We have launched E-mail Alert service,subscribers can receive the latest catalogues free of charge

     
     
    You Are Here: Home > Publications> Articles

    Development Trend of Chinese Regional Disparities in Recent Years

    2006-03-15

    By Li Shantong & Xu Zhaoyuan

    I. Introduction

    Since China began reform over twenty years ago, its economy has posted continuous rapid growth. The living standard of Chinese people across all regions has consequently improved. China is a developing country with a vast territory and a huge population. Because of the differences in regional, geographic, climatic and other natural conditions and also cultural and historical conditions, different regions have different conditions for development and different development bases and are developing at different speeds. This has resulted in inter-regional imbalances in development and income. Since the 1990s in particular, regional disparities have been widening in China and have caught extensive government and social attention. Many economists have studied regional disparities in China. A majority believes that Chinese regional disparities narrowed somewhat in the 1980s but have been widening since the 1990s (Liu Xiaming, 2004; Li Shantong, 2004; Wang Xiaolu, 2004; etc). Since 2000, however, the pattern of macroeconomic growth in China has changed enormously. As far as regional policies are concerned, the country has introduced a western development strategy as well as policies to rejuvenate old industrial bases in northeast China. For this reason, we need to have a further study of the impact these policies are having on patterns in Chinese regional economic growth and changes in developing trends in regional disparities. This article will focus on exploring developing trends in regional disparities since 2000.

    The second part of this article is devoted to analyzing changes in regional disparities in China by using a number of indicators. The third part analyzes changes in regional growth patterns and the impact that this has on regional disparities. The fourth section explores factors which have affected changes in regional disparities since 2000, while the fifth section is devoted to conclusions and policy options.

    II. Changes in Development Trends in Regional Disparities in China since Reform and Opening up

    There are many indicators for measuring regional disparities. The most frequently used are the Gini coefficient, CV coefficient, Theil index, with un-weighted or population-weighted maximum and minimum values. Of all these, the Gini coefficient is the simplest and easiest to understand. This article mainly uses the Gini coefficient to measure regional disparities.

    1. Calculations based on the Gini coefficient

    We use the Gini coefficient to analyze indicators (per capita GDP and personal consumption levels) that typically reflect levels of economic development and states of personal wellbeing. Per capita GDP at current prices is the indicator that is most frequently used to reflect the state of regional development and reflect the overall level of development of a specific region. But it cannot completely and accurately reflect the level of wellbeing of residents in any given region. This is because as different regions have different rates of investment, and there can be drastically different levels of consumption in regions sharing the same per capita GDP. Additionally, since different regions have different price levels, the same per capita GDP can imply quite different purchasing powers. The level of personal consumption is closely related to per capita GDP. But the two do not always conform with each other because of inter-regional shifts in factor incomes and transfer payments as well as the different rates of investment mentioned above. In general, regional disparities worked out on the basis of personal consumption levels are smaller. Taking 2004 for example, it can be noted that the maximum value of per capita GDP for Shanghai was 13 times the equivalent minimum value for Guizhou, while the same value measured using personal consumption shows the maximum value for Shanghai only 9 times higher than the minimum value for Guizhou. In the relative terms, the level of personal consumption reflects personal welfare more directly. Working out the Gini coefficient using both per capita GDP as well as levels of consumption offers a comprehensive way to work out changes in regional disparities.

    2. Changes in regional disparities measured by Gini coefficient

    The following figure illustrates the changes in regional disparities in China during the 1978-2004 periods as measured by the Gini coefficient. During the 1978-1990 periods, the Gini coefficient fell rapidly as calculated with per capita GDP at current prices, from 0.359 in 1978 to 0.277 in 1990. In the 1990s, the Gini coefficient expanded rapidly at first before slowing down slightly. From 2000 to 2003, regional disparities continued to widen, though less violently. The value remained at about 0.35. In 2004, the Gini coefficient even dropped somewhat (one percent below its 2003 level). Compared with the early years of reform and opening up, the current Gini coefficient worked out on per capita GDP at current prices is lower than that for 1978.

    Source: Per capita GDP at current prices is based on data from regional statistical yearbooks. If the data differ between years, please refer to the latest data. 2004 data come from the 2005 China Statistical Yearbook. As Chongqing’s per capita GDP in the statistical yearbook is based on its permanent population and differs from historical data, this article has made adjustments. Data on personal consumption levels come from China Statistical Yearbooks and some figures are updated according to regional statistical yearbooks.

    Development Trend of Chinese Regional Disparities in Recent Years
    The Gini coefficient based on personal consumption levels indicates that regional disparities have been steadily rising since 1982. Disparities in regional levels of consumption rose fairly slowly before the 1990s, but continued to widen after the 1990s despite slight declines in the Gini coefficient in 1996 and 1997. However, the widening momentum slowed down gradually after 2000 and the 2004 Gini coefficient was largely at the same level as 2003. The above figure also indicates that regional disparities measured by levels of personal consumption have always been lower than results based on per capita GDP. Compared with the early years of reform and opening up, current regional disparities in consumption levels are far higher than in 1978.

    The above analysis of the Gini coefficients based on per capita GDP and personal consumption levels indicates that the widening in Chinese regional disparities has gradually slowed down since 2000.

    Development Trend of Chinese Regional Disparities in Recent Years
    Table 1 indicates that Gini coefficient in 2000 was visibly higher than in the previous year but that growth in Gini coefficient shows a clear progressive decline in the following years regardless of indicator used. In particular, the Gini coefficient based on per capita GDP at 2004 prices was 1 percent lower than in 2003. Although the Gini coefficient based on personal consumption levels rose rapidly after 1990, it dropped 0.1 percent in 2004 from the previous year.

    3. Regional disparities in the Gini coefficient based on per capita GDP weighted by registered population and permanent population

    Chinese regions usually use two parameters for demographic statistics: registered population and permanent population. In some regions, these two statistical indicators are not quite different. But in some developed regions with large numbers of migrants, the two indicators are drastically different. For example, Beijing had a registered population of 11.488 million and a permanent population of 14.564 million. When computing per capita GDP, the National Bureau of Statistics does not use a unified demographic indicator. For example, when computing the 2004 per capita GDP, the "registered population" was used for Beijing, Tianjin, Shanghai and Sichuan while the "permanent population" was used for other regions (see the 2005 China Statistical Yearbook). As the three municipalities directly under the central government had more permanent residents than registered residents, their per capita GDP values based on the permanent population would be smaller than the statistical values. Accordingly, if all regions base their statistics on permanent population, regional disparities would be smaller than those worked out in this article. In 2000, for example, the Gini coefficient based on per capita GDP at current prices would be 0.301 if the permanent population was used. The Gini coefficient based on the data of the statistical yearbooks was 0.347. There is a considerable gap between the two parameters.

    If you need the full text, please leave a message on the website.

     
    国产日韩精品中文字无码| 人妻精品久久久久中文字幕一冢本| 亚洲日韩精品无码专区网站| 免费无码作爱视频| 中文字幕AV中文字无码亚| 无码人妻丰满熟妇精品区| 中文字幕一区视频| 亚洲?V无码乱码国产精品| 无码日韩精品一区二区免费| 中文字幕欧美日韩| 亚洲精品一级无码鲁丝片| av无码久久久久不卡免费网站| 无码AV动漫精品一区二区免费| 狠狠躁天天躁无码中文字幕| 超清无码无卡中文字幕| 亚洲精品无码AV人在线播放| 区三区激情福利综合中文字幕在线一区亚洲视频1 | 黑人无码精品又粗又大又长 | 中文字幕人妻无码系列第三区| 日韩精品久久无码人妻中文字幕| 久久无码av三级| 精品久久久久久久无码| 无码人妻精品一区二区三18禁| 毛片免费全部播放无码| 亚洲一区日韩高清中文字幕亚洲| 久久精品中文字幕无码绿巨人 | 精品无人区无码乱码毛片国产| 人妻无码一区二区不卡无码av | 熟妇人妻无码中文字幕| 亚洲AV无码乱码在线观看裸奔| 无码H黄肉动漫在线观看网站| 中文字幕无码av激情不卡久久 | 熟妇人妻无码中文字幕| 亚洲中文久久精品无码ww16| 岛国无码av不卡一区二区| 国产成人无码一区二区在线观看 | 无码国产精成人午夜视频一区二区| 精品久久久无码人妻中文字幕| 免费无码国产欧美久久18| 曰韩精品无码一区二区三区| 亚洲国产精品无码专区影院|