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Asynchronous Anytime Sequential Monte Carlo

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arxiv 1407.2864 v1 pith:YYUSR67J submitted 2014-07-10 stat.CO stat.ML

Asynchronous Anytime Sequential Monte Carlo

classification stat.CO stat.ML
keywords particleanytimecascadealgorithmasynchronouscarlomemorymonte
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We introduce a new sequential Monte Carlo algorithm we call the particle cascade. The particle cascade is an asynchronous, anytime alternative to traditional particle filtering algorithms. It uses no barrier synchronizations which leads to improved particle throughput and memory efficiency. It is an anytime algorithm in the sense that it can be run forever to emit an unbounded number of particles while keeping within a fixed memory budget. We prove that the particle cascade is an unbiased marginal likelihood estimator which means that it can be straightforwardly plugged into existing pseudomarginal methods.

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