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A Delphi-based rough sets fusion model for extracting payment rules of vehicle license tax in the government sector

机译:基于Delphi的粗糙集融合模型提取政府部门的机动车牌照税支付规则。

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摘要

It is a problematic issue faced by the government sector to effectively discover potentially owed taxes (overdue payments) and continually promote the principle of taxation justices. However, due to the high economic development over the past 30 years in Taiwan, the quantity of vehicles recorded contingent with the mounds of data generated and collected in the Tax Bureau is growing at a fast rate concurrently; therefore, the mission-critical nature of the data and the speed with which analyses need to be made now increase the requirements for a more reliable way to dig out a government's taxation information hidden. Based on the reasons above, this study proposes a hybrid model, which combines the Delphi method and rough sets classifier approaches, for intelligently classifying the vehicle license tax payment (called VLTP) to solve real-world problems that are faced by taxation agencies. The proposed hybrid model is illustrated by examining a practically collected dataset, and the experimental results reveal that this hybrid model outperforms the listing methods in terms of accuracy and its standard deviation. More importantly, the output created by rough sets LEM2 (Learning from Examples Module, version 2) algorithm is a set of comprehensible and meaningful rules applied readily in knowledge-based systems of payment classification of vehicle license tax for tax authority.
机译:有效地发现潜在的欠税(逾期未付)并不断推广税收司法原则是政府部门面临的一个有问题的问题。但是,由于台湾过去30年的高速发展,根据税务局生成和收集的大量数据记录的车辆数量正在快速增长。因此,数据的关键任务性质和进行分析的速度现在增加了对更可靠的方式来挖掘隐藏的政府税收信息的需求。基于上述原因,本研究提出了一种混合模型,该模型结合了Delphi方法和粗糙集分类器方法,用于智能分类车牌税(称为VLTP),以解决税务机构面临的现实问题。通过检查实际收集的数据集说明了提出的混合模型,实验结果表明,该混合模型在准确性和标准偏差方面优于列表方法。更重要的是,由粗糙集LEM2(从示例模块中学习,版本2)算法创建的输出是一组易于理解和有意义的规则,可轻松应用于基于知识的税务部门对车牌税进行支付分类。

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