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Autoscaling Bloom filter: controlling trade-off between true and false positives

Denis Kleyko, Abbas Rahimi, Ross W. Gayler, Evgeny Osipov

2020Repository for Publications and Research Data (ETH Zurich)27 citationsDOIOpen Access PDF

Abstract

A Bloom filter is a special case of an artificial neural network with two layers. Traditionally, it is seen as a simple data structure supporting membership queries on a set. The standard Bloom filter does not support the delete operation, and therefore, many applications use a counting Bloom filter to enable deletion. This paper proposes a generalization of the counting Bloom filter approach, called “autoscaling Bloom filters”, which allows adjustment of its capacity with probabilistic bounds on false positives and true positives. Thus, by relaxing the requirement on perfect true positive rate, the proposed autoscaling Bloom filter addresses the major difficulty of Bloom filters with respect to their scalability. In essence, the autoscaling Bloom filter is a binarized counting Bloom filter with an adjustable binarization threshold. We present the mathematical analysis of its performance and provide a procedure for minimizing its false positive rate.

Topics & Concepts

Bloom filterFalse positive paradoxFilter (signal processing)Computer scienceGeneralizationBloomAlgorithmSet (abstract data type)Probabilistic logicArtificial intelligenceMathematicsComputer visionMathematical analysisEcologyBiologyProgramming languageCaching and Content DeliveryCovalent Organic Framework ApplicationsAdvanced Photocatalysis Techniques
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