Best Paper Award at ICDF2C’15

2015-10-13

The paper “How Cuckoo Filter Can Improve Existing Approximate Matching Technique” won the best paper award at the 7th EAI International Conference on Digital Forensics & Cyber Crime (ICDF2C) conference in Seoul, Korea. The abstract is listed below.

Due to the importance of this conference, this news was also featured in New Haven Register.

Breitinger_ICDF2C_2015_2 Breitinger_ICDF2C_2015_1 Frank_Breitinger_best_paper ICDF2C_15

Abstract

In recent years, approximate matching algorithms have become an important component in digital forensic research and have been adopted in some other working areas as well. Currently there are several approaches but especially sdhash and mrsh-v2 attract the attention of the community because of their good overall performance (runtime, compression and detection rates). Although both approaches have a quite different proceeding, their final output (the similarity digest) is very similar as both utilize Bloom filters. This data structure was presented in 1970 and thus has been around for a while. Recently, a new data structure was proposed and claimed to be faster and have a smaller memory footprint than Bloom filter – Cuckoo filter.
In this paper we analyze the feasibility of Cuckoo filter for approximate matching algorithms and present a prototype implementation called mrsh-cf which is based on a special version of mrsh-v2 called mrsh-net. We demonstrate that by using Cuckoo filter there is a runtime improvement of approximately 37% and also a significantly better false positive rate. The memory footprint of mrsh-cf is 8 times smaller than mrsh-net, while the compression rate is twice than Bloom filter based fingerprint.