| Literature DB >> 31525209 |
Daniel J Graham1, Cian Naik2, Emma J McCoy1, Haojie Li3.
Abstract
This paper quantifies the effect of speed cameras on road traffic collisions using an approximate Bayesian doubly-robust (DR) causal inference estimation method. Previous empirical work on this topic, which shows a diverse range of estimated effects, is based largely on outcome regression (OR) models using the Empirical Bayes approach or on simple before and after comparisons. Issues of causality and confounding have received little formal attention. A causal DR approach combines propensity score (PS) and OR models to give an average treatment effect (ATE) estimator that is consistent and asymptotically normal under correct specification of either of the two component models. We develop this approach within a novel approximate Bayesian framework to derive posterior predictive distributions for the ATE of speed cameras on road traffic collisions. Our results for England indicate significant reductions in the number of collisions at speed cameras sites (mean ATE = -15%). Our proposed method offers a promising approach for evaluation of transport safety interventions.Entities:
Year: 2019 PMID: 31525209 PMCID: PMC6746359 DOI: 10.1371/journal.pone.0221267
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Simulation results for posterior predictive distributions (τ = 5.0).
| Av. Est. | Emp. Var. | MSE | |
|---|---|---|---|
| BOR1 | 5.004 | 0.036 | 0.036 |
| BOR2 | 5.350 | 0.036 | 0.157 |
| PS1 | 4.998 | 0.118 | 0.119 |
| PS2 | 276.740 | 1.84E+07 | 1.85E+07 |
| BDR1 | 5.008 | 0.046 | 0.046 |
| BDR2 | 5.018 | 0.862 | 0.862 |
| BDR3 | 5.360 | 0.946 | 1.074 |
Bayesian and frequentist bootstrapped estimates of the average treatment effect.
| Bayesian bootstrap | Frequentist bootstrap | ||||
|---|---|---|---|---|---|
| posterior mean | s.d. | 95% cred. int. | Est. | s.e. | |
| OR | -14.429 | 3.536 | (-21.473, -7.350) | -14.825 | 3.419 |
| IPW | -15.476 | 5.480 | (-26.367, -4.808) | -15.504 | 4.935 |
| DR | -14.359 | 3.605 | (-21.841, -7.352) | -14.370 | 3.494 |
| Naïve (matched sample) | -17.617 | 5.199 | (-28.214, -7.800) | -17.887 | 5.118 |
| Naïve (full sample) | -33.684 | 5.911 | (-42.133, -13.624) | -34.682 | 3.573 |
Fig 1Predictive posterior distribution of the average treatment effect from the doubly-robust model.