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Online metric algorithms with untrusted predictions

Authors :
Antoniadis, Antonios
Coester, Christian
Elias, Marek
Polak, Adam
Simon, Bertrand
Publication Year :
2020

Abstract

Machine-learned predictors, although achieving very good results for inputs resembling training data, cannot possibly provide perfect predictions in all situations. Still, decision-making systems that are based on such predictors need not only to benefit from good predictions but also to achieve a decent performance when the predictions are inadequate. In this paper, we propose a prediction setup for arbitrary metrical task systems (MTS) (e.g., caching, k-server and convex body chasing) and online matching on the line. We utilize results from the theory of online algorithms to show how to make the setup robust. Specifically for caching, we present an algorithm whose performance, as a function of the prediction error, is exponentially better than what is achievable for general MTS. Finally, we present an empirical evaluation of our methods on real world datasets, which suggests practicality.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2003.02144
Document Type :
Working Paper