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Real-time causal inference
DOI:
https://doi.org/10.31224/osf.io/my3x6Abstract
The paper highlights causal inference based on econometric measurement in real-time data environments. Each state has a probability of being realized in real-time. We define state selection bias as arising when real-time environments are ignored. We model indicator variables as measurements that exist partly in all particular theoretically possible states, but show only one configuration on observation. Under real-time randomization within data streams, econometric treatment effects are estimable using controlled and natural experiments motivated by real-time regression analyses. A bias occurs as a result of ignoring concept drift when classical regression statistics are naïvely applied to real-time experimental data. We present a simple algorithm for difference-in-difference estimation for real-time program evaluations. Finally, a new Problem of Causal Inference is introduced for real-time data environments.Downloads
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