Yilin Wang
Also published as: YiLin Wang
Papers on this page may belong to the following people: Yilin Wang, Yilin Wang
2026
KCVR: Knowledge-Centric Video Reconstruction for Structured Pedagogical Summarization via Dynamic Graph Planning
Jingjiang Liu | Jia Zhu | Hanghui Guo | Weijie Shi | Yue Cui | Xiaokang Jin | Yilin Wang | Qingyu Niu | Jiawei Shen | Guoqing Ma | Yidan Liang | Shimin Di | Jiajie Xu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Jingjiang Liu | Jia Zhu | Hanghui Guo | Weijie Shi | Yue Cui | Xiaokang Jin | Yilin Wang | Qingyu Niu | Jiawei Shen | Guoqing Ma | Yidan Liang | Shimin Di | Jiajie Xu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Existing video summarization methods mainly compress content for gist browsing, but they often break the prerequisite logic in instructional videos and induce logical inversions (e.g., conclusions before premises). We formalize this problem as Structure-Pedagogical Reconstruction (SPR). SPR raises two challenges: (1) Structure Hallucination, where retrieved knowledge is topologically valid but not evidence-grounded by the blackboard; and (2) Logical Inversion, where soft prompt-level graph injection fails to enforce prerequisite order during decoding. To address these challenges, we propose Knowledge-Centric Video Reconstruction (KCVR), a Plan-then-Generate neuro-symbolic framework that decouples epistemic planning from content generation. KCVR prunes a Dual-Layer Epistemic Graph into a minimal video-supported plan, then realizes the plan with visually anchored attention and topology-constrained decoding. We additionally release EduStruct, a 10-discipline benchmark for SPR and structure-centric evaluation. Experiments show that KCVR outperforms strong end-to-end baselines on Knowledge Progression Consistency and Learning Objective Coverage. Our code and data are available at https://github.com/mark1001-ljj/video_sum.
RSDA: Restoring Stale Data Affinity via Dynamic Renovation Strategy for Mitigating Data Scarcity
Yidan Liang | Jia Zhu | Weijie Shi | Hanghui Guo | Yue Cui | Jiawei Shen | Guoqing Ma | Jingjiang Liu | Qingyu Niu | Yilin Wang | Shimin Di | Jiajie Xu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yidan Liang | Jia Zhu | Weijie Shi | Hanghui Guo | Yue Cui | Jiawei Shen | Guoqing Ma | Jingjiang Liu | Qingyu Niu | Yilin Wang | Shimin Di | Jiajie Xu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
High-quality data is the cornerstone of advancing large language models. However, the field currently faces a critical dilemma: the supply of premium data is nearing depletion, while vast stale corpora remain underutilized. Our empirical analysis reveals that training models on such data directly often leads to performance degradation. We attribute this phenomenon to the data affinity gap, a misalignment stemming from the model’s inability to effectively comprehend the data or inherent quality defects. To bridge this gap, we propose Restoring Stale Data Affinity (RSDA) framework. First, utilizing our proposed potential entropy metric, RSDA quantifies the latent value of samples to effectively identify stale data with higher renovation potential. Subsequently, the framework employs a dynamic renovation strategy selection mechanism to determine the optimal component-level strategy for each instance, transforming low-affinity stale samples into high-quality training data. Comprehensive experimental results demonstrate that RSDA effectively enhances data affinity, achieving performance improvements using less than 10% of the data volume, thereby underscoring that the latent potential of stale corpora remains largely untapped. The code is available at https://github.com/wenfiii/RSDA.
2025
Language-Specific Layer Matters: Efficient Multilingual Enhancement for Large Vision-Language Models
Yuchun Fan | Yilin Wang | Yongyu Mu | Lei Huang | Bei Li | Xiaocheng Feng | Tong Xiao | JingBo Zhu
Findings of the Association for Computational Linguistics: EMNLP 2025
Yuchun Fan | Yilin Wang | Yongyu Mu | Lei Huang | Bei Li | Xiaocheng Feng | Tong Xiao | JingBo Zhu
Findings of the Association for Computational Linguistics: EMNLP 2025
Large vision-language models (LVLMs) have demonstrated exceptional capabilities in understanding visual information with human languages but also exhibit an imbalance in multilingual capabilities. In this work, we delve into the multilingual working pattern of LVLMs and identify a salient correlation between the multilingual understanding ability of LVLMs and language-specific neuron activations in shallow layers. Building on this insight, we introduce PLAST, a training recipe that achieves efficient multilingual enhancement for LVLMs by Precise LAnguage Specific layers fine-Tuning. PLAST first identifies layers involved in multilingual understanding by monitoring language-specific neuron activations. These layers are then precisely fine-tuned with question-translation pairs to achieve multilingual alignment. Our empirical results on MMBench and MMMB demonstrate that PLAST effectively improves the multilingual capabilities of LVLMs and achieves significant efficiency with only 14% of the parameters tuned. Further analysis reveals that PLAST facilitates the language-specific visual information engagement in shallow layers.
SLAM: Towards Efficient Multilingual Reasoning via Selective Language Alignment
Yuchun Fan | Yongyu Mu | YiLin Wang | Lei Huang | Junhao Ruan | Bei Li | Tong Xiao | Shujian Huang | Xiaocheng Feng | Jingbo Zhu
Proceedings of the 31st International Conference on Computational Linguistics
Yuchun Fan | Yongyu Mu | YiLin Wang | Lei Huang | Junhao Ruan | Bei Li | Tong Xiao | Shujian Huang | Xiaocheng Feng | Jingbo Zhu
Proceedings of the 31st International Conference on Computational Linguistics
Despite the significant improvements achieved by large language models (LLMs) in English reasoning tasks, these models continue to struggle with multilingual reasoning. Recent studies leverage a full-parameter and two-stage training paradigm to teach models to first understand non-English questions and then reason. However, this method suffers from both substantial computational resource computing and catastrophic forgetting. The fundamental cause is that, with the primary goal of enhancing multilingual comprehension, an excessive number of irrelevant layers and parameters are tuned during the first stage. Given our findings that the representation learning of languages is merely conducted in lower-level layers, we propose an efficient multilingual reasoning alignment approach that precisely identifies and fine-tunes the layers responsible for handling multilingualism. Experimental results show that our method, SLAM, only tunes 6 layers’ feed-forward sub-layers including 6.5-8% of all parameters within 7B and 13B LLMs, achieving superior average performance than all strong baselines across 10 languages. Meanwhile, SLAM only involves one training stage, reducing training time by 4.1-11.9× compared to the two-stage method.
GRoWE: A GujiRoBERTa-Enhanced Approach to Ancient Chinese NER via Word-Word Relation Classification and Model Ensembling
Tian Xia | Yilin Wang | Xinkai Wang | Yahe Yang | Qun Zhao | Menghui Yang
Proceedings of the Second Workshop on Ancient Language Processing
Tian Xia | Yilin Wang | Xinkai Wang | Yahe Yang | Qun Zhao | Menghui Yang
Proceedings of the Second Workshop on Ancient Language Processing
Named entity recognition is a fundamental task in ancient Chinese text analysis.Based on the pre-trained language model of ancient Chinese texts, this paper proposes a new named entity recognition method GRoWE. It uses the ancient Chinese texts pre-trained language model GujiRoBERTa as the base model, and the wordword relation prediction model is superposed upon the base model to construct a superposition model. Then ensemble strategies are used to multiple superposition models. On the EvaHan 2025 public test set, the F1 value of the proposed method reaches 86.79%, which is 6.18% higher than that of the mainstream BERT_LSTM_CRF baseline model, indicating that the model architecture and ensemble strategy play an important role in improving the recognition effect of naming entities in ancient Chinese texts.
EventRAG: Enhancing LLM Generation with Event Knowledge Graphs
Zairun Yang | Yilin Wang | Zhengyan Shi | Yuan Yao | Lei Liang | Keyan Ding | Emine Yilmaz | Huajun Chen | Qiang Zhang
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zairun Yang | Yilin Wang | Zhengyan Shi | Yuan Yao | Lei Liang | Keyan Ding | Emine Yilmaz | Huajun Chen | Qiang Zhang
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Retrieval-augmented generation (RAG) systems often struggle with narrative-rich documents and event-centric reasoning, particularly when synthesizing information across multiple sources. We present EventRAG, a novel framework that enhances text generation through structured event representations. We first construct an Event Knowledge Graph by extracting events and merging semantically equivalent nodes across documents, while expanding under-connected relationships. We then employ an iterative retrieval and inference strategy that explicitly captures temporal dependencies and logical relationships across events. Experiments on UltraDomain and MultiHopRAG benchmarks show EventRAG’s superiority over baseline RAG systems, with substantial gains in generation effectiveness, logical consistency, and multi-hop reasoning accuracy. Our work advances RAG systems by integrating structured event semantics with iterative inference, particularly benefiting scenarios requiring temporal and logical reasoning across documents.
2024
KC-GenRe: A Knowledge-constrained Generative Re-ranking Method Based on Large Language Models for Knowledge Graph Completion
Yilin Wang | Minghao Hu | Zhen Huang | Dongsheng Li | Dong Yang | Xicheng Lu
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
Yilin Wang | Minghao Hu | Zhen Huang | Dongsheng Li | Dong Yang | Xicheng Lu
Proceedings of the 2024 Joint International Conference on Computational Linguistics, Language Resources and Evaluation (LREC-COLING 2024)
The goal of knowledge graph completion (KGC) is to predict missing facts among entities. Previous methods for KGC re-ranking are mostly built on non-generative language models to obtain the probability of each candidate. Recently, generative large language models (LLMs) have shown outstanding performance on several tasks such as information extraction and dialog systems. Leveraging them for KGC re-ranking is beneficial for leveraging the extensive pre-trained knowledge and powerful generative capabilities. However, it may encounter new problems when accomplishing the task, namely mismatch, misordering and omission. To this end, we introduce KC-GenRe, a knowledge-constrained generative re-ranking method based on LLMs for KGC. To overcome the mismatch issue, we formulate the KGC re-ranking task as a candidate identifier sorting generation problem implemented by generative LLMs. To tackle the misordering issue, we develop a knowledge-guided interactive training method that enhances the identification and ranking of candidates. To address the omission issue, we design a knowledge-augmented constrained inference method that enables contextual prompting and controlled generation, so as to obtain valid rankings. Experimental results show that KG-GenRe achieves state-of-the-art performance on four datasets, with gains of up to 6.7% and 7.7% in the MRR and Hits@1 metric compared to previous methods, and 9.0% and 11.1% compared to that without re-ranking. Extensive analysis demonstrates the effectiveness of components in KG-GenRe.
Learning Mutually Informed Representations for Characters and Subwords
Yilin Wang | Xinyi Hu | Matthew Gormley
Findings of the Association for Computational Linguistics: NAACL 2024
Yilin Wang | Xinyi Hu | Matthew Gormley
Findings of the Association for Computational Linguistics: NAACL 2024
Most pretrained language models rely on subword tokenization, which processes text as a sequence of subword tokens. However, different granularities of text, such as characters, subwords, and words, can contain different kinds of information. Previous studies have shown that incorporating multiple input granularities improves model generalization, yet very few of them outputs useful representations for each granularity. In this paper, we introduce the entanglement model, aiming to combine character and subword language models. Inspired by vision-language models, our model treats characters and subwords as separate modalities, and it generates mutually informed representations for both granularities as output. We evaluate our model on text classification, named entity recognition, POS-tagging, and character-level sequence labeling (intraword code-switching). Notably, the entanglement model outperforms its backbone language models, particularly in the presence of noisy texts and low-resource languages. Furthermore, the entanglement model even outperforms larger pre-trained models on all English sequence labeling tasks and classification tasks. We make our code publically available.
2022
The CRECIL Corpus: a New Dataset for Extraction of Relations between Characters in Chinese Multi-party Dialogues
Yuru Jiang | Yang Xu | Yuhang Zhan | Weikai He | Yilin Wang | Zixuan Xi | Meiyun Wang | Xinyu Li | Yu Li | Yanchao Yu
Proceedings of the Thirteenth Language Resources and Evaluation Conference
Yuru Jiang | Yang Xu | Yuhang Zhan | Weikai He | Yilin Wang | Zixuan Xi | Meiyun Wang | Xinyu Li | Yu Li | Yanchao Yu
Proceedings of the Thirteenth Language Resources and Evaluation Conference
We describe a new freely available Chinese multi-party dialogue dataset for automatic extraction of dialogue-based character relationships. The data has been extracted from the original TV scripts of a Chinese sitcom called “I Love My Home” with complex family-based human daily spoken conversations in Chinese. First, we introduced human annotation scheme for both global Character relationship map and character reference relationship. And then we generated the dialogue-based character relationship triples. The corpus annotates relationships between 140 entities in total. We also carried out a data exploration experiment by deploying a BERT-based model to extract character relationships on the CRECIL corpus and another existing relation extraction corpus (DialogRE (CITATION)).The results demonstrate that extracting character relationships is more challenging in CRECIL than in DialogRE.
2006
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- JingBo Zhu (朱靖波) 3
- Yue Cui 2
- Shimin Di 2
- Yuchun Fan 2
- Xiaocheng Feng (冯骁骋) 2
- Hanghui Guo 2
- Lei Huang (黄磊) 2
- Bei Li 2
- Yidan Liang 2
- Jingjiang Liu 2
- Guoqing Ma 2
- Yongyu Mu 2
- Qingyu Niu 2
- Jiawei Shen 2
- Weijie Shi 2
- Tong Xiao (肖桐) 2
- Jiajie Xu 2
- Jia Zhu 2
- Huajun Chen 1
- Keyan Ding 1
- Matthew R. Gormley 1
- Weikai He 1
- Minghao Hu 1
- Xinyi Hu 1
- Shujian Huang (书剑 黄) 1
- Zhen Huang 1
- Yuru Jiang 1
- Xiaokang Jin 1
- Dongsheng Li 1
- Xinyu Li 1
- Yu Li 1
- Lei Liang 1
- Xicheng Lu 1
- Junhao Ruan 1
- Zhengyan Shi 1
- Huizhen Wang 1
- Meiyun Wang 1
- Xinkai Wang 1
- Zhenxing Wang 1
- Zixuan Xi 1
- Tian Xia 1
- Yang Xu 1
- Dong Yang 1
- Menghui Yang 1
- Yahe Yang 1
- Zairun Yang 1
- Yuan Yao 1
- Emine Yilmaz 1
- Yanchao Yu 1
- Yuhang Zhan 1
- Qiang Zhang 1
- Qun Zhao 1
- Muhua Zhu 1