利用机器学习加强现金管理

Zineb Moubariki, Lahcen Beljadid, Mohammed El Haj Tirari, M. Kaicer, R. Thami
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引用次数: 5

摘要

现金管理是一项复杂的任务,因为它是包括收集、支付、集中、投资和筹资等多种货币活动之间的相互作用,而且它很容易受到来自不同领域的一些不可预测的内部和外部因素的影响。误用或低估可能会导致毁灭性的经济后果。管理现金需要艰苦的方法,估算其规模需要先进而细致的工具。借助机器学习的概念,我们试图构建一个适合公共支出管理领域的智能工具。给出一组正在进行的付款订单,该模型的设想是允许现金管理人员预测在一段时间内需要提取的金额,从而对现金趋势有一个清晰的认识。实验证明了该模型的适用性,并给出了令人鼓舞的预测结果。然而,我们认为仍有未探索的特征需要考虑和利用,以提高模型的性能,特别是准确性,这对关键的财务决策是有价值的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing cash management using machine learning
Cash management is a complicated task since it is the interaction between multiple monetary activities including collections, disbursements, concentration, investments and funding [1], moreover, it can be easily influenced by several unpredictable internal and external factors from different areas. A misuse or underestimation may lead to devastating financial consequences. To manage the cash requires painstaking approaches, to approximate its size requires advanced and meticulous tools.By relying on machine learning concepts, we attempt to build an intelligent tool adapted to the public expenditure management sector. Giving a set of payment orders in progress, the model is conceived to allow the cash managers to predict the amounts to be drawn in a period of time, thus, to have a clear vision over cash trend.The experiments demonstrate the applicability of the model and exhibit encouraging prediction results. Yet, we believe that still there are unexplored features to be considered and leveraged to enhance the model performance and specially the accuracy which is valuable for a crucial financial decision.
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