Reciprocal class of jump processes
Processes having the same bridges as a given reference Markov process constitute its reciprocal class. In this paper we study the reciprocal class of compound Poisson processes whose jumps belong to a finite set A in R^d. We propose a characterization of the reciprocal class as the unique set of pro...
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Universität Potsdam
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ndltd-Potsdam-oai-kobv.de-opus-ubp-70772015-01-06T04:07:02Z Reciprocal class of jump processes Conforti, Giovanni Dai Pra, Paolo Roelly, Sylvie reciprocal processes stochastic bridges jump processes compound Poisson processes Mathematics Processes having the same bridges as a given reference Markov process constitute its reciprocal class. In this paper we study the reciprocal class of compound Poisson processes whose jumps belong to a finite set A in R^d. We propose a characterization of the reciprocal class as the unique set of probability measures on which a family of time and space transformations induces the same density, expressed in terms of the reciprocal invariants. The geometry of A plays a crucial role in the design of the transformations, and we use tools from discrete geometry to obtain an optimal characterization. We deduce explicit conditions for two Markov jump processes to belong to the same class. Finally, we provide a natural interpretation of the invariants as short-time asymptotics for the probability that the reference process makes a cycle around its current state. Universität Potsdam Mathematisch-Naturwissenschaftliche Fakultät. Institut für Mathematik 2014 Preprint application/pdf urn:nbn:de:kobv:517-opus-70776 http://opus.kobv.de/ubp/volltexte/2014/7077/ eng http://opus.kobv.de/ubp/doku/urheberrecht.php |
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language |
English |
format |
Others
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sources |
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reciprocal processes stochastic bridges jump processes compound Poisson processes Mathematics |
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reciprocal processes stochastic bridges jump processes compound Poisson processes Mathematics Conforti, Giovanni Dai Pra, Paolo Roelly, Sylvie Reciprocal class of jump processes |
description |
Processes having the same bridges as a given reference Markov process
constitute its reciprocal class. In this paper we study the reciprocal class
of compound Poisson processes whose jumps belong to a finite set A in R^d.
We propose a characterization of the reciprocal class as the unique set of
probability measures on which a family of time and space transformations
induces the same density, expressed in terms of the reciprocal invariants.
The geometry of A plays a crucial role in the design of the transformations,
and we use tools from discrete geometry to obtain an optimal characterization.
We deduce explicit conditions for two Markov jump processes to belong to the same class. Finally, we provide a natural interpretation of the invariants as short-time asymptotics for the probability that the reference process makes a cycle around its current state. |
author |
Conforti, Giovanni Dai Pra, Paolo Roelly, Sylvie |
author_facet |
Conforti, Giovanni Dai Pra, Paolo Roelly, Sylvie |
author_sort |
Conforti, Giovanni |
title |
Reciprocal class of jump processes |
title_short |
Reciprocal class of jump processes |
title_full |
Reciprocal class of jump processes |
title_fullStr |
Reciprocal class of jump processes |
title_full_unstemmed |
Reciprocal class of jump processes |
title_sort |
reciprocal class of jump processes |
publisher |
Universität Potsdam |
publishDate |
2014 |
url |
http://nbn-resolving.de/urn:nbn:de:kobv:517-opus-70776 http://opus.kobv.de/ubp/volltexte/2014/7077/ |
work_keys_str_mv |
AT confortigiovanni reciprocalclassofjumpprocesses AT daiprapaolo reciprocalclassofjumpprocesses AT roellysylvie reciprocalclassofjumpprocesses |
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1716727693179879424 |