Introduction to Probabilistic Automata (e-bog) af Paz, Azaria
Paz, Azaria (forfatter)

Introduction to Probabilistic Automata e-bog

473,39 DKK (inkl. moms 591,74 DKK)
Introduction to Probabilistic Automata deals with stochastic sequential machines, Markov chains, events, languages, acceptors, and applications. The book describes mathematical models of stochastic sequential machines (SSMs), stochastic input-output relations, and their representation by SSMs. The text also investigates decision problems and minimization-of-states problems arising from concepts...
E-bog 473,39 DKK
Forfattere Paz, Azaria (forfatter), Rheinboldt, Werner (redaktør)
Udgivet 10 maj 2014
Længde 254 sider
Genrer Mathematics
Sprog English
Format pdf
Beskyttelse LCP
ISBN 9781483268576
Introduction to Probabilistic Automata deals with stochastic sequential machines, Markov chains, events, languages, acceptors, and applications. The book describes mathematical models of stochastic sequential machines (SSMs), stochastic input-output relations, and their representation by SSMs. The text also investigates decision problems and minimization-of-states problems arising from concepts of equivalence and coverings for SSMs. The book presents the theory of nonhomogeneous Markov chains and systems in mathematical terms, particularly in relation to asymptotic behavior, composition (direct sum or product), and decomposition. "e;Word functions,"e; induced by Markov chains and valued Markov systems, involve characterization, equivalence, and representability by an underlying Markov chain or system. The text also discusses the closure properties of probabilistic languages, events and their relation to regular events, particularly with reference to definite, quasidefinite, and exclusive events. Probabilistic automata theory has applications in information theory, control, learning theory, pattern recognition, and time sharing in computer programming. Programmers, computer engineers, computer instructors, and students of computer science will find the collection highly valuable.