THE NEXUS BETWEEN CASH CONVERSION CYCLE, WORKING CAPITAL FINANCE, AND FIRM PERFORMANCE: EVIDENCE FROM NOVEL MACHINE LEARNING APPROACHES

IF 2 0 ECONOMICS
Faisal Mahmood, Umeair Shahzad, Ali Nazakat, Zahoor Ahmed, Husam Rjoub, Wing-Keung Wong
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引用次数: 1

Abstract

This study examines the moderating role of the cash conversion cycle (CCC) while investigating the effects of working capital finance (WCF) on firm performance. Using more than 18000 observations from Chinese manufacturing firms, we computed several proxies for each variable of the study and merged these proxies via Principal Component Analysis (PCA) to create one master proxy for each variable. These master proxies contain all the essential information of individual proxies. Hence, they are more useful in producing reliable results than individual proxies. We also compared the predicting power of 15 econometric and machine learning estimators to select the best estimator. Based on the highest [Formula: see text] value, we used two machine learning estimators, K-Nearest Neighbors (KNN), and Artificial Neural Networks (ANN) for subsequent analysis. To strengthen the empirical analysis, we employed another machine learning technique, i.e., the Bagging method, which is an ensembling technique that uses multiple estimators simultaneously to improve the accuracy and generalization of results. We used the Bagging method with 50[Formula: see text]KNN estimators. The findings unfold that the sensitivity level of firm performance to short-term debts shifts when the CCC period of firms fluctuates. More precisely, the WCF–performance relationship in firms with extended CCC is more sensitive compared with this relationship in the full sample. On segregating the three elements of CCC, we observe that the WCF–performance relationship in firms carrying extended account receivable (AR) days or extended Inventory days is more sensitive than the full sample. These findings are useful for firms’ management for revising the optimal level of short-term debts according to CCC fluctuation. Also, the lending agencies can use these results for the assessment of firms’ risk levels and adjustment of the interest rate.
现金转换周期、营运资金融资和公司绩效之间的联系:来自新型机器学习方法的证据
本研究考察了现金转换周期(CCC)的调节作用,同时考察了营运资金融资(WCF)对企业绩效的影响。利用来自中国制造企业的18000多个观察结果,我们为研究的每个变量计算了几个代理,并通过主成分分析(PCA)将这些代理合并为每个变量创建一个主代理。这些主代理包含各个代理的所有基本信息。因此,它们在产生可靠的结果方面比单个代理更有用。我们还比较了15个计量经济学和机器学习估计器的预测能力,以选择最佳估计器。基于最高的[公式:见文本]值,我们使用了两个机器学习估计器,k -最近邻(KNN)和人工神经网络(ANN)进行后续分析。为了加强实证分析,我们采用了另一种机器学习技术,即Bagging方法,这是一种集成技术,同时使用多个估计量来提高结果的准确性和泛化。我们使用Bagging方法与50[公式:见文本]KNN估计器。研究发现,企业绩效对短期债务的敏感程度随着企业CCC期的波动而变化。更准确地说,与完整样本中的这种关系相比,具有扩展CCC的公司的wcf -绩效关系更为敏感。在分离CCC的三个要素时,我们观察到,在延长应收账款(AR)天数或延长库存天数的公司中,wcf -绩效关系比全样本更敏感。这些发现对企业管理层根据CCC波动调整短期债务的最优水平有帮助。此外,贷款机构可以利用这些结果来评估企业的风险水平和调整利率。
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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来源期刊
CiteScore
6.60
自引率
55.00%
发文量
30
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