Title :
Expurgated Random-Coding Ensembles: Exponents, Refinements, and Connections
Author :
Scarlett, Jonathan ; Li Peng ; Merhav, Neri ; Martinez, A. ; Guillen i Fabregas, Albert
Author_Institution :
Dept. of Eng., Univ. of Cambridge, Cambridge, UK
Abstract :
This paper studies expurgated random-coding bounds and exponents for channel coding with a given (possibly suboptimal) decoding rule. Variations of Gallager´s analysis are presented, yielding several asymptotic and nonasymptotic bounds on the error probability for an arbitrary codeword distribution. A simple nonasymptotic bound is shown to attain an exponent of Csiszár and Körner under constant-composition coding. Using Lagrange duality, this exponent is expressed in several forms, one of which is shown to permit a direct derivation via cost-constrained coding that extends to infinite and continuous alphabets. The method of type class enumeration is studied, and it is shown that this approach can yield improved exponents and better tightness guarantees for some codeword distributions. A generalization of this approach is shown to provide a multiletter exponent that extends immediately to channels with memory.
Keywords :
channel coding; decoding; error statistics; random codes; Gallager analysis; Lagrange duality; arbitrary codeword distribution; asymptotic bounds; channel coding; codeword distributions; connections; constant-composition coding; continuous alphabets; cost-constrained coding; decoding rule; error probability; exponents; expurgated random-coding bounds; expurgated random-coding ensembles; infinite alphabets; refinements; simple nonasymptotic bound; type class enumeration; Decoding; Electronic mail; Encoding; Error probability; IP networks; Joints; Measurement; Expurgated error exponents; maximum-likelihood decoding; mismatched decoding; random coding; reliability function; type class enumeration;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2014.2322033