Stochastic Optimization Schemes for Performative Prediction with Nonconvex Loss
–Neural Information Processing Systems
This paper studies a risk minimization problem with decision dependent data distribution. The problem pertains to the performative prediction setting in which a trained model can affect the outcome estimated by the model. Such dependency creates a feedback loop that influences the stability of optimization algorithms such as stochastic gradient descent (SGD). We present the first study on performative prediction with smooth but possibly non-convex loss. We analyze a greedy deployment scheme with SGD (SGD-GD).
Neural Information Processing Systems
Dec-23-2025, 23:48:00 GMT
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