Guessing And Compression : A Large Deviations Approach

The problem of guessing a random string is studied. It arises in the analysis of the strength of secret-key cryptosystems against guessing attacks. Expected number of guesses, or more generally moments of the number of guesses needed to break the cryptosystem grow exponentially with the length of th...

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Main Author: Hanawal, Manjesh Kumar
Other Authors: Sundaresan, Rajesh
Language:en_US
Published: 2011
Subjects:
Online Access:http://hdl.handle.net/2005/1106
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spelling ndltd-IISc-oai-etd.ncsi.iisc.ernet.in-2005-11062013-01-07T21:21:13ZGuessing And Compression : A Large Deviations ApproachHanawal, Manjesh KumarCryptographyAccess ControlRandom StringCompression Of InformationInformation TheoryCoding TheoryLarge Deviations TheoryGuessing and CompressionComputer ScienceThe problem of guessing a random string is studied. It arises in the analysis of the strength of secret-key cryptosystems against guessing attacks. Expected number of guesses, or more generally moments of the number of guesses needed to break the cryptosystem grow exponentially with the length of the string. This thesis studies the rate of exponential growth of these moments using the theory of large deviations. A closer elation between guessing and compression is first established. For systems with large key rates, it is shown that if the source’s sequence of so-called information spectrum random variables satisfies the large deviation property with a certain rate function, then the limiting guessing exponent exists and is a scalar multiple of the Legendre-Fenchel dual of the rate function. This is then used to rederive several prior results. The large deviations approach brings to light the relevance of information spectrum in determining guessing exponents. For systems with key-rate constraints, bounds are derived on the limiting guessing exponents for general sources. The obtained bounds are shown to be tight for stationary memoryless, Markov, and unifilar sources, thus recovering some known results. The bounds are obtained by establishing a close relationship between error exponents and correct decoding exponents for fixed rate source compression on the one hand and exponents for guessing moments on the other.Sundaresan, Rajesh2011-04-01T05:28:07Z2011-04-01T05:28:07Z2011-04-012009-02Thesishttp://hdl.handle.net/2005/1106en_USG23070
collection NDLTD
language en_US
sources NDLTD
topic Cryptography
Access Control
Random String
Compression Of Information
Information Theory
Coding Theory
Large Deviations Theory
Guessing and Compression
Computer Science
spellingShingle Cryptography
Access Control
Random String
Compression Of Information
Information Theory
Coding Theory
Large Deviations Theory
Guessing and Compression
Computer Science
Hanawal, Manjesh Kumar
Guessing And Compression : A Large Deviations Approach
description The problem of guessing a random string is studied. It arises in the analysis of the strength of secret-key cryptosystems against guessing attacks. Expected number of guesses, or more generally moments of the number of guesses needed to break the cryptosystem grow exponentially with the length of the string. This thesis studies the rate of exponential growth of these moments using the theory of large deviations. A closer elation between guessing and compression is first established. For systems with large key rates, it is shown that if the source’s sequence of so-called information spectrum random variables satisfies the large deviation property with a certain rate function, then the limiting guessing exponent exists and is a scalar multiple of the Legendre-Fenchel dual of the rate function. This is then used to rederive several prior results. The large deviations approach brings to light the relevance of information spectrum in determining guessing exponents. For systems with key-rate constraints, bounds are derived on the limiting guessing exponents for general sources. The obtained bounds are shown to be tight for stationary memoryless, Markov, and unifilar sources, thus recovering some known results. The bounds are obtained by establishing a close relationship between error exponents and correct decoding exponents for fixed rate source compression on the one hand and exponents for guessing moments on the other.
author2 Sundaresan, Rajesh
author_facet Sundaresan, Rajesh
Hanawal, Manjesh Kumar
author Hanawal, Manjesh Kumar
author_sort Hanawal, Manjesh Kumar
title Guessing And Compression : A Large Deviations Approach
title_short Guessing And Compression : A Large Deviations Approach
title_full Guessing And Compression : A Large Deviations Approach
title_fullStr Guessing And Compression : A Large Deviations Approach
title_full_unstemmed Guessing And Compression : A Large Deviations Approach
title_sort guessing and compression : a large deviations approach
publishDate 2011
url http://hdl.handle.net/2005/1106
work_keys_str_mv AT hanawalmanjeshkumar guessingandcompressionalargedeviationsapproach
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