Variational deep logic network for joint inference of entities and relations
Currently, deep learning models have been widely adopted and achieved promising results on various application domains. Despite their intriguing performance, most deep learning models function as black boxes, lacking explicit reasoning capabilities and explanations, which are usually essential for c...
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sg-ntu-dr.10356-1612752022-08-23T06:33:12Z Variational deep logic network for joint inference of entities and relations Wang, Wenya Pan, Sinno Jialin School of Computer Science and Engineering Engineering::Computer science and engineering Applications Domains Black Boxes Currently, deep learning models have been widely adopted and achieved promising results on various application domains. Despite their intriguing performance, most deep learning models function as black boxes, lacking explicit reasoning capabilities and explanations, which are usually essential for complex problems. Take joint inference in information extraction as an example. This task requires the identification of multiple structured knowledge from texts, which is inter-correlated, including entities, events, and the relationships between them. Various deep neural networks have been proposed to jointly perform entity extraction and relation prediction, which only propagate information implicitly via representation learning. However, they fail to encode the intensive correlations between entity types and relations to enforce their coexistence. On the other hand, some approaches adopt rules to explicitly constrain certain relational facts, although the separation of rules with representation learning usually restrains the approaches with error propagation. Moreover, the predefined rules are inflexible and might result in negative effects when data is noisy. To address these limitations, we propose a variational deep logic network that incorporates both representation learning and relational reasoning via the variational EM algorithm. The model consists of a deep neural network to learn high-level features with implicit interactions via the self-attention mechanism and a relational logic network to explicitly exploit target interactions. These two components are trained interactively to bring the best of both worlds. We conduct extensive experiments ranging from fine-grained sentiment terms extraction, end-to-end relation prediction, to end-to-end event extraction to demonstrate the effectiveness of our proposed method. Nanyang Technological University Published version This work is supported by NTU Nanyang Assistant Professorship (NAP) grant M4081532.020, 2020 Microsoft Research Asia collaborative research grant, and Singapore Lee Kuan Yew Postdoctoral Fellowship. 2022-08-23T06:33:12Z 2022-08-23T06:33:12Z 2021 Journal Article Wang, W. & Pan, S. J. (2021). Variational deep logic network for joint inference of entities and relations. Computational Linguistics, 47(4), 775-812. https://dx.doi.org/10.1162/COLI_a_00415 0891-2017 https://hdl.handle.net/10356/161275 10.1162/COLI_a_00415 2-s2.0-85122525144 4 47 775 812 en M4081532.020 Computational Linguistics © 2021 Association for Computational Linguistics. Published under a Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) license. application/pdf |
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Engineering::Computer science and engineering Applications Domains Black Boxes Wang, Wenya Pan, Sinno Jialin Variational deep logic network for joint inference of entities and relations |
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Currently, deep learning models have been widely adopted and achieved promising results on various application domains. Despite their intriguing performance, most deep learning models function as black boxes, lacking explicit reasoning capabilities and explanations, which are usually essential for complex problems. Take joint inference in information extraction as an example. This task requires the identification of multiple structured knowledge from texts, which is inter-correlated, including entities, events, and the relationships between them. Various deep neural networks have been proposed to jointly perform entity extraction and relation prediction, which only propagate information implicitly via representation learning. However, they fail to encode the intensive correlations between entity types and relations to enforce their coexistence. On the other hand, some approaches adopt rules to explicitly constrain certain relational facts, although the separation of rules with representation learning usually restrains the approaches with error propagation. Moreover, the predefined rules are inflexible and might result in negative effects when data is noisy. To address these limitations, we propose a variational deep logic network that incorporates both representation learning and relational reasoning via the variational EM algorithm. The model consists of a deep neural network to learn high-level features with implicit interactions via the self-attention mechanism and a relational logic network to explicitly exploit target interactions. These two components are trained interactively to bring the best of both worlds. We conduct extensive experiments ranging from fine-grained sentiment terms extraction, end-to-end relation prediction, to end-to-end event extraction to demonstrate the effectiveness of our proposed method. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Wang, Wenya Pan, Sinno Jialin |
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Article |
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Wang, Wenya Pan, Sinno Jialin |
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Wang, Wenya |
title |
Variational deep logic network for joint inference of entities and relations |
title_short |
Variational deep logic network for joint inference of entities and relations |
title_full |
Variational deep logic network for joint inference of entities and relations |
title_fullStr |
Variational deep logic network for joint inference of entities and relations |
title_full_unstemmed |
Variational deep logic network for joint inference of entities and relations |
title_sort |
variational deep logic network for joint inference of entities and relations |
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2022 |
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https://hdl.handle.net/10356/161275 |
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1743119561662660608 |