3 research outputs found
An Evaluation Framework for Personalization Strategy Experiment Designs
Online Controlled Experiments (OCEs) are the gold standard in evaluating the
effectiveness of changes to websites. An important type of OCE evaluates
different personalization strategies, which present challenges in low test
power and lack of full control in group assignment. We argue that getting the
right experiment setup -- the allocation of users to treatment/analysis groups
-- should take precedence of post-hoc variance reduction techniques in order to
enable the scaling of the number of experiments. We present an evaluation
framework that, along with a few simple rule of thumbs, allow experimenters to
quickly compare which experiment setup will lead to the highest probability of
detecting a treatment effect under their particular circumstance.Comment: Presented in the AdKDD 2020 workshop, in conjunction with The 26th
ACM SIGKDD Conference on Knowledge Discovery and Data Mining, KDD 2020. Main
paper: 7 pages, 2 figures, 2 tables, Supplementary document: 6 page