Adaptive Caching by Refetching

Gramacy, Robert B., Warmuth, Manfred K., Brandt, Scott A., Ari, Ismail

Neural Information Processing Systems 

We are constructing caching policies that have 13-20% lower miss rates than the best of twelve baseline policies over a large variety of request streams. This represents an improvement of 49-63% over Least Recently Used, the most commonly implemented policy. We achieve this not by designing a specific new policy but by using online Machine Learning algorithms to dynamically shift between the standard policies based on their observed miss rates. A thorough experimental evaluation of our techniques is given, as well as a discussion of what makes caching an interesting online learning problem.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found