Smoothed Online Optimization with Unreliable Predictions
Abstract
We consider online optimization with switching costs in a normed vector space (X, ||·||) wherein, at each time t, a decision maker observes a non-convex hitting cost function ƒ : t X →[0, ∞] and must decide upon some xt∈X→, paying ƒt (xt) + || xt-xt-1||, where ||·|| characterizes the switching cost. Throughout, we assume that ƒt is globally α-polyhedral, i.e., ƒt has a unique minimizer υt ∈X, and, for all x ∈ X, ƒ t) (x) ≥ ƒt + α · ||x - υ t. Moreover, we assume that the decision maker has access to an untrusted prediction xt of the optimal decision during each round, such as the decision suggested by a black-box AI tool.
Copyright and License
© 2023 Copyright held by the owner/author(s).
Acknowledgement
The work was partially supported by the NSF grants CIF-2113027, CNS-2146814, CPS-2136197, CNS-2106403, and NGSDI-2105648, an NSF Graduate Research Fellowship (DGE-1745301), and Amazon AWS.
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Additional details
- National Science Foundation
- CCF-2113027
- National Science Foundation
- CNS-2146814
- National Science Foundation
- ECCS-2136197
- National Science Foundation
- CNS-2106403
- National Science Foundation
- CNS-2105648
- NSF
- Graduate Research Fellowship (DGE-1745301)
- Amazon (United States)