Sampling Migrants from their Social Networks: The Demography and Social Organization of Chinese Migrants in Dar es Salaam, Tanzania.

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2016-07

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Abstract

The streams of Chinese migration to Africa are growing in tandem with rising Chinese investments and trade flows in and to the African continent. In spite of the high profile of this phenomenon in the media, there are few rich and broad descriptions of Chinese communities in Africa. Reasons for this include the rarity of official statistics on foreign-born populations in African censuses, the absence of predefined sampling frames required to draw representative samples with conventional survey methods and difficulties to reach certain segments of this population. Here, we use a novel network-based approach, Network Sampling with Memory, which overcomes the challenges of sampling 'hidden' populations in the absence of a sampling frame, to recruit a sample of recent Chinese immigrants in Dar es Salaam, Tanzania and collect information on the demographic characteristics, migration histories and social ties of members of this sample. These data reveal a heterogeneous Chinese community composed of "state-led" migrants who come to Africa to work on projects undertaken by large Chinese state-owned enterprises and "independent" migrants who come on their own accord to engage in various types of business ventures. They offer a rich description of the demographic profile and social organization of this community, highlight key differences between the two categories of migrants and map the structure of the social ties linking them. We highlight needs for future research on inter-group differences in individual motivations for migration, economic activities, migration outcomes, expectations about future residence in Africa, social integration and relations with local communities.

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Africa, China, International Migration, Social networks, Survey Sampling

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Published Version (Please cite this version)

10.1093/migration/mnw004

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Merli, M Giovanna, Ashton Verdery, Ted Mouw and Jing Li (2016). Sampling Migrants from their Social Networks: The Demography and Social Organization of Chinese Migrants in Dar es Salaam, Tanzania. Migr Stud, 4(2). pp. 182–214. 10.1093/migration/mnw004 Retrieved from https://hdl.handle.net/10161/13694.

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Scholars@Duke

Merli

M. Giovanna Merli

Professor in the Sanford School of Public Policy

M. Giovanna Merli is Professor of Public Policy, Sociology, and Global Health at Duke University. She serves as Director of the Duke Population Research Center and Associate Director of the Duke University Population Research Institute.

Her research applies demographic methods to the study of fertility and mortality in China and Vietnam, while also advancing innovative approaches for studying hidden and hard-to-reach populations. For example, she has employed network sampling and the collection of ego-centric network data in population-representative surveys to explore the behavioral and relational determinants of HIV and other sexually transmitted disease transmission in China and South Africa, immigrant health, and social integration among Chinese immigrant populations in the United States, France, and Sub-Saharan Africa as well as African immigrants in the US. Her current work includes a project linking origin and destination contexts to examine the health of immigrants from Ghana to the U.S. She is also Co-Editor-in-Chief of Demography, the flagship journal of the Population Association of America.


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