Machine-learning applications to authoritarian selections: the case of China
Elite selection in China has drawn significant attention given the importance of the country. Instead of relying on qualitative assessments from historical and personal insights, this study utilized machine-learning techniques to evaluate the promotion prospects of Chinese elites. By incorporating o...
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sg-ntu-dr.10356-1731672024-01-21T15:41:16Z Machine-learning applications to authoritarian selections: the case of China Lee, Jonghyuk S. Rajaratnam School of International Studies Social sciences::Political science Machine-Learning Prediction Authoritarian Selection Elite selection in China has drawn significant attention given the importance of the country. Instead of relying on qualitative assessments from historical and personal insights, this study utilized machine-learning techniques to evaluate the promotion prospects of Chinese elites. By incorporating over 251 individual features of 18,179 officials from 1982 to 2020, I built up an ensemble model to calculate the promotion probabilities of the previous Politburo members of the Communist Party of China (CPC). Methodologically, this study finds that the machine-learning predictions yielded approximately 20% higher accuracy compared to the classical model, which employed the generalized linear model with theoretically identified variables. Moreover, this paper offers valuable insights into Chinese politics by highlighting that Xi Jinping’s selection of central officials has diverged from historical patterns, while his decisions on provincial promotions do not exhibit notable differences from those made by his predecessors. Published version 2024-01-16T02:13:31Z 2024-01-16T02:13:31Z 2023 Journal Article Lee, J. (2023). Machine-learning applications to authoritarian selections: the case of China. Research and Politics, 10(4), 1-7. https://dx.doi.org/10.1177/20531680231211640 2053-1680 https://hdl.handle.net/10356/173167 10.1177/20531680231211640 2-s2.0-85176565750 4 10 1 7 en Research and Politics © The Author(s) 2023. Creative Commons Non Commercial CC BY-NC: This article is distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 License (https://creativecommons.org/licenses/by-nc/4.0/) which permits non-commercial use, reproduction and distribution of the work without further permission provided the original work is attributed as specified on the SAGE and Open Access pages (https://us.sagepub.com/en-us/nam/open-access-at-sage). application/pdf |
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Social sciences::Political science Machine-Learning Prediction Authoritarian Selection Lee, Jonghyuk Machine-learning applications to authoritarian selections: the case of China |
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Elite selection in China has drawn significant attention given the importance of the country. Instead of relying on qualitative assessments from historical and personal insights, this study utilized machine-learning techniques to evaluate the promotion prospects of Chinese elites. By incorporating over 251 individual features of 18,179 officials from 1982 to 2020, I built up an ensemble model to calculate the promotion probabilities of the previous Politburo members of the Communist Party of China (CPC). Methodologically, this study finds that the machine-learning predictions yielded approximately 20% higher accuracy compared to the classical model, which employed the generalized linear model with theoretically identified variables. Moreover, this paper offers valuable insights into Chinese politics by highlighting that Xi Jinping’s selection of central officials has diverged from historical patterns, while his decisions on provincial promotions do not exhibit notable differences from those made by his predecessors. |
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S. Rajaratnam School of International Studies |
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S. Rajaratnam School of International Studies Lee, Jonghyuk |
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Article |
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Lee, Jonghyuk |
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Lee, Jonghyuk |
title |
Machine-learning applications to authoritarian selections: the case of China |
title_short |
Machine-learning applications to authoritarian selections: the case of China |
title_full |
Machine-learning applications to authoritarian selections: the case of China |
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Machine-learning applications to authoritarian selections: the case of China |
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Machine-learning applications to authoritarian selections: the case of China |
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machine-learning applications to authoritarian selections: the case of china |
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2024 |
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https://hdl.handle.net/10356/173167 |
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