Analysis of the Index of Gender Inequality in the World by a Neural Approach

K. Karoui, M. Zribi, Rochdi Feki
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Abstract

: The neuronal approach has interested a large number of researchers for analysis and in various fields. In this article, we use Kohonen Self-Organizing Map (SOM) which is an unsupervised neural network algorithm that projects high-dimensional data to predict dimension classification of the gender inequality index. This study covers 145 countries, demonstrates the relevance of the neural approach in this field of research. It was possible to determine an “optimal map” which involves a classification of countries and a view of the situation of inequalities in order to draw several relevant conclusions. The classification was carried out by the level of evolution of each dimension of the gender inequality index. Each group of countries classified in the same cell implies that these countries have suffered similar effects for the inequality indicators or that they have applied the same strategy to fight inequality. Grouping countries by zone shows, on the one hand, that countries with high inequalities are characterized by a strong correlation between dimensions. Second, African and Asian countries have the greatest deficit in education, health and the labor market.
世界性别不平等指数的神经方法分析
神经元方法在分析和各个领域引起了大量研究人员的兴趣。在本文中,我们使用Kohonen自组织映射(SOM)——一种投射高维数据的无监督神经网络算法来预测性别不平等指数的维度分类。这项研究涵盖了145个国家,证明了神经方法在这一研究领域的相关性。有可能确定一个“最佳地图”,其中包括对国家的分类和对不平等情况的看法,以便得出几个有关的结论。根据性别不平等指数各维度的演化程度进行分类。属于同一单元的每一组国家都意味着这些国家在不平等指标方面遭受了类似的影响,或者它们采用了同样的战略来打击不平等。一方面,按区域对国家进行分组表明,不平等程度高的国家的特点是各方面之间具有很强的相关性。第二,非洲和亚洲国家在教育、卫生和劳动力市场方面的赤字最大。
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