基于改进模糊神经网络的税收评估研究

Jingjing Wang, Xiaoqing Yu, Pengfei Li
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引用次数: 2

摘要

目前,税收考核指标体系的建立和维护还处于人工操作阶段。税收评估的准确性依赖于官员的判断和分析,这给他们带来了巨大的工作量。此外,评价结果受人为因素影响,不可靠。为了改进税收评估,本文提出了一种基于PSO-FNN-Adaboost的税收评估模型。该模型首先采用粒子群算法对模糊神经网络(FNN)弱分类器进行优化,然后利用Adaboost将多个PSO-FNN弱分类器组合成一个强分类器。设计了实验来验证所提出的模型。对基于PSO-FNN-Adaboost方法的原始模型进行训练,得到评价等级的分类模型。然后对分类模型进行检验。实验结果表明,该模型提高了税收评估的预测性能。与单个PSO-FNN弱分类器相比,PSO-FNN- adaboost强分类器的准确率提高了5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research of tax assessment based on improved Fuzzy Neural Network
Recently, establishment and maintenance of the tax assessment indicators system is still in the stage of manual operation. The accuracy of tax assessment depends on the officials' judgment and analysis which bring them huge amount of work. Furthermore, the evaluation results are affected by manual factors and not reliable. To improve tax assessment, this paper proposes a tax assessment model based on PSO-FNN-Adaboost. In this proposed model, PSO (Particle Swarm Optimization) is used to optimize FNN (Fuzzy Neural Network) weak classifier, and then Adaboost is utilized to combine multiple PSO-FNN weak classifiers into a strong classifier. The experiment is designed to validate the proposed model. The original model based on PSO-FNN-Adaboost method is trained to get the classification model of the assessment levels. Then the classification model is tested. The experimental results show that the proposed model improved the prediction performance of tax assessment. Compared with single PSO-FNN weak classifier, the accuracy of PSO-FNN-Adaboost strong classifier is increased by 5%.
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