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Estimation of the Country Ranking Scores on the Global Innovation Index 2016 Using the Artificial Neural Network Method

机译:用人工神经网络方法估算2016年全球创新指数中的国家排名得分

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摘要

The Global Innovation Index (GII) aims to rank countries using different innovation factors. This ranking list enables countries to observe their potential status according to the rankings of other countries. The countries are classified under four groups according to the World Bank Income Group Classification on the GII list. The groups are named as; low income (LI), lower-middle income (LM), upper-middle income (UM) and high income (HI). Also, every country has a score in this ranking list. In this study, the ranking scores of 128 countries are estimated using the artificial neural network (ANN). We chose the relevant 27 features on GII 2016 Report, as input data. The significance of this paper is that; it is the first curve fitting and estimation of the score processes on GII 2016 dataset. The low root mean square error (RMSE) value which is obtained in an experimental study shows that the fitting structure is good enough to determine the approximate score of the countries in GII list. The results also show that the selected 27 features are sufficient for obtaining the income score of the countries. Increasing the number of features would lower the RMSE value and enable better approximation in the curve fitting process. The final results can assist the countries in achieving long-term output growth and improving their innovation capabilities.
机译:全球创新指数(GII)旨在对使用不同创新因素的国家进行排名。该排名列表使国家能够根据其他国家的排名来观察其潜在状态。根据GII清单上的世界银行收入组分类,这些国家分为四类。这些组被命名为;低收入(LI),中低收入(LM),中高收入(UM)和高收入(HI)。此外,每个国家/地区在此排名列表中都有分数。在这项研究中,使用人工神经网络(ANN)估算了128个国家的排名得分。我们在GII 2016报告中选择了相关的27个功能作为输入数据。本文的意义在于:这是GII 2016数据集上的第一个曲线拟合和分数过程估计。通过实验研究获得的低均方根误差(RMSE)值表明,拟合结构足以确定GII列表中国家的近似得分。结果还表明,所选的27个特征足以获得这些国家的收入得分。增加特征数量将降低RMSE值,并在曲线拟合过程中实现更好的近似。最终结果可以帮助这些国家实现长期产出增长并提高其创新能力。

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