Ting Xu
2024
A Two-Agent Game for Zero-shot Relation Triplet Extraction
Ting Xu
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Haiqin Yang
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Fei Zhao
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Zhen Wu
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Xinyu Dai
Findings of the Association for Computational Linguistics: ACL 2024
Relation triplet extraction is a fundamental task in natural language processing that aims to identify semantic relationships between entities in text. It is particularly challenging in the zero-shot setting, i.e., zero-shot relation triplet extraction (ZeroRTE), where the relation sets between training and test are disjoint. Existing methods deal with this task by integrating relations into prompts, which may lack sufficient understanding of the unseen relations. To address these limitations, this paper presents a novel Two-Agent Game (TAG) approach to deliberate and debate the semantics of unseen relations. TAG consists of two agents, a generator and an extractor. They iteratively interact in three key steps: attempting, criticizing, and rectifying. This enables the agents to fully debate and understand the unseen relations. Experimental results demonstrate consistent improvement over ALBERT-Large, BART, andGPT3.5, without incurring additional inference costs in all cases. Remarkably, our method outperforms strong baselines by a significant margin, achieving an impressive 6%-16% increase in F1 scores, particularly when dealingwith FewRel with five unseen relations.
2023
Measuring Your ASTE Models in The Wild: A Diversified Multi-domain Dataset For Aspect Sentiment Triplet Extraction
Ting Xu
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Huiyun Yang
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Zhen Wu
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Jiaze Chen
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Fei Zhao
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Xinyu Dai
Findings of the Association for Computational Linguistics: ACL 2023
Aspect Sentiment Triplet Extraction (ASTE) is widely used in various applications. However, existing ASTE datasets are limited in their ability to represent real-world scenarios, hindering the advancement of research in this area. In this paper, we introduce a new dataset, named DMASTE, which is manually annotated to better fit real-world scenarios by providing more diverse and realistic reviews for the task. The dataset includes various lengths, diverse expressions, more aspect types, and more domains than existing datasets. We conduct extensive experiments on DMASTE in multiple settings to evaluate previous ASTE approaches. Empirical results demonstrate that DMASTE is a more challenging ASTE dataset. Further analyses of in-domain and cross-domain settings provide some promising directions for future research.
2006
Re-ranking Method Based on Topic Word Pairs
Tingting He
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Ting Xu
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Guozhong Qu
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Xinhui Tu
Proceedings of the 20th Pacific Asia Conference on Language, Information and Computation
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Co-authors
- Zhen Wu 2
- Fei Zhao 2
- Xinyu Dai 2
- Huiyun Yang 1
- Jiaze Chen 1
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