A Bayesian multivariate factor analysis model for causal inference using time-series observational data on mixed outcomes

Author:

Samartsidis Pantelis1ORCID,Seaman Shaun R1,Harrison Abbie2,Alexopoulos Angelos13,Hughes Gareth J2,Rawlinson Christopher2,Anderson Charlotte2,Charlett André2,Oliver Isabel2,De Angelis Daniela12

Affiliation:

1. MRC Biostatistics Unit , East Forvie Building, Cambridge Biomedical Campus , Cambridge, CB2 0SR, UK

2. UK Health Security Agency , London, E14 4PU, UK

3. Department of Economics, Athens University of Economics and Business , Athens, 104 34, Greece

Abstract

Summary Assessing the impact of an intervention by using time-series observational data on multiple units and outcomes is a frequent problem in many fields of scientific research. Here, we propose a novel Bayesian multivariate factor analysis model for estimating intervention effects in such settings and develop an efficient Markov chain Monte Carlo algorithm to sample from the high-dimensional and nontractable posterior of interest. The proposed method is one of the few that can simultaneously deal with outcomes of mixed type (continuous, binomial, count), increase efficiency in the estimates of the causal effects by jointly modeling multiple outcomes affected by the intervention, and easily provide uncertainty quantification for all causal estimands of interest. Using the proposed approach, we evaluate the impact that Local Tracing Partnerships had on the effectiveness of England’s Test and Trace programme for COVID-19.

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,General Medicine,Statistics and Probability

Reference35 articles.

1. Synthetic control methods for comparative case studies: estimating the effect of California’s tobacco control program;Abadie;J. Am. Stat. Assoc,2010

2. Matrix completion methods for causal panel data models;Athey;J. Am. Stat. Assoc,2021

3. Design-based analysis in difference-in-differences settings with staggered adoption;Athey;J. Econ,2021

4. Heterogeneous large datasets integration using Bayesian factor regression;Avalos-Pacheco;Bayesian Analysis,2022

5. Methods for modeling excess mortality across England during the COVID-19 pandemic;Barnard;Stat. Methods Med. Res,2022

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