2020
DOI: 10.18187/pjsor.v16i4.3394
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Testing the Semi Markov Model Using Monte Carlo Simulation Method for Predicting the Network Traffic

Abstract: Semi-Markov processes can be considered as a generalization of both Markov and renewal processes. One of the principal characteristics of these processes is that in opposition to Markov models, they represent systems whose evolution is dependent not only on their last visited state but on the elapsed time since this state. Semi-Markov processes are replacing the exponential distribution of time intervals with an optional distribution. In this paper, we give a statistical approach to test the semi-Markov hypoth… Show more

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Cited by 3 publications
(1 citation statement)
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“…HydraGAN's ensures the privacy of sensitive data by generating synthetic data that obfuscates sensitive information while retaining the predictive concepts within the original data. Synthetic data generation techniques vary widely in form, including probabilistic approaches to simulating epidemiological information [15,20,33], deep methods such as autoencoders that create synthetic medical images [40,44,46], and Markov models being that synthesize and predict network traffic [25].…”
Section: Synthetic Data Generationmentioning
confidence: 99%
“…HydraGAN's ensures the privacy of sensitive data by generating synthetic data that obfuscates sensitive information while retaining the predictive concepts within the original data. Synthetic data generation techniques vary widely in form, including probabilistic approaches to simulating epidemiological information [15,20,33], deep methods such as autoencoders that create synthetic medical images [40,44,46], and Markov models being that synthesize and predict network traffic [25].…”
Section: Synthetic Data Generationmentioning
confidence: 99%