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Towards Distributed MCMC Inference in Probabilistic Knowledge Bases

机译:在概率知识库中实现分布式MCMC推理

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Probabilistic knowledge bases are commonly used in areas such as large-scale information extraction, data integration, and knowledge capture, to name but a few. Inference in probabilistic knowledge bases is a computationally challenging problem. With this contribution, we present our vision of a distributed inference algorithm based on conflict graph construction and hypergraph sampling. Early empirical results show that the approach efficiently and accurately computes a-posteriori probabilities of a knowledge base derived from a well-known information extraction system.
机译:概率知识库通常用于诸如大规模信息提取,数据集成和知识捕获等领域,仅举几例。概率知识库中的推理是一个计算难题。借助这一贡献,我们提出了基于冲突图构造和超图采样的分布式推理算法的愿景。早期的经验结果表明,该方法可以高效,准确地计算出从众所周知的信息提取系统中提取的知识库的后验概率。

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