Joint Bootstrapping Machines for High Confidence Relation Extraction

NAACL 2018 Pankaj GuptaBenjamin RothHinrich Schütze

Semi-supervised bootstrapping techniques for relationship extraction from text iteratively expand a set of initial seed instances. Due to the lack of labeled data, a key challenge in bootstrapping is semantic drift: if a false positive instance is added during an iteration, then all following iterations are contaminated... (read more)

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