Abstract
AbstractCausation underlies both research and policy interventions. Causal inference in demography is however far from easy, and few causal claims are probably sustainable in this field. This paper targets the assessment of causality in demographic research. It aims to give an overview of the methodology of causal research, pointing out various problems that can occur in practice. The “Intervention studies” section critically examines the so-called gold standard in causality assessment in experimental studies, randomized controlled trials, and the use of quasi-experiments and interventions in observational studies. The “Multivariate statistical models” section deals with multivariate statistical models linking a mortality or fertility indicator to a series of possible causes and controls. Single and multiple equation models are considered. The “Mechanisms and structural causal modelling” section takes into account a more recent trend, i.e., mechanistic explanations in causal research, and develops a structural causal modelling framework stemming from the pioneering work of the Cowles Commission in econometrics and of Sewall Wright in population genetics. The “Assessing causality in demographic research” section examines how causal analysis could be further applied in demographic studies, and a series of proposals are discussed for this purpose. The paper ends with a conclusion pointing out, in particular, the relevance of structural equation models, of triangulation, and of systematic reviews for causal assessment.
Publisher
Springer Science and Business Media LLC
Reference77 articles.
1. Ajelli, M., Gonçalves, B., Balcan, D., et al. (2010). Comparing large-scale computational approaches to epidemic modeling: Agent-based versus structured metapopulation models. BMC Infectious Diseases, 10(190), 1–13.
2. Bajos, N., Teixeira, M., Adjamagbo, A., et al. (2013). Normative tensions and women’s contraceptive attitudes and practices in four African countries. Population, 68(1), 15–36.
3. Baptista E.A. and Queiroz B.L. (2019). The relation between cardiovascular mortality and development: A study of small areas in Brazil, 2001–2015, Demographic Research, Vol. 41, Article 51, 1437-1452.
4. Barbieri, M. (2013). Mortality in France by département. Population, 68(3), 375–418.
5. Basu, K. (2014). Randomisation, causality and the role of reasoned intuition. Oxford Development Studies, 42(4), 455–472.
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献