A Bayesian perspective on intervention research : using prior information in the development of social and health programs

Loading...
Thumbnail Image

Date

Authors

Chen, Ding-Geng (Din)
Fraser, Mark W.

Journal Title

Journal ISSN

Volume Title

Publisher

University of Chicago Press

Abstract

OBJECTIVE : By presenting a simulation study that compares Bayesian and classical frequentist approaches to research design, this paper describes and demonstrates a Bayesian perspective on intervention research. METHOD : Using hypothetical pilot-study data where an effect size of 0.2 had been observed, we designed a 2-arm trial intended to compare an intervention with a control condition (e.g., usual services). We determined the trial sample size by a power analysis with a Type I error probability of 2.5% (1-sided) at 80% power. Following a Monte-Carlo computational algorithm, we simulated 1 million outcomes for this study and then compared the performance of the Bayesian perspective with the performance of the frequentist analytic perspective. Treatment effectiveness was assessed using a frequentist t-test and an empirical Bayesian t-test. Statistical power was calculated as the criterion for comparison of the 2 approaches to analysis. RESULTS : In the simulations, the classical frequentist t-test yielded 80% power as designed. However, the Bayesian approach yielded 92% power. CONCLUSION : Holding sample size constant, a Bayesian analytic approach can improve power in intervention research. A Bayesian approach may also permit smaller samples holding power constant. Using a Bayesian analytic perspective could reduce design demands in the developmental experimentation that typifies intervention research.

Description

This paper was presented at the 2017 Annual Meeting of the Society for Social Work and Research in New Orleans, LA.

Keywords

Intervention research, t-test, Bayesian, Prior distribution, Posterior distribution, Statistical power, Monte-Carlo simulation

Sustainable Development Goals

Citation

Chen, D.-G. & Fraser, M.W. 2017, 'A Bayesian perspective on intervention research : using prior information in the development of social and health programs', Journal of the Society for Social Work and Research, vol. 8, no. 3, pp. 441-456.