基于机器学习的会计预测大数据分析

W. Zhai, Guanlin Wu, Weidong Bao, Liyuan Niu
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引用次数: 1

摘要

人工智能、大数据等技术将给传统的会计和审计流程带来变革意义,但这些技术在会计和审计领域的具体应用方法的相关研究基本还是空白。本文结合蚂蚁金服余额宝业务的500万条用户行为信息,以预测公司日资金流入总量为目标,探讨机器学习方法在人工智能会计预测中的价值及具体实现方法。此外,基于应用实例的构建以及机器学习方法与传统会计预测方法的比较,本文也为机器学习方法在会计领域的应用提供了理论支持。本研究结果表明,与传统会计相比,机器学习是一种非常特殊的预测问题的方法,因为它在一定程度上超越了现有的会计信息模型。虽然利用数据支持会计预测已有很长的历史,但通过人工智能机器学习进行会计预测的深度、广度、性价比和潜力都是前所未有的。机器学习技术的基本目标是帮助各种各样的组织使用现代数据集来获得有价值的见解,这在一定程度上与会计在过去的业务运营中所扮演的角色一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Big Data Analysis of Accounting Forecasting Based on Machine Learning
Artificial intelligence, big data and other technologies will bring transformative significance to the traditional accounting and audit process, but the relevant research on the specific application methods of such technologies in the field of accounting and audit is still basically blank. In this paper, we combine 5 million pieces of user behavior information of Ant Financials’ Yu Ebao business to predict the company’s total daily capital inflow as the goal, and discuss the value of machine learning method in artificial intelligence in accounting prediction and specific implementation methods. In addition, based on the construction of application examples and the comparison between machine learning method and traditional method for accounting prediction, this paper also provides theoretical support for the application of machine learning method in the field of accounting. The results of this study show that machine learning is a very special method to predict the problem compared with traditional accounting, because it transcends the existing accounting information model to some extent. Although there has been a long history of using data to support accounting prediction, the depth, breadth, cost performance and potential of accounting prediction through artificial intelligence machine learning are unprecedented. The fundamental goal of machine learning technologies is to help a wide variety of organizations use modern data sets to gain valuable insights, and this is partly in line with the role that accounting has played in business operations in the past.
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