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A novel discrete grey multivariable model and its application in forecasting the output value of China's high-tech industries

机译:一种新颖的离散灰色多变量模型及其在我国高新技术产业产值预测中的应用

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摘要

An improved discrete grey multivariable model is designed to forecast the future output value of the high-tech industries that cover large and medium-sized enterprises (LMEs) in China's eastern region. Although the high-tech industries have become a major concern due to their great economic worth, few studies have been carried out to consider the accumulative effects of research and development (R&D) inputs on the output-value growth. Therefore, to address such a challenge problem, three critical contributions are provided in this paper: first, an accumulative discrete grey multivariable model is built that considers the accumulative effects of R&D inputs on the output-value growth; second, the Ant Lion Optimizer (ALO), an intelligent algorithm, is employed to determine the optimal accumulative coefficients; third, an one-step rolling mechanism, which takes into account the most recent data for model calibration, is utilized to further enhance the forecasting capability. To verify the efficacy and practicality of this proposed model, data sets from the eastern high-tech industries (2007-2015) are employed in the forecasting experiments. The empirical results demonstrate that the proposed model outperforms a range of benchmark models. Therefore, this superior model is employed for forecasting future output value of the eastern high-tech industries from 2016 to 2020. Based on the empirical findings, some suggestions are presented to further promote the development of China's high-tech industries.
机译:设计了改进的离散灰色多变量模型,以预测涵盖中国东部地区大中型企业(LME)的高科技产业的未来产值。尽管高科技产业由于其巨大的经济价值而成为主要关注的问题,但很少进行研究来考虑研发投入对产值增长的累积影响。因此,为解决这一挑战性问题,本文提供了三个关键的贡献:首先,建立了一个累积的离散灰色多变量模型,该模型考虑了R&D投入对产值增长的累积影响。其次,采用智能算法“蚁狮优化器”(ALO)确定最佳累积系数。第三,采用一步滚动机制,该机制考虑了模型校准的最新数据,可进一步增强预测能力。为了验证该模型的有效性和实用性,在预测实验中采用了来自东部高科技产业(2007-2015年)的数据集。实证结果表明,所提出的模型优于一系列基准模型。因此,该模型可用于预测2016年至2020年东部高新技术产业的未来产值。在实证研究的基础上,提出了一些建议,以进一步促进中国高新技术产业的发展。

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