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Papers/Syntactic Multi-view Learning for Open Information Extract...

Syntactic Multi-view Learning for Open Information Extraction

Kuicai Dong, Aixin Sun, Jung-jae Kim, XiaoLi Li

2022-12-05Open Information ExtractionMULTI-VIEW LEARNING
PaperPDFCode(official)

Abstract

Open Information Extraction (OpenIE) aims to extract relational tuples from open-domain sentences. Traditional rule-based or statistical models have been developed based on syntactic structures of sentences, identified by syntactic parsers. However, previous neural OpenIE models under-explore the useful syntactic information. In this paper, we model both constituency and dependency trees into word-level graphs, and enable neural OpenIE to learn from the syntactic structures. To better fuse heterogeneous information from both graphs, we adopt multi-view learning to capture multiple relationships from them. Finally, the finetuned constituency and dependency representations are aggregated with sentential semantic representations for tuple generation. Experiments show that both constituency and dependency information, and the multi-view learning are effective.

Results

TaskDatasetMetricValueModel
Open Information ExtractionLSOIE-wikiF151.73SMiLe-OIE
Open Information ExtractionLSOIE-wikiF150.21BERT + Dep-GCN - Const-GCN
Open Information ExtractionLSOIE-wikiF149.89BERT + Dep-GCN [?] Const-GCN
Open Information ExtractionLSOIE-wikiF149.71BERT + Const-GCN
Open Information ExtractionLSOIE-wikiF149.24IMoJIE Kolluru et al. (2020)
Open Information ExtractionLSOIE-wikiF148.71BERT + Dep-GCN
Open Information ExtractionLSOIE-wikiF147.54BERT Solawetz and Larson (2021)
Open Information ExtractionLSOIE-wikiF144.75CIGL-OIE + IGL-CA Kolluru et al. (2020)
Open Information ExtractionLSOIE-wikiF144.48GloVe + bi-LSTM + CRF
Open Information ExtractionLSOIE-wikiF143.9GloVe + bi-LSTM Stanovsky et al. (2018)
Open Information ExtractionLSOIE-wikiF139.52CopyAttention Cui et al. (2018)

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