AbstractWe introduce a stochastic process based on nonhomogeneous Poisson processes and urn processes which can be reinforced to produce a mixture of semi-Markov processes. By working with the notion of exchangeable blocks within the process, we present a Bayesian nonparametric framework for handling data which arises in the form of a semi-Markov process. That is, if units provide information as a semi-Markov process and units are regarded as being exchangeable then we show how to construct the sequence of predictive distributions without explicit reference to the de Finetti measure, or prior
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
We define a continuous time stochastic process such that each is a Ferguson-Dirichlet random distrib...
AbstractWe introduce a stochastic process based on nonhomogeneous Poisson processes and urn processe...
We define a reinforced urn process (RUP) to be a reinforced random walk on a state space of urns and...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
AbstractWe define a reinforced urn process (RUP) to be a reinforced random walk on a state space of ...
Renewal processes are generalizations of the Poisson process on the real line whose intervals are dr...
We define a class of reinforced urn processes, based on Hoppe's urn scheme, that are Markov exchange...
In this paper we introduced new stochastic processes indexed by the vertices of a k-tree. While the...
We define a class of reinforced urn processes, based on Hoppe's urn scheme, that are Markov exchange...
Predictive constructions are a powerful way of characterizing the probability laws of stochastic pro...
We propose modeling for Poisson processes over time, exploiting the connection of the Poisson proces...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
This paper considers the problem of defining a time-dependent nonparametric prior for use in Bayesia...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
We define a continuous time stochastic process such that each is a Ferguson-Dirichlet random distrib...
AbstractWe introduce a stochastic process based on nonhomogeneous Poisson processes and urn processe...
We define a reinforced urn process (RUP) to be a reinforced random walk on a state space of urns and...
Random probability measures are a cornerstone of Bayesian nonparametrics. By virtue of de Finetti's ...
AbstractWe define a reinforced urn process (RUP) to be a reinforced random walk on a state space of ...
Renewal processes are generalizations of the Poisson process on the real line whose intervals are dr...
We define a class of reinforced urn processes, based on Hoppe's urn scheme, that are Markov exchange...
In this paper we introduced new stochastic processes indexed by the vertices of a k-tree. While the...
We define a class of reinforced urn processes, based on Hoppe's urn scheme, that are Markov exchange...
Predictive constructions are a powerful way of characterizing the probability laws of stochastic pro...
We propose modeling for Poisson processes over time, exploiting the connection of the Poisson proces...
The non-homogeneous Poisson process provides a generalised framework for the modelling of random poi...
This paper considers the problem of defining a time-dependent nonparametric prior for use in Bayesia...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
Loosely speaking, the Shannon entropy rate is used to gauge a stochastic process' intrinsic randomne...
We define a continuous time stochastic process such that each is a Ferguson-Dirichlet random distrib...