Pareto-Optimal Learning-Augmented Algorithms for Online Conversion Problems
Abstract
This paper leverages machine-learned predictions to design competitive algorithms for online conversion problems with the goal of improving the competitive ratio when predictions are accurate (i.e., consistency), while also guaranteeing a worst-case competitive ratio regardless of the prediction quality (i.e., robustness). We unify the algorithmic design of both integral and fractional conversion problems, which are also known as the 1-max-search and one-way trading problems, into a class of online threshold-based algorithms (OTA). By incorporating predictions into design of OTA, we achieve the Pareto-optimal trade-off of consistency and robustness, i.e., no online algorithm can achieve a better consistency guarantee given for a robustness guarantee. We demonstrate the performance of OTA using numerical experiments on Bitcoin conversion.
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Additional details
- Eprint ID
- 113731
- Resolver ID
- CaltechAUTHORS:20220304-172334654
- Created
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2022-03-07Created from EPrint's datestamp field
- Updated
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2022-03-07Created from EPrint's last_modified field