Effect Size Estimation for Duration Recommendation in Online Experiments: Leveraging Hierarchical Models and Objective Utility Approaches
The selection of the assumed effect size (AES) critically determines the duration of an experiment, and hence its accuracy and efficiency. Traditionally, experimenters determine AES based on domain knowledge. However, this method becomes impractical for online experimentation services managing numer...
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Zusammenfassung: | The selection of the assumed effect size (AES) critically determines the
duration of an experiment, and hence its accuracy and efficiency.
Traditionally, experimenters determine AES based on domain knowledge. However,
this method becomes impractical for online experimentation services managing
numerous experiments, and a more automated approach is hence of great demand.
We initiate the study of data-driven AES selection in for online
experimentation services by introducing two solutions. The first employs a
three-layer Gaussian Mixture Model considering the heteroskedasticity across
experiments, and it seeks to estimate the true expected effect size among
positive experiments. The second method, grounded in utility theory, aims to
determine the optimal effect size by striking a balance between the
experiment's cost and the precision of decision-making. Through comparisons
with baseline methods using both simulated and real data, we showcase the
superior performance of the proposed approaches. |
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DOI: | 10.48550/arxiv.2312.12871 |