Conference paper

SMETKA Tomáš, HOMOLIAK Ivan and HANÁČEK Petr. On the Application of Symbolic Regression and Genetic Programming for Cryptanalysis of Symmetric Encryption Algorithm. In: Proceedings of 2016 IEEE International Carnahan Conference on Security Technology. Orlando, Fl: Institute of Electrical and Electronics Engineers, 2016, pp. 1-8. ISBN 978-1-5090-1072-1.
Publication language:english
Original title:On the Application of Symbolic Regression and Genetic Programming for Cryptanalysis of Symmetric Encryption Algorithm
Title (cs):Použítí symbolické regrese a genetického programování pro dešifrování symetrického šifrovacího algoritmu
Pages:1-8
Proceedings:Proceedings of 2016 IEEE International Carnahan Conference on Security Technology
Conference:50th INTERNATIONAL CARNAHAN CONFERENCE ON SECURITY TECHNOLOGY 2016
Place:Orlando, Fl, US
Year:2016
ISBN:978-1-5090-1072-1
DOI:10.1109/CCST.2016.7815720
Publisher:Institute of Electrical and Electronics Engineers
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Keywords
symbolic regression, genetic programming, cryptanalysis, DES
Annotation
The aim of the paper is to show different point of view on the problem of cryptanalysis of symmetric encryption algorithms. Our dissimilar approach, compared to the existing methods, lies in the use of the power of evolutionary principles which are in our cryptanalytic system utilized with utilization of the genetic programming (GP) in order to perform known plain-text attack (KPA). Our expected result is to find a program (i.e. function) that models the behavior of a symmetric encryption algorithm DES instantiated by specific key. If such a program would exist, then it could be possible to decipher new messages that have been encrypted by unknown secret key.The GP is employed as the basis of this work. GP is an evolutionary algorithm-based methodology inspired by biological evolution which is capable of creating computer programs solving a corresponding problem. The symbolic regression (SR) method is employed as the application of GP in practical problem. The SR method builds functions from predefined set of terminal blocks in the process of the GP evolution; and these functions approximate a list of input values pairs. The evolution of GP is controlled by a fitness function which evaluates the goal of a corresponding problem. The Hamming distance, a difference between a current individual value and a reference one, is chosen as the fitness function for our cryptanalysis problem.The functionality of our GP solution is verified by validation tests composed of polynomials of various degrees. Control statements IF and FOR are verified by computation of factorial function.The set of preconditions is determined in the experimenting stage: estimation of the worst fitness value; finding the most suitable GP parameters; transformation of KPA with elimination of an initial and final permutations; evolution of the best individual; influence of the number of encryption rounds; the cardinality of a training set; and the model generalization.The results of the experiment did not approve the most of initial assumptions. The number of encryption rounds did not influence the quality of the best individual, however, its quality was influenced by the cardinality of a training set. The elimination of the initial and final permutations had no influence on the quality of the results in the process of evolution. These results showed that our KPA GP solution is not capable of revealing internal structure of the DES algorithm's behavior. The symbolic regression method proved itself to be successful only within the convergence of the best solution where it reveals up to the 70% of secret information (45 bits), however, sub-optimal solutions do not need to be similar to optimal one.The complexity of the DES algorithm encountered with the scalability of GP. The DES algorithm takes as input a key containing 56 bits implying extensive state space explosion of generated functions, in which the discovery of the best model is highly improbable with contemporary technical capabilities.
BibTeX:
@INPROCEEDINGS{
   author = {Tom{\'{a}}{\v{s}} Smetka and Ivan Homoliak and
	Petr Han{\'{a}}{\v{c}}ek},
   title = {On the Application of Symbolic Regression and
	Genetic Programming for Cryptanalysis of Symmetric
	Encryption Algorithm},
   pages = {1--8},
   booktitle = {Proceedings of 2016 IEEE International Carnahan Conference
	on Security Technology},
   year = {2016},
   location = {Orlando, Fl, US},
   publisher = {Institute of Electrical and Electronics Engineers},
   ISBN = {978-1-5090-1072-1},
   doi = {10.1109/CCST.2016.7815720},
   language = {english},
   url = {http://www.fit.vutbr.cz/research/view_pub.php?id=11144}
}

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