Shijie Li
2025
R2A-TLS: Reflective Retrieval-Augmented Timeline Summarization with Causal-Semantic Integration
Chenlong Bao
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Shijie Li
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Minghao Hu
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Ming Qiao
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Bin Zhang
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Jin-Tao Tang
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Shasha Li
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Ting Wang
Findings of the Association for Computational Linguistics: EMNLP 2025
Open-domain timeline summarization (TLS) faces challenges from information overload and data sparsity when processing large-scale textual streams. Existing methods struggle to capture coherent event narratives due to fragmented descriptions and often accumulate noise through iterative retrieval strategies that lack effective relevance evaluation. This paper proposes: Reflective Retrieval-Augmented Timeline Summarization with Causal-Semantic Intergration, which offers a novel perspective for open-domain TLS by time point completion and event element completion. R2A-TLS establishes an initial retrieval, reflection, and deep retrieval system that reduces noise through a double filtering mechanism that iteratively generates a timeline for each text which passes the filtering. Then, the system reflects on the initial timeline with the aim of identifying information gaps through causal chain analysis and FrameNet based element validation. These gaps are reformulated into targeted queries to trigger deep retrieval for refining timeline coherence and density. Empirical evaluation on Open-TLS dataset reveals that our approach outperforms the best prior published approaches.
2023
Joint Semantic and Strategy Matching for Persuasive Dialogue
Chuhao Jin
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Yutao Zhu
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Lingzhen Kong
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Shijie Li
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Xiao Zhang
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Ruihua Song
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Xu Chen
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Huan Chen
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Yuchong Sun
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Yu Chen
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Jun Xu
Findings of the Association for Computational Linguistics: EMNLP 2023
Persuasive dialogue aims to persuade users to achieve some targets by conversations. While previous persuasion models have achieved notable successes, they mostly base themselves on utterance semantic matching, and an important aspect has been ignored, that is, the strategy of the conversations, for example, the agent can choose an emotional-appeal strategy to impress users. Compared with utterance semantics, conversation strategies are high-level concepts, which can be informative and provide complementary information to achieve effective persuasions. In this paper, we propose to build a persuasion model by jointly modeling the conversation semantics and strategies, where we design a BERT-like module and an auto-regressive predictor to match the semantics and strategies, respectively. Experimental results indicate that our proposed approach can significantly improve the state-of-the-art baseline by 5% on a small dataset and 37% on a large dataset in terms of Recall@1. Detailed analyses show that the auto-regressive predictor contributes most to the final performance.
2021
Improving Adversarial Text Generation with n-Gram Matching
Shijie Li
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Massimo Piccardi
Proceedings of the 35th Pacific Asia Conference on Language, Information and Computation
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- Chenlong Bao 1
- Xu Chen (陈旭) 1
- Huan Chen 1
- Yu Chen (陈昱) 1
- Minghao Hu 1
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