Improving Online Rent-or-Buy Algorithms with Sequential Decision Making and ML Predictions
–Neural Information Processing Systems
In this work we study online rent-or-buy problems as a sequential decision making problem. We show how one can integrate predictions, typically coming from a machine learning (ML) setup, into this framework. Specifically, we consider the ski-rental problem and the dynamic TCP acknowledgment problem. We present new online algorithms and obtain explicit performance bounds in-terms of the accuracy of the prediction. Our algorithms are close to optimal with accurate predictions while hedging against less accurate predictions.
Neural Information Processing Systems
Dec-24-2025, 21:11:58 GMT
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