Luis Costa, Vivek F. Farias, Patricio Foncea, Jingyuan (Donna) Gan, Ayush Garg, Ivo Rosa Montenegro, Kumarjit Pathak, Tianyi Peng, Dusan Popovic
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引用次数: 0
摘要
我们描述了一种新的基于优化的方法-广义综合控制(GSC) -我们从物理零售环境中进行的实验中学习。GSC解决了一个长期存在的问题,即从在这种环境下进行的实验中学习,在这种环境下,治疗效果很小,环境非常嘈杂和非平稳,干扰和粘附问题很常见。GSC的使用在统计能力上有了显著的提高,大约比传统的推理方法高100倍。这种创新的方法构成了TestOps的基础,TestOps是一个专门为实体零售商设计的开创性的大规模实验平台。TestOps是Anheuser Busch Inbev (ABI)与麻省理工学院的运营研究人员和数据工程师团队合作开发并广泛实施的。TestOps目前进行的物理实验每月影响约1.35亿美元的收入,并定期识别导致销售额增加1%-2%的创新。如果我们没有开发出新的推理方法,这些创新中的绝大多数都不会被发现。在我们实施之前,只有6%的实验可以得出具有统计学意义的结论,这一比例现在增加了10倍。鉴于它的成功,TestOps正在ABI的全球范围内推广,推动了显著的收入增长,并使从大规模物理实验中提取有价值的见解成为可能。历史:本文已被INFORMS应用分析杂志特刊- 2022年Daniel H. Wagner高级分析和运筹学实践优秀奖所接受。
Generalized Synthetic Control for TestOps at ABI: Models, Algorithms, and Infrastructure
We describe a novel optimization-based approach—generalized synthetic control (GSC)—in which we learn from experiments conducted in a physical retail environment. GSC solves a long-standing problem of learning from experiments conducted in this environment when treatment effects are small, the environment is extremely noisy and nonstationary, and interference and adherence problems are commonplace. The utilization of GSC has demonstrated a remarkable increase in statistical power, approximately one hundredfold (100×) higher than conventional inferential methods. This innovative approach forms the basis of TestOps, a pioneering large-scale experimentation platform designed specifically for physical retailers. TestOps was developed and has been broadly implemented as part of a collaboration between Anheuser Busch Inbev (ABI) and a team of operations researchers and data engineers from the Massachusetts Institute of Technology. TestOps currently runs physical experiments impacting approximately 135 million USD in revenue every month and routinely identifies innovations that result in a 1%–2% increase in sales volume. The vast majority of these innovations would have remained unidentified had we not developed our novel approach to inference. Prior to our implementation, statistically significant conclusions could be drawn on only ∼6% of all experiments, a fraction that has now increased by 10-fold. Given its success, TestOps is being rolled out globally at ABI, driving significant revenue growth and enabling the extraction of valuable insights from large-scale physical experiments. History: This paper has been accepted for the INFORMS Journal on Applied Analytics Special Issue—2022 Daniel H. Wagner Prize for Excellence in the Practice of Advanced Analytics and Operations Research.