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Online Page Migration with ML Advice

Abstract

We consider online algorithms for the {\em page migration problem} that use predictions, potentially imperfect, to improve their performance. The best known online algorithms for this problem, due to Westbrook'94 and Bienkowski et al'17, have competitive ratios strictly bounded away from 1. In contrast, we show that if the algorithm is given a prediction of the input sequence, then it can achieve a competitive ratio that tends to 11 as the prediction error rate tends to 00. Specifically, the competitive ratio is equal to 1+O(q)1+O(q), where qq is the prediction error rate. We also design a ``fallback option'' that ensures that the competitive ratio of the algorithm for {\em any} input sequence is at most O(1/q)O(1/q). Our result adds to the recent body of work that uses machine learning to improve the performance of ``classic'' algorithms.

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