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Philosophy of science / Conditionals / Estimation theory / Linear regression / Causality / Time series / Seasonality / Statistical power / Statistics / Econometrics / Regression analysis
Date: 2014-09-20 03:22:20
Philosophy of science
Conditionals
Estimation theory
Linear regression
Causality
Time series
Seasonality
Statistical power
Statistics
Econometrics
Regression analysis

Accepted for publication in the Annals of Applied Statistics (in press), [removed]INFERRING CAUSAL IMPACT USING BAYESIAN STRUCTURAL TIME-SERIES MODELS By Kay H. Brodersen, Fabian Gallusser, Jim Koehler, Nicolas Remy, and

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