基于企业所得税预测尼日利亚经济增长

A. Sagir, S. Abdulazeez, Sani Ibrahim Doro
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引用次数: 0

摘要

像尼日利亚这样的发展中国家在最近的经济危机中受到严重打击,不确定性是所有价格和收入共享的特征之一。利用人工神经网络(ANN)和统计模型对尼日利亚经济增长进行预测,分析非石油所得税对尼日利亚经济发展的贡献。虽然主要目标是开发和实施能够模拟真实非石油所得税并评估其绩效的拟议模型。数据集(2015-2020年企业所得税)来自尼日利亚国家统计局(NBSN)。人工神经网络的训练算法采用了Fletcher-Reeves重新启动的共轭梯度反向传播、贝叶斯正则化和自适应学习率的梯度下降三种算法,统计部分采用了多元线性回归。比较所有模型,贝叶斯正则化产生的结果比其他模型更准确。
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FORECASTING NIGERIAN ECONOMIC GROWTH BASED CORPORATE INCOME TAX
Developing countries like Nigeria have been hit hard by recent economic crises, and uncertainty is one of the characteristics that all prices and revenues share. A forecast of Nigerian economic growth was attempted using an artificial neural network (ANN) and statistical model to analyse the contribution of non-oil income tax generation to Nigerian economic development. While the primary objective is to develop and implement the proposed models capable of simulating a real non-oil income tax and evaluate their performances. The  dataset (Corporate Income Tax) from 2015–2020 was obtained from the National Bureau of Statistics of Nigeria (NBSN). Three training algorithms for ANN were adopted, such as conjugate gradient back-propagation with Fletcher-Reeves restarts, Bayesian regularisation, and gradient descent with an adaptive learning rate, whereas in the statistical part, multiple linear regressions were applied. Comparing all the models revealed that the Bayesian regularisation produced more accurate results than the other models.
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20
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