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STATISTICAL RELATIONAL LEARNING GROUP @ UMD



 

Bisimulation-based Approximate Lifted Inference

Prithviraj Sen, Amol Deshpande, Lise Getoor
Uncertainty in Artificial Intelligence - 2009
Download the publication : uai09.pdf [246Ko]  
There has been a great deal of recent interest in methods for performing lifted inference, however most of this work assumes that the first-order model is given as input to the system. Here, we describe lifted inference algorithms that determine symmetries and automatically lift the probabilistic model to speedup inference. In particular, we describe approximate lifted inference techniques that allow the user to trade off inference accuracy for computational efficiency by using a handful of tunable parameters, while keeping the error bounded. Our algorithms are closely related to the graph-theoretic concept of bisimulation. We report experiments on both synthetic and real data to show that in the presence of symmetries, run-times for inference can be improved significantly, with approximate lifted inference providing orders of magnitude speedup over ground inference.

BibTex references

@InProceedings{sen:uai09,
  author       = "Sen, Prithviraj and Deshpande, Amol and Getoor, Lise",
  title        = "Bisimulation-based Approximate Lifted Inference",
  booktitle    = "Uncertainty in Artificial Intelligence",
  year         = "2009",
}

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