Corpus ID: 49241948

Web-Scale Knowledge Inference Using Markov Logic Networks

@inproceedings{Chen2013WebScaleKI,
  title={Web-Scale Knowledge Inference Using Markov Logic Networks},
  author={Yang Chen and D. Wang},
  year={2013}
}
  • Yang Chen, D. Wang
  • Published 2013
  • In this paper, we present our on-going work on ProbKB, a PROBabilistic Knowledge Base constructed from web-scale extracted entities, facts, and rules represented as a Markov logic network (MLN). We aim at web-scale MLN inference by designing a novel relational model to represent MLNs and algorithms that apply rules in batches. Errors are handled in a principled and elegant manner to avoid error propagation and unnecessary resource consumption. MLNs infer from the input a factor graph that… CONTINUE READING

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