利用约束强化学习优化债务回收

N. Abe, Prem Melville, Cezar Pendus, C. Reddy, David L. Jensen, V. P. Thomas, J. Bennett, Gary F. Anderson, Brent R. Cooley, Melissa Kowalczyk, Mark Domick, Timothy Gardinier
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引用次数: 78

摘要

税务机关对征收过程的最佳管理问题是最重要的问题之一,不仅因为它带来的收入,而且作为管理公平税收制度的一种手段。银行和信用卡公司等私营部门类似的收债管理问题也日益引起人们的注意。随着最近数据分析和优化在各个业务领域的成功应用,问题出现了,使用前沿数据建模和优化技术,这些收集过程可以在多大程度上得到改进。在本文中,我们提出并开发了一种基于约束马尔可夫决策过程(MDP)框架的新方法来解决这一问题,并报告了我们在纽约州税务和财政部(NYS DTF)实际部署税收征收优化系统的经验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimizing debt collections using constrained reinforcement learning
The problem of optimally managing the collections process by taxation authorities is one of prime importance, not only for the revenue it brings but also as a means to administer a fair taxing system. The analogous problem of debt collections management in the private sector, such as banks and credit card companies, is also increasingly gaining attention. With the recent successes in the applications of data analytics and optimization to various business areas, the question arises to what extent such collections processes can be improved by use of leading edge data modeling and optimization techniques. In this paper, we propose and develop a novel approach to this problem based on the framework of constrained Markov Decision Process (MDP), and report on our experience in an actual deployment of a tax collections optimization system at New York State Department of Taxation and Finance (NYS DTF).
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