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Employing a Radial-Basis Function Artificial Neural Network to Classify Western and Transition European Economies Based on the Emissions of Air Pollutants and on Their Income

机译:采用径向基函数人工神经网络,基于空气污染物的排放和收入来分类西方和过渡欧洲经济

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This paper aims in comparing countries with different energy strategies, and demonstrate the close connection between environment and economic growth in the ex-Eastern countries, during their transition to market economies. We have developed a radial-basis function neural network system, which is trained to classify countries based on their emissions of carbon, sulphur and nitrogen oxides, and on their Gross National Income. We used three countries representative of ex-Eastern economies (Russia, Poland and Hungary) and three countries representative of Western economies (United States, France and United Kingdom). Results showed that the linkage between environmental pollution and economic growth has been maintained in ex-Eastern countries.
机译:本文旨在将具有不同能源策略的国家进行比较,并展示了前东国家的环境和经济增长之间的密切联系,在转向市场经济。我们开发了一种径向基础函数神经网络系统,培训基于碳,硫和氮氧化物排放以及其总国民收入来对国家进行分类。我们使用了三个代表的前东经济(俄罗斯,波兰和匈牙利)和三个国家代表西方经济(美国,法国和英国)。结果表明,在东部国家保持环境污染与经济增长之间的联系。

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