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📄 Abstract
Abstract: Performativity, the phenomenon where outcomes are influenced by predictions,
is particularly prevalent in social contexts where individuals strategically
respond to a deployed model. In order to preserve the high accuracy of machine
learning models under distribution shifts caused by performativity, Perdomo et
al. (2020) introduced the concept of performative risk minimization (PRM).
While this framework ensures model accuracy, it overlooks the impact of the PRM
on the underlying distributions and the predictions of the model. In this
paper, we initiate the analysis of the impact of PRM, by studying
performativity for a sequential performative risk minimization problem with
binary random variables and linear performative shifts. We formulate two
natural measures of impact. In the case of full information, where the
distribution dynamics are known, we derive explicit formulas for the PRM
solution and our impact measures. In the case of partial information, we
provide performative-aware statistical estimators, as well as simulations. Our
analysis contrasts PRM to alternatives that do not model data shift and
indicates that PRM can have amplified side effects compared to such methods.
Authors (4)
Nikita Tsoy
Ivan Kirev
Negin Rahimiyazdi
Nikola Konstantinov
Submitted
February 4, 2025
Key Contributions
Initiates the analysis of the impact of Performative Risk Minimization (PRM) beyond just maintaining accuracy. It studies performativity for sequential PRM with binary variables and linear shifts, proposing two measures of impact and deriving solutions for full information scenarios.
Business Value
Helps in designing AI systems that are more robust to user adaptation and strategic behavior, crucial for applications in finance, social platforms, and policy-making where predictions influence actions.