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SPATIAL-TEMPORAL DYNAMICS OF REGIONAL CONVERGENCE AT COUNTY LEVEL IN JIANGSU
作者姓名:PUYing-xia  MARong-hua  GEYing  HUANGXing-yuan
作者单位:1. Department of Urban and Resources Sciences,Nanjing University,Nanjing 210093,P. R. China; 2. Nanjing Institute of Geography and Limnology,Chinese Academy of Sciences,Nanjing 210008,P. R. China
基金项目:Under the auspices ofthe National Natural Science Foundation of China (No .40301038)
摘    要:1IN T R O D U C T IO N With therapiddevelopment ofChina's economy ,there- search on regionalconvergence or divergence has at- tracetd a lotof attention(SONG , 1996 ; LUO etal., 2002 ;QIN ,2004 ).At present,the empiricalanalysesare oftenbased on two concep…

关 键 词:区域收敛  时空动力学  空间马尔可夫链  江苏  经济发展

Spatial-temporal dynamics of regional convergence at County level in Jiangsu
PUYing-xia MARong-hua GEYing HUANGXing-yuan.SPATIAL-TEMPORAL DYNAMICS OF REGIONAL CONVERGENCE AT COUNTY LEVEL IN JIANGSU[J].Chinese Geographical Science,2005,15(2):113-119.
Authors:Ying-xia Pu  Rong-hua Ma  Ying Ge  Xing-yuan Huang
Institution:PU Ying-xia1,MA Rong-hua2,GE Ying1,HUANG Xing-yuan1
Abstract:The dynamics of regional convergence include spatial and temporal dimensions. Spatial Markov chain can be used to explore how regions evolve by considering both individual regions and their geographic neighbors. Based on per capita GDP data set of 77 counties from 1978 to 2000, this paper attempts to investigate the spatial-temporal dynamics of regional convergence in Jiangsu. First, traditional Markov matrix for five per capita GDP classes is constructed for later comparison. Moreover, each region's spatial lag is derived by averaging all its neighbors' per capita GDP data. Conditioning on per capita GDP class of its spatial lag at the beginning of each year, spatial Markov transition probabilities of each region are calculated accordingly. Quantitatively, for a poor region, the probability of moving upward is 3.3% if it is surrounded by its poor neighbors, and even increases to 18.4% if it is surrounded by its rich neighbors, but it goes down to 6.2% on average if ignoring regional context. For a rich region, the probability of moving down ward is 1.2% if it is surrounded by its rich neighbors, but increases to 3.0% if it is surrounded by its poor neighbors, and averages 1.5% irrespective of regional context. Spatial analysis of regional GDP class transitions indicates those 10 upward moves of both regions and their neighbors are unexceptionally located in the southern Jiangsu, while downward moves of regions or their neighbors are almost in the northern Jiangsu. These empirical results provide a spatial explanation to the "convergence clubs" detected by traditional Markov chain.
Keywords:regional convergence  spatial-temporal dynamics  spatial Markov chain  Jiangsu Province
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