使用机器学习管道预测银行业时间序列

O. Gorodetskaya, Y. Gobareva, M. Koroteev
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引用次数: 2

摘要

本文致力于机器学习方法在解决银行业优化问题中的应用。对时间序列预测方法在经济学和金融学中的应用进行了文献分析。提出了一种自动模式下预测大量非平稳时间序列的通用方案。考虑使用所开发的场景来解决特定的银行任务以提高业务效率,包括优化对atm的需求、预测呼叫中心和现金中心的负载。这篇文章将有助于专家处理预测经济时间序列的问题,学生和研究人员,因为大量的链接系统的文献综述这一主题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecasting Time Series in the Banking Sector Using a Machine Learning Pipeline
This article is devoted to the applications of machine learning methods for solving optimization problems in the banking sector. The literature analysis on the application of methods for forecasting time series in economics and finance is presented. A universal scenario for forecasting a large number of non-stationary time series in automatic mode has been developed. The use of the developed scenario for solving specific banking tasks to improve business efficiency, including optimizing demand for ATMs, forecasting the load on the call center and cash center, is considered. This article will be helpful for specialists dealing with the problem of forecasting economic time series and students and researchers due to a large number of links to systematic literature reviews on this topic.
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