据,数据集中有超过100万张发票,数据涵盖2017-2019年。研究结果表明,神经网络尤其适用于预测客户的付款日期。此外,作者还证明了上下文和逻辑预测模型比传统的基线模型(如线性和多元回归)可以提供更准确的预测。未来的现金流量预测研究应该纳入naïve预测模型,因为作者证明这些模型可以与现有机器学习研究中使用的传统基线模型竞争。然而,作者预计,随着更多关于客户的深入信息(信誉,会计结构),结果可以进一步改善。对客户未来付款日期的了解使公司能够改变他们的观点,从被动的现金管理转变为主动的现金管理。这种转变导致了一个更有针对性的dunning过程。据作者所知,目前还没有研究通过将naïve预测与基于机器学习和深度学习模型的预测进行比较,将收入预测解释为每日滚动预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The applicability of machine learning algorithms in accounts receivables management
Purpose The accurate prediction of incoming cash flows enables more effective cash management and allows firms to shape firms' planning based on forward-looking information. Although most firms are aware of the benefits of these forecasts, many still have difficulties identifying and implementing an appropriate prediction model. With the rise of machine learning algorithms, numerous new forecasting techniques have emerged. These new forecasting techniques are theoretically applicable for predicting customer payment behavior but have not yet been adequately investigated. This study aims to close this research gap by examining which machine learning algorithm is the most appropriate for predicting customer payment dates. Design/methodology/approach By using various machine learning algorithms, the authors evaluate whether customer payment behavior patterns can be identified and predicted. The study is based on real-world transaction data from a DAX-40 firm with over 1,000,000 invoices in the dataset, with the data covering the period 2017–2019. Findings The authors' results show that neural networks in particular are suitable for predicting customers' payment dates. Furthermore, the authors demonstrate that contextual and logical prediction models can provide more accurate forecasts than conventional baseline models, such as linear and multivariate regression. Research limitations/implications Future cash flow forecasting studies should incorporate naïve prediction models, as the authors demonstrate that these models can compete with conventional baseline models used in existing machine learning research. However, the authors expect that with more in-depth information about the customer (creditworthiness, accounting structure) the results can be even further improved. Practical implications The knowledge of customers' future payment dates enables firms to change their perspective and move from reactive to proactive cash management. This shift leads to a more targeted dunning process. Originality/value To the best of the authors' knowledge, no study has yet been conducted that interprets the prediction of incoming payments as a daily rolling forecast by comparing naïve forecasts with forecasts based on machine learning and deep learning models.
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来源期刊
CiteScore
6.00
自引率
13.30%
发文量
44
期刊介绍: The Journal of Applied Accounting Research provides a forum for the publication of high quality manuscripts concerning issues relevant to the practice of accounting in a wide variety of contexts. The journal seeks to promote a research agenda that allows academics and practitioners to work together to provide sustainable outcomes in a practice setting. The journal is keen to encourage academic research articles which develop a forum for the discussion of real, practical problems and provide the expertise to allow solutions to these problems to be formed, while also contributing to our theoretical understanding of such issues.
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