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Some new theorems of Markov Models from the originating Chain measure - New analytical expressions and new techniques in Markov Models: applications in catalysis and in protein dynamics. DE

English · Paperback / Softback

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Some new theorems of Markov Chains are formulated from Measure-Theoretical aspects; the errors-calculations theorems are analytically spelled.The theorems about the m-states MSM's are descended directly from theMarkov Chain formulations, and, in particular, from the measure of the originating Markov Chain.The new techniques are apt for software implementation in which the numerical simulation are replaced with exact analytical expressions.The opportune representation of the probability matrix is newly chosen. New understanding is provided with in catalysis and protein-dynamics validation.The new theorems and the new techniques are applied to new modelisations of the K-Ras4B evolution and of the pertinent drug preparation: as a further result, the originating Markov Chain of the K-Ras4B protein in catalytic environment is proven to be a finite time-continuous Markov Chain with Hilbert measure (and bounded moments).

About the author










Prof. Orchidea Maria Lecian graduated in Theoretical Physics at Sapienza University of Rome in 2005, where she completed her PhD.She is Porfessor at Sapienza University of Rome, Rome, Italy.

Product details

Authors Orchidea Maria Lecian
Publisher LAP Lambert Academic Publishing
 
Languages English
Product format Paperback / Softback
Released 29.03.2024
 
EAN 9786207471812
ISBN 9786207471812
No. of pages 100
Subject Natural sciences, medicine, IT, technology > Mathematics > Miscellaneous

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