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Tax payment default prediction using genetic algorithm-based variable selection

机译:基于遗传算法的变量选择的纳税违约预测

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According to the statistics from the Finnish tax authorities, about 12% of all active firms in Finland had unpaid taxes at the end of year 2015. In monetary terms, this translates to over 3 billion euros in unpaid taxes. This is a highly significant amount as the total amount of taxes collected during 2015 was 49 billion euros. Considering the economic significance of the unpaid taxes, relatively little research has been done on identifying tax defaulting firms. The objective of this study is to develop a genetic algorithm based decision support tool for predicting tax payment defaults. More closely, a genetic algorithm is used for determining an optimal or near optimal subset of variables for a linear discriminant analysis (LDA) model that classifies the examined firms as either defaulting or non-defaulting. The tool also provides information about the importance of various variables in predicting a tax default. The dataset consists of Finnish limited liability firms that have defaulted on employer contribution taxes or on value added taxes and the total number of available variables is 72. The results show that variables measuring solvency, liquidity and payment period of trade payables are important variables in predicting tax defaults. The best performing model comprises three non-linearly transformed variables and has a predictive accuracy of 73.8%. (C) 2017 Elsevier Ltd. All rights reserved.
机译:根据芬兰税务机关的统计,截至2015年底,芬兰所有活跃公司中约有12%的公司未缴税款。按货币计算,这意味着超过30亿欧元的未缴税款。这是一个非常重要的数字,因为2015年征收的税收总额为490亿欧元。考虑到未缴税款的经济意义,关于识别违约公司的研究相对较少。这项研究的目的是开发一种基于遗传算法的决策支持工具,用于预测纳税违约情况。更紧密地,遗传算法用于确定线性判别分析(LDA)模型的变量的最佳或接近最佳子集,该模型将被检查企业分类为违约或非违约。该工具还提供有关各种变量在预测税收违约中的重要性的信息。该数据集由芬兰有限责任公司组成,这些公司拖欠了雇主缴纳的税款或增值税,并且可用变量的总数为72。结果表明,衡量偿付能力,流动性和应付账款支付期限的变量是预测的重要变量。税收违约。表现最佳的模型包括三个非线性转换的变量,预测精度为73.8%。 (C)2017 Elsevier Ltd.保留所有权利。

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