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NTIS 바로가기한국항만경제학회지 = Journal of Korea Port Economic Association, v.37 no.1, 2021년, pp.197 - 215
이재득 (부산대학교 무역학부)
This paper analyzes the machine learning predictions of the economic effects of Busan's strategic industries on the employment and income using the Ridge Regression and Lasso Regression models with regulation terms. According to the Ridge estimation and Lasso estimation models of employment, the int...
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