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자료유형
학술저널
저자정보
엽준언 (중앙재경대학 사회학과) 후가위 (중앙재경대학 사회학과)
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한중사회과학학회 한중사회과학연구 한중사회과학연구 제14권 제2호
발행연도
2016.1
수록면
333 - 353 (21page)

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The peasant population in China is very large, however, the household registration system leads to the dual division of city and countryside. Since the reform and opening up, peasant workers have been leaving for city from the rural and have made great contribution to city construction in China. The research for the residence preference of peasant workers is to understand what kind of migration decision they will make. The results show that age, sex, marriage, education level, family, income, migration range, migration duration, occupation character, resent living house and social communication with the native would have a significant impact on the peasant workers’residence preference. The conclusion include: 1.The first generation of China’s peasant workers prefer to live in howntown’s countrside after retirement, but the new generation of peasant workers want to live in the city they work, what we need to ensure is that peasant workers form an obvious trend to not only work, but also to live in city. 2.Education level, income and social adaption have a positive significant impact on the residence preference of peasant workers. As the model shows, with a degree of junior college or batter than it and family income which is more than 10000 yuan a month, can a peasant worker and his or her family live in big city in a long term. 3.Family is important to migration decision, and the trend is to migrate with your nuclear family. 4.The peasant workers themselves are not willing to make long distance migration, even though they make it because of job, they would be more likely to reture their hometown, no matter city or countryside, than staying in the inflow city.

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