Title
Stochastic process semantics for dynamical grammars
Abstract
We define a class of probabilistic models in terms of an operator algebra of stochastic processes, and a representation for this class in terms of stochastic parameterized grammars. A syntactic specification of a grammar is formally mapped to semantics given in terms of a ring of operators, so that composition of grammars corresponds to operator addition or multiplication. The operators are generators for the time-evolution of stochastic processes. The dynamical evolution occurs in continuous time but is related to a corresponding discrete-time dynamics. An expansion of the exponential of such time-evolution operators can be used to derive a variety of simulation algorithms. Within this modeling framework one can express data clustering models, logic programs, ordinary and stochastic differential equations, branching processes, graph grammars, and stochastic chemical reaction kinetics. The mathematical formulation connects these apparently distant fields to one another and to mathematical methods from quantum field theory and operator algebra. Such broad expressiveness makes the framework particularly suitable for applications in machine learning and multiscale scientific modeling.
Year
DOI
Venue
2006
10.1007/s10472-006-9034-1
Ann. Math. Artif. Intell.
Keywords
DocType
Volume
stochastic processes,operator algebra,dynamical systems,multiscale modeling,probabilistic inference,machine learning,68T30,68T37
Journal
47
Issue
ISSN
Citations 
3-4
1012-2443
14
PageRank 
References 
Authors
1.85
12
2
Name
Order
Citations
PageRank
Eric Mjolsness11058140.00
Guy Yosiphon2364.50