Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms
A thriving cottage industry has long tried to predict the selection outcomes of the Chinese leadership using qualitative judgments based on historical trends and elite interviews. This study contributes to the discourse by adopting machine-learning techniques to quantitatively and systematically eva...
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sg-ntu-dr.10356-1735072024-02-11T15:42:31Z Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms Lee, Jonghyuk Shih, Victor C. S. Rajaratnam School of International Studies Institute of Defence and Strategic Studies Social Sciences Chinese Politics Machine Learning A thriving cottage industry has long tried to predict the selection outcomes of the Chinese leadership using qualitative judgments based on historical trends and elite interviews. This study contributes to the discourse by adopting machine-learning techniques to quantitatively and systematically evaluate the promotion prospects of Chinese high-ranking officials. By incorporating over 250 individual features of approximately 20,000 high-ranking positions from 1982 to 2020, this paper calculated predicted probabilities of promotion for the 19th Politburo members of the Communist Party of China. The rankings of the promotion probabilities can be used not only to identify candidates who would have traditionally advanced within the party's promotion norms but also to gauge Xi Jinping's personal favoritism toward specific individuals. Based on different specifications for positions and periods, we developed measurements to quantify candidates' levels of perceived loyalty and promotion eligibility. The empirical results demonstrated that the newly formed 20th Politburo Standing Committee was predominantly composed of loyalists who would not have risen to such positions under conventional promotion standards. We further found that, even within his circle of known allies, Xi Jinping did not opt for candidates with strong credentials. The findings of this study underscore the increasing emphasis on loyalty and the diminishing role of institutional norms in China's high-ranking selections. Published version 2024-02-07T08:14:18Z 2024-02-07T08:14:18Z 2023 Journal Article Lee, J. & Shih, V. C. (2023). Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms. Proceedings of the National Academy of Sciences (PNAS), 120(45), e2305143120-. https://dx.doi.org/10.1073/pnas.2305143120 0027-8424 https://hdl.handle.net/10356/173507 10.1073/pnas.2305143120 37903269 2-s2.0-85175660705 45 120 e2305143120 en Proceedings of the National Academy of Sciences (PNAS) © 2023 the Author(s). Published by PNAS. This article is distributed under Creative Commons Attribution-NonCommercial-NoDerivatives License 4.0(CC BY-NC-ND). application/pdf |
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Social Sciences Chinese Politics Machine Learning Lee, Jonghyuk Shih, Victor C. Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms |
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A thriving cottage industry has long tried to predict the selection outcomes of the Chinese leadership using qualitative judgments based on historical trends and elite interviews. This study contributes to the discourse by adopting machine-learning techniques to quantitatively and systematically evaluate the promotion prospects of Chinese high-ranking officials. By incorporating over 250 individual features of approximately 20,000 high-ranking positions from 1982 to 2020, this paper calculated predicted probabilities of promotion for the 19th Politburo members of the Communist Party of China. The rankings of the promotion probabilities can be used not only to identify candidates who would have traditionally advanced within the party's promotion norms but also to gauge Xi Jinping's personal favoritism toward specific individuals. Based on different specifications for positions and periods, we developed measurements to quantify candidates' levels of perceived loyalty and promotion eligibility. The empirical results demonstrated that the newly formed 20th Politburo Standing Committee was predominantly composed of loyalists who would not have risen to such positions under conventional promotion standards. We further found that, even within his circle of known allies, Xi Jinping did not opt for candidates with strong credentials. The findings of this study underscore the increasing emphasis on loyalty and the diminishing role of institutional norms in China's high-ranking selections. |
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S. Rajaratnam School of International Studies |
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S. Rajaratnam School of International Studies Lee, Jonghyuk Shih, Victor C. |
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Article |
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Lee, Jonghyuk Shih, Victor C. |
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Lee, Jonghyuk |
title |
Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms |
title_short |
Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms |
title_full |
Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms |
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Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms |
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Machine-learning analysis of leadership formation in China to parse the roles of loyalty and institutional norms |
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machine-learning analysis of leadership formation in china to parse the roles of loyalty and institutional norms |
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2024 |
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https://hdl.handle.net/10356/173507 |
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