Inferring causal impact using Bayesian structural time-series models
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Abstract
An important problem in econometrics and marketing is to infer the causal impact that a designed market intervention has exerted on an outcome metric over time. This paper proposes to infer causal impact on the basis of a diffusion-regression state-space model that predicts the counterfactual market response in a synthetic control that would have occurred had no intervention taken place. In contrast to classical difference-in-differences schemes, state-space models make it possible to (i) infer the temporal evolution of attributable impact, (ii) incorporate empirical priors on the parameters in a fully Bayesian treatment, and (iii) flexibly accommodate multiple sources of variation, including local trends,…
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Topics
Keywords
- Counterfactual thinking
- Causal inference
- Econometrics
- Bayesian probability
- Markov chain Monte Carlo
- State space
- Computer science
- Covariate
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