TY - JOUR AB - Purpose– To identify the typical multilevel issues in social science, as well as illustrate the theoretical basis, hierarchical models and empirical exemplars of multilevel paradigm.Design/methodology/approach– Hierarchical and multilevel data are extremely common in social systems, but multilevel analysis is constrained by statistical techniques. With the development of social system theory and empirical methods such as hierarchical structure modeling and latent growth modeling, multilevel paradigm can be used to analyze multilevel data. So it is necessary to identify typical multilevel phenomena in social science and discuss multilevel modeling techniques.Findings– This paper identifies four typical multilevel phenomena in social system study: hierarchical and clustered sampling, collective construct research, longitudinal repeated measures, and event history analysis. Hierarchical structure modeling and latent growth modeling are effective multilevel analysis techniques in social science because of their advantages in the integration of social system research.Research limitations/implications– The quality and availability of multilevel data are the main limitations regarding which model will be applied.Practical implications– The paper can aid the provision of effective multilevel models to social workers.Originality/value– This paper provides information on application of multilevel modeling in social science. VL - 37 IS - 9/10 SN - 0368-492X DO - 10.1108/03684920810907706 UR - https://doi.org/10.1108/03684920810907706 AU - Jin Yanghua AU - Nie Biao AU - Xiao Yuchun ED - Mian‐yun Chen ED - Yi Lin ED - Hejing Xiong PY - 2008 Y1 - 2008/01/01 TI - Theoretical model and application of multilevel modeling in the research of social system T2 - Kybernetes PB - Emerald Group Publishing Limited SP - 1401 EP - 1408 Y2 - 2024/04/25 ER -