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Scientific Article details

Title Regional eco-efficiency prediction with Support Vector Spatial Dynamic MIDAS
ID_Doc 67006
Authors Wang, XN; Xiao, Z
Title Regional eco-efficiency prediction with Support Vector Spatial Dynamic MIDAS
Year 2017
Published
DOI 10.1016/j.jclepro.2017.05.077
Abstract To obtain good eco-efficiency prediction with factors accompanied by spatial relationship, mixed frequency data and nonlinearity, based on the existing spatial panel data forecasting models and Mixed DAta Sampling (MIDAS), we established Support Vector Spatial Dynamic MIDAS to incorporate the spatial interaction, different frequencies of sampling data, and non-linear relationship between the ecoefficiency and various factors. Further to testify the effectiveness, we applied the new model to regional eco-efficiency prediction in China. Prediction Error of the Last Year, Mean Percentage Error, Mean Square of Prediction Error and Standard Deviation of Prediction Error were utilized to measure prediction accuracy. Results showed SVSD-MIDAS effectively considered the mixed frequency factors Financial Development Level, Foreign Direct Investment, Urbanization Level, Price Index, Fixed Asset Investment and their spatial interaction. Prediction performances of 30 regions are very good, with low prediction error below 1% or smaller. And regional prediction characteristics in the eastern, central, western and northeast regions were compared. The different spatial weights impacted the prediction no matter in individual province or the whole 4 areas. Accurate prediction by SVSD-MIDAS can save costs of collecting and calculating indicators, and guide the formulation of regional sustainable development strategies of residents, business managers, government departments in advance. (C) 2017 Elsevier Ltd. All rights reserved.
Author Keywords Regional eco-efficiency; Prediction; Spatial mixed-frequency panel data; Support Vector Spatial Dynamic MIDAS
Index Keywords Index Keywords
Document Type Other
Open Access Open Access
Source Science Citation Index Expanded (SCI-EXPANDED); Social Science Citation Index (SSCI)
EID WOS:000407655400014
WoS Category Green & Sustainable Science & Technology; Engineering, Environmental; Environmental Sciences
Research Area Science & Technology - Other Topics; Engineering; Environmental Sciences & Ecology
PDF http://manuscript.elsevier.com/S0959652617310089/pdf/S0959652617310089.pdf
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