Motivated by the analog nature of real-world signals, we investigate continuous-time random processes. For this purpose, we consider the stochastic processes that can be whitened by linear transformations and we show that the distribution of their samples is necessarily infinitely divisible. As a consequence, such a modeling rules out the Bernoulli-Gaussian distribution since we are able to show in this paper that it is not infinitely divisible. In other words, while the Bernoulli-Gaussian distribution is among the most studied priors for modeling sparse signals, it cannot be associated with any continuous-time stochastic process. Instead, we propose to adapt the priors that correspond to the increments of compound Poisson processes, which ...
A concept of divisibility is introduced for stochastic difference equations. Infinite divisibility t...
In this paper we consider a (possibly continuous) space of Bernoulli experiments. We assume that the...
We consider the class of continuous-time autoregressive (CAR) processes driven by (possibly non-Gaus...
The theory of sparse stochastic processes offers a broad class of statistical models to study signal...
Abstract — We introduce a general distributional framework that results in a unifying description an...
We introduce a general distributional framework that results in a unifying description and character...
We introduce a general distributional framework that results in a unifying description and character...
This paper is a continuation of cite{KP06}, where we discussed the origins and inter-relations of ma...
Abstract. The characteristic functional is the infinite-dimensional generalization of the Fourier tr...
In this paper we study time series models with infinitely divisible marginal distributions. The moti...
This paper is devoted to the characterization of an extended family of continuous-time autoregressiv...
We introduce the notion of random self-decomposability and discuss its relation to the concepts of s...
AbstractWe introduce a stochastic process based on nonhomogeneous Poisson processes and urn processe...
AbstractA representation for the probability generating functional (p.g.fl.) of a regular infinitely...
This thesis is composed of five chapters, regarding several models for dependence in stochastic proc...
A concept of divisibility is introduced for stochastic difference equations. Infinite divisibility t...
In this paper we consider a (possibly continuous) space of Bernoulli experiments. We assume that the...
We consider the class of continuous-time autoregressive (CAR) processes driven by (possibly non-Gaus...
The theory of sparse stochastic processes offers a broad class of statistical models to study signal...
Abstract — We introduce a general distributional framework that results in a unifying description an...
We introduce a general distributional framework that results in a unifying description and character...
We introduce a general distributional framework that results in a unifying description and character...
This paper is a continuation of cite{KP06}, where we discussed the origins and inter-relations of ma...
Abstract. The characteristic functional is the infinite-dimensional generalization of the Fourier tr...
In this paper we study time series models with infinitely divisible marginal distributions. The moti...
This paper is devoted to the characterization of an extended family of continuous-time autoregressiv...
We introduce the notion of random self-decomposability and discuss its relation to the concepts of s...
AbstractWe introduce a stochastic process based on nonhomogeneous Poisson processes and urn processe...
AbstractA representation for the probability generating functional (p.g.fl.) of a regular infinitely...
This thesis is composed of five chapters, regarding several models for dependence in stochastic proc...
A concept of divisibility is introduced for stochastic difference equations. Infinite divisibility t...
In this paper we consider a (possibly continuous) space of Bernoulli experiments. We assume that the...
We consider the class of continuous-time autoregressive (CAR) processes driven by (possibly non-Gaus...