A framework for modelling customer invoice payment predictions

Willem Roux Moore, Jan H. van Vuuren
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引用次数: 0

Abstract

By offering clients attractive credit terms on sales, a company may increase its turnover, but granting credit also incurs the cost of money tied up in accounts receivable (AR), increased administration and a heightened probability of incurring bad debt. The management of credit sales, although eminently important to any business, is often performed manually, which may be time-consuming, expensive and inaccurate. Such an administrative workload becomes increasingly cumbersome as the number of credit sales increases. As a result, a new approach towards proactively identifying invoices from AR accounts that are likely to be paid late, or not at all, has recently been proposed in the literature, with the aim of employing intervention strategies more effectively. Several computational techniques from the credit scoring literature and particularly techniques from the realms of survival analysis or machine learning have been embedded in the aforementioned approach. This body of work is, however, lacking due to the limited guidance provided during the data preparation phase of the model development process and because survival analytic and machine learning techniques have not yet been ensembled. In this paper, we propose a generic framework for modelling invoice payment predictions with the aim of facilitating the process of preparing transaction data for analysis, generating relevant features from past customer behaviours, and selecting and ensembling suitable models for predicting the time to payment associated with invoices. We also introduce a new sequential ensembling approach, called the Survival Boost algorithm. The rationale behind this method is that features generated by a survival analytic model can enhance the efficacy of a machine learning classification algorithm.

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客户发票付款预测建模框架
通过向客户提供有吸引力的赊销条件,公司可以提高营业额,但提供赊销也会产生应收账款(AR)的资金占用成本、管理费用增加以及产生坏账的可能性增大。赊销管理虽然对任何企业都非常重要,但通常都是手工操作,可能费时、费钱且不准确。随着赊销数量的增加,这种管理工作也变得越来越繁琐。因此,最近有文献提出了一种新方法,即从应收账款账户中主动识别可能逾期付款或根本不付款的发票,以便更有效地采用干预策略。上述方法中包含了信用评分文献中的一些计算技术,特别是生存分析或机器学习领域的技术。然而,由于在模型开发过程的数据准备阶段所提供的指导有限,而且生存分析和机器学习技术还没有被组合起来,因此这方面的工作还很欠缺。在本文中,我们提出了建立发票付款预测模型的通用框架,目的是简化准备交易数据进行分析的过程,从过去的客户行为中生成相关特征,并选择和组合合适的模型来预测与发票相关的付款时间。我们还引入了一种新的顺序集合方法,称为 "生存提升算法"。这种方法的原理是,生存分析模型生成的特征可以提高机器学习分类算法的效率。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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审稿时长
98 days
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