33,175 research outputs found
Subtyping for Hierarchical, Reconfigurable Petri Nets
Hierarchical Petri nets allow a more abstract view and reconfigurable Petri
nets model dynamic structural adaptation. In this contribution we present the
combination of reconfigurable Petri nets and hierarchical Petri nets yielding
hierarchical structure for reconfigurable Petri nets. Hierarchies are
established by substituting transitions by subnets. These subnets are
themselves reconfigurable, so they are supplied with their own set of rules.
Moreover, global rules that can be applied in all of the net, are provided
Hierarchical Models for Independence Structures of Networks
We introduce a new family of network models, called hierarchical network
models, that allow us to represent in an explicit manner the stochastic
dependence among the dyads (random ties) of the network. In particular, each
member of this family can be associated with a graphical model defining
conditional independence clauses among the dyads of the network, called the
dependency graph. Every network model with dyadic independence assumption can
be generalized to construct members of this new family. Using this new
framework, we generalize the Erd\"os-R\'enyi and beta-models to create
hierarchical Erd\"os-R\'enyi and beta-models. We describe various methods for
parameter estimation as well as simulation studies for models with sparse
dependency graphs.Comment: 19 pages, 7 figure
Coordination in a hierarchical multi-actuator controller
A hierarchical multi-actuator controller is represented as a multi-resolutional information (knowledge) system utilizing a number of intelligent modules with decision making capabilities. The laws of multi-resolutional information (knowledge) organization and processing are presumed to be satisfied including the rules of dealing with redundant knowledge. A general case is considered in which a process to be controlled by a multiplicity of actuators is a distributed one and the condition of distribution can be formulated analytically. Operation of a lumped multi-actuator process is a particular case which has a broad practical application
Generalized Direct Sampling for Hierarchical Bayesian Models
We develop a new method to sample from posterior distributions in
hierarchical models without using Markov chain Monte Carlo. This method, which
is a variant of importance sampling ideas, is generally applicable to
high-dimensional models involving large data sets. Samples are independent, so
they can be collected in parallel, and we do not need to be concerned with
issues like chain convergence and autocorrelation. Additionally, the method can
be used to compute marginal likelihoods
Scalable Rejection Sampling for Bayesian Hierarchical Models
Bayesian hierarchical modeling is a popular approach to capturing unobserved
heterogeneity across individual units. However, standard estimation methods
such as Markov chain Monte Carlo (MCMC) can be impracticable for modeling
outcomes from a large number of units. We develop a new method to sample from
posterior distributions of Bayesian models, without using MCMC. Samples are
independent, so they can be collected in parallel, and we do not need to be
concerned with issues like chain convergence and autocorrelation. The algorithm
is scalable under the weak assumption that individual units are conditionally
independent, making it applicable for large datasets. It can also be used to
compute marginal likelihoods
- …