Title
Analysis of One-way Alterable Length Hash Function Based on Cell Neural Network
Abstract
The design of an efficient one-way hash function with good performance is a hot spot in modern cryptography researches. In this paper, a hash function construction method based on cell neural network (CNN) with hyper-chaos characteristics is proposed. The chaos sequence generated by iterating CNN with Runge-Kutta algorithm, then the sequence iterates with every bit of the plaintext continually. Then hash code is obtained through the corresponding transform of the latter chaos sequence from iteration. Hash code with different length could be generated from the former hash result. Simulation and analysis demonstrate that the new method has the merit of convenience, high sensitivity to initial values, good hash performance, especially the strong stability, even if the hash code length is short relatively.
Year
DOI
Venue
2009
10.1109/IAS.2009.87
IAS
Keywords
Field
DocType
runge-kutta algorithm,hash function construction,hash code,cryptography,hash function construction method,cell neural network,hash code length,one-way hash function,former hash result,runge-kutta methods,one-way alterable length hash function,efficient one-way hash function,latter chaos sequence,hyper-chaos,different length,cellular neural nets,sequence iterates,one-way alterable length hash,chaos sequence,hash length,good hash performance,neural network,construction industry,data mining,runge kutta methods,hash function,artificial neural networks,runge kutta,bismuth,stability analysis,hot spot
SHA-2,Primary clustering,Double hashing,Computer science,Rolling hash,Algorithm,Hash buster,Hash function,Hash chain,MDC-2
Conference
Volume
ISBN
Citations 
1
978-0-7695-3744-3
0
PageRank 
References 
Authors
0.34
4
4
Name
Order
Citations
PageRank
Qunting Yang141.78
Tiegang Gao26822.08
Li Fan301.01
Qiaolun Gu4184.65