Trans-dimensional Bayesian non-parametrics with spatial point processes

@inproceedings{Heikkinen2003TransdimensionalBN,
  title={Trans-dimensional Bayesian non-parametrics with spatial point processes},
  author={Juha Heikkinen},
  year={2003}
}
Point processes are a class of models where the notion of vari able dimension is inherent. The main part of this discussion is concerned with the applic ation of marked point processes as prior models in nonparametric Bayesian function e stimation, reformulating and revising earlier joint work with Elja Arjas and listing s ome other related work (Section 2). Accordingly, the discussion is centered on trans-d imensionalmodellingrather than on the simulation techniques themselves, and connects to… CONTINUE READING

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