Distributed filtration of state-space models with sensor networks assumes knowledge of a model of the data-generating process. However, this assumption is often violated in practice, as the conditions vary from node to node and are usually only partially known. In addition, the model may generally be too complicated, computationally demanding or even completely intractable. In this contribution, we propose a distributed filtration framework based on the novel approximate Bayesian computation (ABC) methods, which is able to overcome these issues. In particular, we focus on filtration in diffusion networks, where neighboring nodes share their observations and posterior distributions.
机构:
Univ Paris 11, Dept Math, Inria Saclay Ile de France, F-91405 Orsay, FranceUniv Paris 11, Dept Math, Inria Saclay Ile de France, F-91405 Orsay, France
机构:
Univ Oxford, Math Inst, Wolfson Ctr Math Biol, Andrew Wiles Bldg,Woodstock Rd, Oxford OX2 6GG, EnglandUniv Oxford, Math Inst, Wolfson Ctr Math Biol, Andrew Wiles Bldg,Woodstock Rd, Oxford OX2 6GG, England