Hybrid model based on genetic algorithms and neural networks to forecast tax collection: Application using endogenous and exogenous variables

Wilfredo M. Ticona, Karla Figueiredo, M. Vellasco
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引用次数: 9

Abstract

Everywhere in the world tax revenues are rolled back for the commonwealth to invest and finance goods and public services, such as: infrastructure, health, security and education. The predict income revenue (taxes) is one of the challenges that the Secretariat of the Federal Revenue of Brazil (RFB for its Portuguese acronym) has. This is an important challenge since the obtained information is valuable to support the decisions pertaining the federal government financial planning. In this work, it is introduced a hybrid model based on Genetic Algorithms (GAs) and Neural Networks (NNs) for a multi-step forecast of tax revenue collection. The results were more accurate in comparison to the outcome the RFB had estimated with the indicators method. The forecast results using endogenous and exogenous variables were divided into two parts: (i) in 2013 (validation period), there was obtained a Mean Absolute Percentage Error (MAPE) of 2.37% and a decrease of the Relative Error of 11.38% to 0.49%; (ii) in 2014 (testing data set) a decrease of Relative Error of 10.82% to 3.51% was obtained.
基于遗传算法和神经网络的混合模型预测税收:使用内源性和外源性变量的应用
世界各地的税收收入都被收回,以供英联邦投资和资助商品和公共服务,如基础设施、卫生、安全和教育。预测收入(税收)是巴西联邦税收秘书处(葡萄牙语缩写为RFB)面临的挑战之一。这是一个重要的挑战,因为所获得的信息对于支持有关联邦政府财务规划的决策是有价值的。在这项工作中,引入了一种基于遗传算法(GAs)和神经网络(nn)的混合模型,用于税收征收的多步骤预测。与RFB用指标法估计的结果相比,结果更准确。采用内源和外源变量的预测结果分为两部分:(1)2013年(验证期),平均绝对百分比误差(MAPE)为2.37%,相对误差(Relative Error)为11.38% ~ 0.49%;(ii) 2014年(测试数据集)的相对误差降低了10.82% ~ 3.51%。
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