Papers by Yunzhi Yao

18 papers
Good Visual Guidance Make A Better Extractor: Hierarchical Visual Prefix for Multimodal Entity and Relation Extraction (2022.findings-naacl)

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Challenge: Existing approaches for named entity recognition and relation extraction suffer from error sensitivity when irrelevant object images are incorporated in texts.
Approach: They propose a hierarchical visual prefix fusion NeTwork for visual-enhanced entity and relation extraction using pluggable visual prefixed visual features.
Outcome: The proposed method achieves state-of-the-art on three benchmark datasets.
CKnowEdit: A New Chinese Knowledge Editing Dataset for Linguistics, Facts, and Logic Error Correction in LLMs (2025.acl-long)

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Challenge: CKnowEdit is the first-ever knowledge editing dataset designed to correct linguistic, factual, and logical errors in Large Language Models.
Approach: They propose a Chinese knowledge editing dataset to correct linguistic, factual, and logical errors in Large Language Models.
Outcome: The proposed dataset highlights the challenges that LLMs face in mastering Chinese . CKnowEdit can correct linguistic, factual, and logical errors in Chinese, the authors show .
StructMem: Structured Memory for Long-Horizon Behavior in LLMs (2026.acl-short)

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Challenge: Existing memory systems lack structure and efficiency in capturing relationships between events.
Approach: They propose a structure-enriched hierarchical memory framework that preserves event-level bindings and induces cross-event connections.
Outcome: The proposed framework preserves event-level bindings and induces cross-event connections while reducing token usage, API calls, and runtime compared to prior memory systems.
Exploring Model Kinship for Merging Large Language Models (2025.findings-emnlp)

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Challenge: Model merging has become one of the key technologies for enhancing the capabilities and efficiency of Large Language Models.
Approach: They propose a model merging strategy that incorporates model kinship to improve model performance.
Outcome: The proposed model merging strategy can yield better performance on benchmark datasets.
Knowledge Rumination for Pre-trained Language Models (2023.emnlp-main)

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Challenge: Existing studies have shown that pre-trained language models lack the capacity to handle knowledge-intensive tasks alone.
Approach: They propose a new paradigm to help pre-trained language models utilize latent knowledge without retrieving it from external corpus.
Outcome: The proposed paradigm can be applied to pre-trained language models without retrieving external knowledge from the corpus.
Knowledge Editing for Large Language Models (2024.lrec-tutorials)

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Challenge: Large Language Models (LLMs) are not immune to issues of factual accuracy or logically consistent.
Approach: This tutorial will present cutting-edge methods and practical tools for editing Large Language Models (LLMs).
Outcome: The aim of this course is to familiarize researchers with the latest advancements and emerging strategies in the realm of knowledge editing for LLMs.
Detoxifying Large Language Models via Knowledge Editing (2024.acl-long)

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Challenge: Existing methods to detoxify Large Language Models (LLMs) are limiting, but knowledge editing can be effective.
Approach: They propose a baseline method to detoxify Large Language Models (LLMs) they propose supervised fine-tuning and reinforcement learning from human feedback (RLHF)
Outcome: The proposed method reduces toxicity of large language models with one instance of tuning . it reduces the toxicity, while minimizing the toxins, the authors show .
CaKE: Circuit-aware Editing Enables Generalizable Knowledge Learners (2025.emnlp-main)

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Challenge: Existing knowledge editing methods fail to generalize updates to multi-hop reasoning tasks . Existing methods only edit single or a few model layers, inadequately integrate updated knowledge into reasoning pathways.
Approach: They propose a circuit-aware method that enhances the effective integration of updated knowledge in large language models by leveraging curated data samples guided by their analysis.
Outcome: The proposed method improves accuracy and accuracy of 20% on the MQuAKE dataset while requiring less memory.
Reasoning with Language Model Prompting: A Survey (2023.acl-long)

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Challenge: Reasoning is an essential ability for complex problem-solving and can provide back-end support for various real-world applications.
Approach: They present cutting-edge research on reasoning with language model prompting and provide systematic resources to help beginners.
Outcome: The proposed approaches have not been systematically reviewed and analyzed.
Editing Conceptual Knowledge for Large Language Models (2024.findings-emnlp)

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Challenge: Existing knowledge editing methods can modify concept-level definitions, but they can distort instantial knowledge in LLMs, leading to poor performance.
Approach: They construct a benchmark dataset ConceptEdit and establish new metrics for evaluation to investigate the editing capability of LLMs.
Outcome: The proposed methods can modify concept definitions but can distort instantial knowledge in LLMs, leading to poor performance.
Editing Large Language Models: Problems, Methods, and Opportunities (2023.emnlp-main)

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Challenge: Recent advances in model editing for LLMs have created challenges and opportunities for the community.
Approach: They propose to alter the behavior of LLMs efficiently within a specific domain without negatively impacting performance across other inputs.
Outcome: The proposed method alters behavior of LLMs efficiently within a specific domain without negatively impacting performance across other inputs.
How Do LLMs Acquire New Knowledge? A Knowledge Circuits Perspective on Continual Pre-Training (2025.findings-acl)

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Challenge: Large Language Models (LLMs) have exceptional capabilities in knowledge-intensive tasks . however, they struggle with knowledge updates due to dynamic nature of world knowledge .
Approach: They propose to identify computational subgraphs that facilitate knowledge storage and processing . they also identify a phase shift from formation to optimization in LLMs .
Outcome: The proposed model can capture factual knowledge from pre-training corpus and encapsulate it as extensive parametric knowledge.
Illusions of Confidence? Diagnosing LLM Truthfulness via Neighborhood Consistency (2026.acl-long)

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Challenge: Existing evaluations rely on point-wise confidence, which can mask brittle belief.
Approach: They propose a measure of belief robustness that evaluates coherence across a conceptual neighborhood.
Outcome: The proposed model is more resistant to interference than existing models.
EasyEdit: An Easy-to-use Knowledge Editing Framework for Large Language Models (2024.acl-demos)

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Challenge: Large Language Models (LLMs) suffer from knowledge cutoff or fallacy issues, which means they are unaware of unseen events or generate text with incorrect facts owing to outdated/noisy data.
Approach: They propose an easy-to-use knowledge editing framework for Large Language Models that allows users to easily edit updated knowledge and adjust undesired behavior while minimizing the impact on unrelated inputs.
Outcome: The proposed framework surpasses traditional fine-tuning in terms of reliability and generalization.
Adapt-and-Distill: Developing Small, Fast and Effective Pretrained Language Models for Domains (2021.findings-acl)

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Challenge: Large pre-trained models suffer from domain shift and are not optimal for specific domains.
Approach: They propose a general approach to developing small, fast and effective pretrained models for specific domains by adapting off-the-shelf general pretrained model and performing task-agnostic knowledge distillation in target domains.
Outcome: The proposed approach achieves better performance over the BERT BASE model in domain-specific tasks while 3.3 smaller and 5.1 faster than the BRT BASE.
Knowledge Mechanisms in Large Language Models: A Survey and Perspective (2024.findings-emnlp)

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Challenge: Using large language models, we can understand knowledge mechanisms in LLMs for learning, storage, utilization, and evolution.
Approach: They propose to analyze knowledge mechanisms in Large Language Models (LLMs) they examine utilization, evolution, and the potential dark knowledge (hypothesis) they hope to help understand knowledge in LLMs and provide insights for future research .
Outcome: The proposed model can be used to analyze the evolution of parametric knowledge in LLMs.
EasyEdit2: An Easy-to-use Steering Framework for Editing Large Language Models (2025.emnlp-demos)

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Challenge: Large Language Models (LLMs) have demonstrated extraordinary capabilities, however, they may still generate unreliable or unsafe outputs.
Approach: They propose a framework that allows plug-and-play adjustability for controlling Large Language Model (LLM) behaviors.
Outcome: The framework is designed to enable plug-and-play adjustability for controlling Large Language Model (LLM) behaviors.
Why Steering Works: Toward a Unified View of Language Model Parameter Dynamics (2026.acl-long)

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Challenge: Methods for controlling large language models (LLMs) are often studied in isolation, obscuring connections and making comparison difficult.
Approach: They propose a preference-utility analysis that separates control effects into preference and utility, and measures both on a shared log-odds scale using polarity-paired contrastive examples.
Outcome: The proposed approach improves preference while preserving utility.

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