Social prediction: a new research paradigm based on machine learning

被引:0
作者
Yunsong Chen
Xiaogang Wu
Anning Hu
Guangye He
Guodong Ju
机构
[1] Nanjing University,Department of Sociology
[2] Hon Kong University of Science and Technology,Center for Applied Social and Economic Research
[3] Fudan University,Department of Sociology
[4] London School of Economics and Political Science,Department of Social Policy
来源
The Journal of Chinese Sociology | / 8卷
关键词
Social prediction; Machine learning; Research paradigm; Quantitative research methods; Computational social sciences;
D O I
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中图分类号
学科分类号
摘要
Sociology is a science concerned with both the interpretive understanding of social action and the corresponding causal explanation, process, and result. A causal explanation should be the foundation of prediction. For many years, due to data and computing power constraints, quantitative research in social science has primarily focused on statistical tests to analyze correlations and causality, leaving predictions largely ignored. By sorting out the historical context of "social prediction," this article redefines this concept by introducing why and how machine learning can help prediction in a scientific way. Furthermore, this article summarizes the academic value and governance value of social prediction and suggests that it is a potential breakthrough in the contemporary social research paradigm. We believe that through machine learning, we can witness the advent of an era of a paradigm shift from correlation and causality to social prediction. This shift will provide a rare opportunity for sociology in China to become the international frontier of computational social sciences and accelerate the construction of philosophy and social science with Chinese characteristics.
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