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      Big Data for the Study of Qing Officialdom: The China Government Employee Database-Qing (CGED-Q)

      , , ,
      Journal of Chinese History
      Cambridge University Press (CUP)

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          Abstract

          We introduce the China Government Employee Database—Qing (CGED-Q), a new resource for the quantitative study of Qing officialdom. The CGED-Q details the backgrounds, characteristics and careers of Qing officials who served between 1760 and 1912, with nearly complete coverage of officials serving after 1830. We draw information on careers from the Roster of Government Personnel ( jinshenlu), which in each quarterly edition listed approximately 12,500 regular civil offices and their holders in the central government and the provinces. Information about backgrounds and characteristics comes from such linked sources as lists of exam degree holders. In some years, information on military officials is also available. As of February 2020, the CGED-Q comprises 3,817,219 records, of which 3,354,897 are civil offices and the remainder are military. In this article we review the progress and prospects of the project, introduce the sources, transcription procedures, and constructed variables, and provide examples of results to showcase its potential.

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          The Future of Historical Family Demography

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            The Costs of Patronage: Evidence from the British Empire

            Guo Wei Xu (2018)
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              Is Open Access

              New Sources for Comparative Social Science: Historical Population Panel Data From East Asia

              Comparison and comparability lie at the heart of any comparative social science. Still, precise comparison is virtually impossible without using similar methods and similar data. In recent decades, social demographers, historians, and economic historians have compiled and made available a large number of micro-level data sets of historical populations for North America and Europe. Studies using these data have already made important contributions to many academic disciplines. In a similar spirit, we introduce five new microlevel historical panel data sets from East Asia, including the China Multi-Generational Panel Dataset–Liaoning (CMGPD-LN) 1749–1909, the China Multi-Generational Panel Dataset– Shuangcheng (CMGPD-SC) 1866–1913, the Japanese Ninbetsu-Aratame-Cho Population Register Database–Shimomoriya and Niita (NAC-SN) 1716–1870, the Korea Multi-Generational Panel Dataset–Tansung (KMGPD-TS) 1678–1888, and the Colonial Taiwan Household Registration Database (CTHRD) 1906–1945. These data sets in total contain more than 3.7 million linked observations of 610,000 individuals and are the first such Asian data to be made available online or by application. We discuss the key features and historical institutions that originally collected these data; the subsequent processes by which the data were reconstructed into individual-level panels; their particular data limitations and strengths; and their potential for comparative social scientific research.
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                Author and article information

                Journal
                Journal of Chinese History
                J Chin Hist
                Cambridge University Press (CUP)
                2059-1632
                2059-1640
                July 2020
                June 16 2020
                July 2020
                : 4
                : 2
                : 431-460
                Article
                10.1017/jch.2020.15
                3ca54472-e015-42f3-8079-97dfa5362009
                © 2020

                https://www.cambridge.org/core/terms

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