Interference, Bias, and Variance in Two-Sided Marketplace Experimentation: Guidance for Platforms
Hannah Li, Geng Zhao, Ramesh Johari, Gabriel Y. Weintraub

TL;DR
This paper analyzes bias and variance in two-sided marketplace experiments, providing guidance on optimal experiment design choices considering interference effects and market conditions.
Contribution
It introduces a simple market model to study how experiment type and treatment proportion affect bias and variance, guiding platform experiment design.
Findings
Bias depends on experiment type and market balance.
Choosing the right experiment type can minimize bias with little variance impact.
Optimal treatment proportion involves a bias-variance tradeoff.
Abstract
Two-sided marketplace platforms often run experiments to test the effect of an intervention before launching it platform-wide. A typical approach is to randomize individuals into the treatment group, which receives the intervention, and the control group, which does not. The platform then compares the performance in the two groups to estimate the effect if the intervention were launched to everyone. We focus on two common experiment types, where the platform randomizes individuals either on the supply side or on the demand side. The resulting estimates of the treatment effect in these experiments are typically biased: because individuals in the market compete with each other, individuals in the treatment group affect those in the control group and vice versa, creating interference. We develop a simple tractable market model to study bias and variance in these experiments with…
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Taxonomy
TopicsDigital Platforms and Economics · Experimental Behavioral Economics Studies · Advanced Causal Inference Techniques
