BILU-NEMH: A BILU neural-encoded mention hypergraph for mention extraction
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2019Metadata
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Lin, J. C.-W., Shao, Y., Fournier-Viger, P., & Hamido, F. (2019). BILU-NEMH: A BILU neural-encoded mention hypergraph for mention extraction. Information Sciences, 496, 53-64. 10.1016/j.ins.2019.04.059Abstract
The natural language processing (NLP) denotes a technique used to process data such as text and speech. Some of the fundamental research in NLP includes the named entity recognition, which recognizes the named entities (i.e., persons and companies) from texts, the semantic parsing, which converts a natural language utterance to a logical form, and the co-reference resolution, which extracts the nouns (including pronouns and noun phrases) pointing to the same reference body. In this paper, we focus on the mention extraction and classification, proposing a neural-encoded mention-hypergraph model named the BILU-NEMH to extract the mention entities from a content. The proposed BILU-NEMH model combines a mention hypergraph model with the encoding schema and neural network. The proposed model can effectively capture the overlapping mention entities of an unbounded length. The proposed model was verified by the experiments, and the obtained experimental results showed that the proposed model achieved better performance and greater effectiveness than the existing related models on most standard datasets.