Jiang Li
2023
TeAST: Temporal Knowledge Graph Embedding via Archimedean Spiral Timeline
Jiang Li
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Xiangdong Su
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Guanglai Gao
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Temporal knowledge graph embedding (TKGE) models are commonly utilized to infer the missing facts and facilitate reasoning and decision-making in temporal knowledge graph based systems. However, existing methods fuse temporal information into entities, potentially leading to the evolution of entity information and limiting the link prediction performance of TKG. Meanwhile, current TKGE models often lack the ability to simultaneously model important relation patterns and provide interpretability, which hinders their effectiveness and potential applications. To address these limitations, we propose a novel TKGE model which encodes Temporal knowledge graph embeddings via Archimedean Spiral Timeline (TeAST), which maps relations onto the corresponding Archimedean spiral timeline and transforms the quadruples completion to 3th-order tensor completion problem. Specifically, the Archimedean spiral timeline ensures that relations that occur simultaneously are placed on the same timeline, and all relations evolve over time. Meanwhile, we present a novel temporal spiral regularizer to make the spiral timeline orderly. In addition, we provide mathematical proofs to demonstrate the ability of TeAST to encode various relation patterns. Experimental results show that our proposed model significantly outperforms existing TKGE methods. Our code is available at https://github.com/IMU-MachineLearningSXD/TeAST.
How Well Apply Simple MLP to Incomplete Utterance Rewriting?
Jiang Li
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Xiangdong Su
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Xinlan Ma
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Guanglai Gao
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 2: Short Papers)
Incomplete utterance rewriting (IUR) aims to restore the incomplete utterance with sufficient context information for comprehension. This paper introduces a simple yet efficient IUR method. Different from prior studies, we first employ only one-layer MLP architecture to mine latent semantic information between joint utterances for IUR task (MIUR). After that, we conduct a joint feature matrix to predict the token type and thus restore the incomplete utterance. The well-designed network and simple architecture make our method significantly superior to existing methods in terms of quality and inference speedOur code is available at https://github.com/IMU-MachineLearningSXD/MIUR.
2008
NOKIA Research Center Beijing Chinese Word Segmentation System for the SIGHAN Bakeoff 2007
Jiang Li
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Rile Hu
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Guohua Zhang
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Yuezhong Tang
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Zhanjiang Song
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Xia Wang
Proceedings of the Sixth SIGHAN Workshop on Chinese Language Processing
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Co-authors
- Xiangdong Su 2
- Guanglai Gao 2
- Rile Hu 1
- Guohua Zhang 1
- Yuezhong Tang 1
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