Corpus ID: 14575680

Online Inference for Relation Extraction with a Reduced Feature Set

@article{Rabinovich2015OnlineIF,
  title={Online Inference for Relation Extraction with a Reduced Feature Set},
  author={Maxim Rabinovich and C{\'e}dric Archambeau},
  journal={ArXiv},
  year={2015},
  volume={abs/1504.04770}
}
  • Maxim Rabinovich, Cédric Archambeau
  • Published in ArXiv 2015
  • Computer Science
  • Access to web-scale corpora is gradually bringing robust automatic knowledge base creation and extension within reach. To exploit these large unannotated---and extremely difficult to annotate---corpora, unsupervised machine learning methods are required. Probabilistic models of text have recently found some success as such a tool, but scalability remains an obstacle in their application, with standard approaches relying on sampling schemes that are known to be difficult to scale. In this report… CONTINUE READING

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