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      Approximate Probabilistic Inference via Word-Level Counting

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          Abstract

          Hashing-based model counting has emerged as a promising approach for large-scale probabilistic inference on graphical models. A key component of these techniques is the use of xor-based 2-universal hash functions that operate over Boolean domains. Many counting problems arising in probabilistic inference are, however, naturally encoded over finite discrete domains. Techniques based on bit-level (or Boolean) hash functions require these problems to be propositionalized, making it impossible to leverage the remarkable progress made in SMT (Satisfiability Modulo Theory) solvers that can reason directly over words (or bit-vectors). In this work, we present the first approximate model counter that uses word-level hashing functions, and can directly leverage the power of sophisticated SMT solvers. Empirical evaluation over an extensive suite of benchmarks demonstrates the promise of the approach.

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          Author and article information

          Journal
          2015-11-24
          2016-02-09
          Article
          1511.07663
          d9e0450c-f4de-4e81-944c-f4d3ea9a0dcb

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          Full version of AAAI 2016 paper
          cs.AI cs.LO

          Theoretical computer science,Artificial intelligence
          Theoretical computer science, Artificial intelligence

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