Litcius/Paper detail

Adaptive Cuckoo Filters

Michael Mitzenmacher, Salvatore Pontarelli, Pedro Reviriego

2020ACM Journal of Experimental Algorithmics37 citationsDOIOpen Access PDF

Abstract

We introduce the adaptive cuckoo filter (ACF), a data structure for approximate set membership that extends cuckoo filters by reacting to false positives, removing them for future queries. As an example application, in packet processing queries may correspond to flow identifiers, so a search for an element is likely to be followed by repeated searches for that element. Removing false positives can therefore significantly lower the false-positive rate. The ACF, like the cuckoo filter, uses a cuckoo hash table to store fingerprints. We allow fingerprint entries to be changed in response to a false positive in a manner designed to minimize the effect on the performance of the filter. We show that the ACF is able to significantly reduce the false-positive rate by presenting both a theoretical model for the false-positive rate and simulations using both synthetic data sets and real packet traces.

Topics & Concepts

Bloom filterFalse positive paradoxFalse positive rateComputer scienceFilter (signal processing)CuckooNetwork packetIdentifierHash functionFingerprint (computing)Cuckoo searchHash tableTrue positive rateSet (abstract data type)AlgorithmElement (criminal law)Data miningArtificial intelligenceComputer securityComputer networkComputer visionParticle swarm optimizationPolitical scienceZoologyBiologyLawProgramming languageCaching and Content DeliveryInternet Traffic Analysis and Secure E-votingCovalent Organic Framework Applications