Interactive Learning of Relation Extractors with Weak Supervision
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چکیده
Interactive Learning of Relation Extractors with Weak Supervision
منابع مشابه
Knowledge-Based Weak Supervision for Information Extraction of Overlapping Relations
Information extraction (IE) holds the promise of generating a large-scale knowledge base from the Web’s natural language text. Knowledge-based weak supervision, using structured data to heuristically label a training corpus, works towards this goal by enabling the automated learning of a potentially unbounded number of relation extractors. Recently, researchers have developed multiinstance lear...
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