Covariance Estimation and its Application in Large-Scale Online Controlled Experiments
During the last few decades, online controlled experiments (also known as A/B tests) have been adopted as a golden standard for measuring business improvements in industry. In our company, there are more than a billion users participating in thousands of experiments simultaneously, and with statisti...
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Zusammenfassung: | During the last few decades, online controlled experiments (also known as A/B
tests) have been adopted as a golden standard for measuring business
improvements in industry. In our company, there are more than a billion users
participating in thousands of experiments simultaneously, and with statistical
inference and estimations conducted to thousands of online metrics in those
experiments routinely, computational costs would become a large concern. In
this paper we propose a novel algorithm for estimating the covariance of online
metrics, which introduces more flexibility to the trade-off between
computational costs and precision in covariance estimation. This covariance
estimation method reduces computational cost of metric calculation in
large-scale setting, which facilitates further application in both online
controlled experiments and adaptive experiments scenarios like variance
reduction, continuous monitoring, Bayesian optimization, etc., and it can be
easily implemented in engineering practice. |
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DOI: | 10.48550/arxiv.2108.02668 |