DocumentCode
1297496
Title
Twice-Universal Simulation of Markov Sources and Individual Sequences
Author
Martín, Álvaro ; Merhav, Neri ; Seroussi, Gadiel ; Weinberger, Marcelo J.
Author_Institution
Inst. de Comput., Univ. de la Republica, Montevideo, Uruguay
Volume
56
Issue
9
fYear
2010
Firstpage
4245
Lastpage
4255
Abstract
The problem of universal simulation given a training sequence is studied both in a stochastic setting and for individual sequences. In the stochastic setting, the training sequence is assumed to be emitted by a Markov source of unknown order, extending previous work where the order is assumed known and leading to the notion of twice-universal simulation. A simulation scheme, which partitions the set of sequences of a given length into classes, is proposed for this setting and shown to be asymptotically optimal. This partition extends the notion of type classes to the twice-universal setting. In the individual sequence scenario, the same simulation scheme is shown to generate sequences which are statistically similar, in a strong sense, to the training sequence, for statistics of any order, while essentially maximizing the uncertainty on the output.
Keywords
Markov processes; random processes; random sequences; Markov sources; random process simulation; training sequence; twice-universal simulation; Convergence; Entropy; Image generation; Laboratories; Markov processes; Mutual information; Noise generators; Probabilistic logic; Random number generation; Random processes; Speech enhancement; Speech synthesis; Statistics; Stochastic processes; Training; Uncertainty; Faithful simulators; Markov order estimation; Markov sources; method of types; random number generators; random process simulation; simulation of individual sequences; universal simulation;
fLanguage
English
Journal_Title
Information Theory, IEEE Transactions on
Publisher
ieee
ISSN
0018-9448
Type
jour
DOI
10.1109/TIT.2010.2053870
Filename
5550403
Link To Document