Learning Model for Analytical Prediction of Tax Revenues from Tax Invoice Information

Alisson Emanuel Goes d Mendonça, Francisco José da Silva e Silva, L. Coutinho
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Abstract

In Brazil, the tax on goods and services, known by the acronym ICMS, holds significant prominence in the revenue of the federative units, approximately 90%. Its value depends on economic activity, whose tax information the taxpayers record in electronic invoices issued to the tax agencies. This paper proposes a learning architecture to predict ICMS revenue through a dataset derived from tax information. The learning architecture uses a segmented approach that starts with splitting the training and validation datasets according to a given parameter. After that, the architecture fits several machine learning models for each split subset (segment). Finally, the architecture chooses the fit machine learning model (learning instance) that produces the best prediction result for each segment. These learning instances compose a hybrid instance set to predict the records of a test dataset. The proposed architecture reduced the error compared to the traditional non-segmented approaches tested (by 18.40%) and to the current methodology of the tax agency that supported this research (by 51.90%). The low prediction error suggests that the model holds promise in estimating revenue.
从税务发票信息中分析预测税收收入的学习模型
在巴西,商品和服务税(英文缩写为 ICMS)在联邦单位的收入中占有重要地位,约占 90%。其价值取决于经济活动,纳税人在向税务机构开具的电子发票中记录了这些活动的纳税信息。本文提出了一种学习架构,可通过税务信息数据集预测 ICMS 收入。该学习架构采用分段式方法,首先根据给定参数拆分训练数据集和验证数据集。然后,该架构为每个分割子集(分段)拟合多个机器学习模型。最后,该架构选择能为每个分段产生最佳预测结果的拟合机器学习模型(学习实例)。这些学习实例组成一个混合实例集,用于预测测试数据集的记录。与测试过的传统非分段方法相比(误差减少了 18.40%),与支持这项研究的税务机构的现行方法相比(误差减少了 51.90%),所提出的架构减少了误差。低预测误差表明,该模型在估算收入方面大有可为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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