Xue Liu
2026
Sherry: Hardware-Efficient 1.25-Bit Ternary Quantization via Fine-grained Sparsification
Hong Huang | Decheng Wu | Qiangqiang Hu | Guanghua Yu | Jinhai Yang | Jianchen Zhu | Xue Liu | Dapeng Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Hong Huang | Decheng Wu | Qiangqiang Hu | Guanghua Yu | Jinhai Yang | Jianchen Zhu | Xue Liu | Dapeng Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
The deployment of Large Language Models (LLMs) on resource-constrained edge devices is increasingly hindered by prohibitive memory and computational requirements. While ternary quantization offers a compelling solution by reducing weights to -1, 0, +1, current implementations suffer from a fundamental misalignment with commodity hardware. Most existing methods must choose between 2-bit aligned packing, which incurs significant bit wastage, or 1.67-bit irregular packing, which degrades inference speed. To resolve this tension, we propose Sherry, a hardware-efficient ternary quantization framework. Sherry introduces a 3:4 fine-grained sparsity that achieves a regularized 1.25-bit width by packing blocks of four weights into five bits, restoring power-of-two alignment. Furthermore, we identify weight trapping issue in sparse ternary training, which leads to representational collapse. To address this, Sherry introduces Arenas, an annealing residual synapse mechanism that maintains representational diversity during training. Empirical evaluations on LLaMA-3.2 across five benchmarks demonstrate that Sherry matches state-of-the-art ternary performance while significantly reducing model size. Notably, on an Intel i7-14700HX CPU, our 1B model achieves zero accuracy loss compared to SOTA baselines while providing 25% bit savings and 10% speed up. The code is available at https://github.com/Tencent/AngelSlim.
Preference Heads in Large Language Models: A Mechanistic Framework for Interpretable Personalization
Weixu Zhang | Ye Yuan | Changjiang Han | Yuxing Tian | Zipeng Sun | Linfeng Du | Jikun Kang | Hong Kang | Xue Liu | Haolun Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Weixu Zhang | Ye Yuan | Changjiang Han | Yuxing Tian | Zipeng Sun | Linfeng Du | Jikun Kang | Hong Kang | Xue Liu | Haolun Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large Language Models (LLMs) exhibit strong implicit personalization ability, yet most existing approaches treat this behavior as a black box, relying on prompt engineering or fine tuning on user data. In this work, we adopt a mechanistic interpretability perspective and hypothesize the existence of a sparse set of Preference Heads, attention heads that encode user specific stylistic and topical preferences and exert a causal influence on generation. We introduce Differential Preference Steering (DPS), a training free framework that (1) identifies Preference Heads through causal masking analysis and (2) leverages them for controllable and interpretable personalization at inference time. DPS computes a Preference Contribution Score (PCS) for each attention head, directly measuring its causal impact on user aligned outputs. During decoding, we contrast model predictions with and without Preference Heads, amplifying the difference between personalized and generic logits to selectively strengthen preference aligned continuations. Experiments on widely used personalization benchmarks across multiple LLMs demonstrate consistent gains in personalization fidelity while preserving content coherence and low computational overhead. Beyond empirical improvements, DPS provides a mechanistic explanation of where and how personalization emerges within transformer architectures.
Awakening Dormant Experts:Counterfactual Routing to Mitigate MoE Hallucinations
Wentao Hu | Yanbo Zhai | Xiaohui Hu | Mingkuan Zhao | Shanhong yu | Xue Liu | Kaidong Yu | Shuangyong Song | Xuelong Li
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Wentao Hu | Yanbo Zhai | Xiaohui Hu | Mingkuan Zhao | Shanhong yu | Xue Liu | Kaidong Yu | Shuangyong Song | Xuelong Li
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Sparse Mixture-of-Experts (MoE) models have achieved remarkable scalability, yet they remain vulnerable to hallucinations, particularly when processing long-tail knowledge. We identify that this fragility stems from static Top-k routing: routers tend to favor high-frequency patterns over rare factual associations. Consequently, "specialist experts" possessing critical long-tail knowledge are often assigned low gating scores and remain "dormant"—under-prioritized for specific tokens despite their proven causal importance on other inputs. To address this, we propose Counterfactual Routing (CoR), a training-free inference framework designed to awaken these dormant experts. CoR integrates layer-wise perturbation analysis with the Counterfactual Expert Impact (CEI) metric to dynamically shift computational resources from syntax-dominant to knowledge-intensive layers while maintaining a constant total activation count, effectively retrieving causally decisive experts via virtual ablation. Extensive experiments on TruthfulQA, FACTOR, and TriviaQA demonstrate that CoR improves factual accuracy by 3.1% on average without increasing the inference budget, establishing a superior Pareto frontier compared to static scaling strategies.
GAM: Hierarchical Graph-based Agentic Memory for LLM Agents
Zhaofen Wu | Hanrong Zhang | Fulin Lin | Wujiang Xu | Xinran Xu | Yankai Chen | Henry Peng Zou | Shaowen Chen | Weizhi Zhang | Xue Liu | Philip S. Yu | Hongwei Wang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zhaofen Wu | Hanrong Zhang | Fulin Lin | Wujiang Xu | Xinran Xu | Yankai Chen | Henry Peng Zou | Shaowen Chen | Weizhi Zhang | Xue Liu | Philip S. Yu | Hongwei Wang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
To sustain coherent long-term interactions, Large Language Model (LLM) agents must navigate the tension between acquiring new information and retaining prior knowledge. Current unified stream-based memory systems facilitate context updates but remain vulnerable to interference from transient noise. Conversely, discrete structured memory architectures provide robust knowledge retention but often struggle to adapt to fluid narrative evolution. To address this, we propose GAM, a hierarchical Graph-based Agentic Memory framework that explicitly decouples memory encoding from consolidation to effectively resolve the conflict between rapid context perception and stable knowledge retention. By isolating ongoing dialogue in a event progression graph and integrating it into a topic associative network only upon semantic shifts, our approach minimizes interference while preserving long-term consistency. Additionally, we introduce a Graph-guided, Multi-factor Retrieval strategy to enhance context precision. Experiments on LoCoMo and LongDialQA benchmarks indicate that our method consistently outperforms state-of-the-art baselines in both reasoning accuracy and computational efficiency.
Optimizing User Profiles via Contextual Bandits for Retrieval-Augmented LLM Personalization
Linfeng Du | Ye Yuan | Zichen Zhao | Fuyuan Lyu | Emiliano Penaloza | Xiuying Chen | Zipeng Sun | Jikun Kang | Laurent Charlin | Xue Liu | Haolun Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Linfeng Du | Ye Yuan | Zichen Zhao | Fuyuan Lyu | Emiliano Penaloza | Xiuying Chen | Zipeng Sun | Jikun Kang | Laurent Charlin | Xue Liu | Haolun Wu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large language models (LLMs) excel at general-purpose tasks, yet adapting their responses to individual users remains challenging. Retrieval augmentation provides a lightweight alternative to fine-tuning by conditioning LLMs on user history records, and existing approaches typically select these records based on semantic relevance. We argue that relevance serves as an unreliable proxy for utility: a record may be semantically similar to a query yet fail to improve generation quality or even degrade it due to redundancy or conflicting information. To bridge this gap, we propose PURPLE, a contextual bandit framework that oPtimizes UseR Profiles for LLM pErsonalization. In contrast to a greedy selection of the most relevant records, PURPLE treats profile construction as an order-sensitive generation process and utilizes a Plackett-Luce ranking model to capture complex inter-record dependencies. By training with semantically rich feedback provided by the likelihood of the reference response, our method aligns retrieval directly with generation quality. Extensive experiments on nine personalization tasks demonstrate that PURPLE consistently outperforms strong heuristic and retrieval-augmented baselines in both effectiveness and efficiency, establishing a principled and scalable solution for optimizing user profiles.
RubricBench: Aligning Model-Generated Rubrics with Human Standards
Junyi Zhou | Qiyuan Zhang | Yufei Wang | Fuyuan Lyu | Yidong Ming | Can Xu | Qingfeng Sun | Kai Zheng | Peng Kang | Xue Liu | Chen Ma
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Junyi Zhou | Qiyuan Zhang | Yufei Wang | Fuyuan Lyu | Yidong Ming | Can Xu | Qingfeng Sun | Kai Zheng | Peng Kang | Xue Liu | Chen Ma
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
As Large Language Model (LLM) alignment evolves from simple completions to complex, highly sophisticated generation, Reward Models are increasingly shifting toward rubric-guided evaluation to mitigate surface-level biases. However, the community lacks a unified benchmark to assess this evaluation paradigm, as existing benchmarks lack both the discriminative complexity and the ground-truth rubric annotations required for rigorous analysis. To bridge this gap, we introduce RubricBench, a curated benchmark with 1,147 pairwise comparisons specifically designed to assess the reliability of rubric-based evaluation. Our construction employs a multi-dimensional filtration pipeline to target hard samples featuring nuanced input complexity and misleading surface bias, augmenting each with expert-annotated, atomic rubrics derived strictly from instructions. Comprehensive experiments reveal a substantial capability gap between human-annotated and model-generated rubrics, indicating that even state-of-the-art models struggle to autonomously specify valid evaluation criteria, lagging considerably behind human-guided performance.
FinReporting: An Agentic Workflow for Localized Reporting of Cross-Jurisdiction Financial Disclosure
Fan Zhang | Mingzi Song | Rania Elbadry | Yankai Chen | Shaobo Wang | Yixi Zhou | Xunwen Zheng | Yueru He | Yuyang Dai | Georgi Nenkov Georgiev | Ayesha Gull | Muhammad Usman Safder | Fan Wu | Liyuan Meng | Fengxian Ji | Junning Zhao | Xueqing Peng | Jimin Huang | YU Chen | Xue Liu | Preslav Nakov | Zhuohan Xie
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)
Fan Zhang | Mingzi Song | Rania Elbadry | Yankai Chen | Shaobo Wang | Yixi Zhou | Xunwen Zheng | Yueru He | Yuyang Dai | Georgi Nenkov Georgiev | Ayesha Gull | Muhammad Usman Safder | Fan Wu | Liyuan Meng | Fengxian Ji | Junning Zhao | Xueqing Peng | Jimin Huang | YU Chen | Xue Liu | Preslav Nakov | Zhuohan Xie
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 3: System Demonstrations)
Financial reporting systems increasingly leverage Large Language Models (LLMs) to extract and summarize corporate disclosures. However, most existing approaches assume a single-market setting and overlook structural differences across jurisdictions. Variations in accounting taxonomies, tagging infrastructures (e.g., XBRL vs. PDF), and aggregation conventions introduce substantial challenges for semantic alignment and reliable verification. Here, we aim to bridge this gap. We present FinReporting, an agentic workflow for localized cross-jurisdiction financial reporting. The system constructs a unified canonical ontology spanning the income statement, balance sheet, and cash flow statement, and decomposes reporting into auditable stages, including filing acquisition, extraction, canonical mapping, and anomaly logging. Rather than treating LLMs as free-form generators, FinReporting employs them as constrained verifiers operating under explicit decision rules with evidence grounding.Evaluated on annual filings from the USA, Japan, and China, FinReporting improves consistency and reliability under heterogeneous reporting regimes. We further release an interactive demo that enables cross-market inspection and supports structured export of localized financial statements. Our demo is available at https://huggingface.co/spaces/BoomQ/FinReporting-Demo. A video describing our system is available at https://www.youtube.com/watch?v=f65jdEL31Kk.
2025
Warmup Generations: A Task-Agnostic Approach for Guiding Sequence-to-Sequence Learning with Unsupervised Initial State Generation
Senyu Li | Zipeng Sun | Jiayi Wang | Xue Liu | Pontus Stenetorp | Siva Reddy | David Ifeoluwa Adelani
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Senyu Li | Zipeng Sun | Jiayi Wang | Xue Liu | Pontus Stenetorp | Siva Reddy | David Ifeoluwa Adelani
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Traditional supervised fine-tuning (SFT) strategies for sequence-to-sequence tasks often train models to directly generate the target output. Recent work has shown that guiding models with intermediate steps—such as keywords, outlines, or reasoning chains—can significantly improve performance, coherence, and interpretability. However, these methods often depend on predefined intermediate formats and annotated data, limiting their scalability and generalizability. In this work, we introduce a task-agnostic framework that enables models to generate intermediate “warmup” sequences. These warmup sequences, serving as an initial state for subsequent generation, are optimized to enhance the probability of generating the target sequence without relying on external supervision or human-designed structures. Drawing inspiration from reinforcement learning principles, our method iteratively refines these intermediate steps to maximize their contribution to the final output, similar to reward-driven optimization in reinforcement learning with human feedback. Experimental results across tasks such as translation, summarization, and multi-choice question answering for logical reasoning show that our approach outperforms traditional SFT methods, and offers a scalable and flexible solution for sequence-to-sequence tasks.
2024
Learning to Extract Structured Entities Using Language Models
Haolun Wu | Ye Yuan | Liana Mikaelyan | Alexander Meulemans | Xue Liu | James Hensman | Bhaskar Mitra
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Haolun Wu | Ye Yuan | Liana Mikaelyan | Alexander Meulemans | Xue Liu | James Hensman | Bhaskar Mitra
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Recent advances in machine learning have significantly impacted the field of information extraction, with Language Models (LMs) playing a pivotal role in extracting structured information from unstructured text. Prior works typically represent information extraction as triplet-centric and use classical metrics such as precision and recall for evaluation. We reformulate the task to be entity-centric, enabling the use of diverse metrics that can provide more insights from various perspectives. We contribute to the field by introducing Structured Entity Extraction and proposing the Approximate Entity Set OverlaP (AESOP) metric, designed to appropriately assess model performance. Later, we introduce a new Multistage Structured Entity Extraction (MuSEE) model that harnesses the power of LMs for enhanced effectiveness and efficiency by decomposing the extraction task into multiple stages. Quantitative and human side-by-side evaluations confirm that our model outperforms baselines, offering promising directions for future advancements in structured entity extraction. Our source code is available at https://github.com/microsoft/Structured-Entity-Extraction.
Collaborative Performance Prediction for Large Language Models
Qiyuan Zhang | Fuyuan Lyu | Xue Liu | Chen Ma
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Qiyuan Zhang | Fuyuan Lyu | Xue Liu | Chen Ma
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Comprehensively understanding and accurately predicting the performance of large language models across diverse downstream tasks has emerged as a pivotal challenge in NLP research. The pioneering scaling law on downstream works demonstrated intrinsic similarities within model families and utilized such similarities for performance prediction. However, they tend to overlook the similarities between model families and only consider design factors listed in the original scaling law. To overcome these limitations, we introduce a novel framework, Collaborative Performance Prediction (CPP), which significantly enhances prediction accuracy by leveraging the historical performance of various models on downstream tasks and other design factors for both model and task. We also collect a collaborative data sourced from online platforms containing both historical performance and additional design factors. With the support of the collaborative data, CPP not only surpasses traditional scaling laws in predicting the performance of scaled LLMs but also facilitates a detailed analysis of factor importance, an area previously overlooked.
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- Fuyuan Lyu 3
- Zipeng Sun 3
- Haolun Wu 3
- Ye Yuan 3
- Yankai Chen 2
- Linfeng Du 2
- Jikun Kang 2
- Chen Ma 2
- Qiyuan Zhang 2
- David Ifeoluwa Adelani 1
- Laurent Charlin 1
- Shaowen Chen 1
- Xiuying Chen 1
- YU Chen (陈昱) 1
- Yuyang Dai 1
- Rania Elbadry 1
- Georgi Nenkov Georgiev 1
- Ayesha Gull 1
- Changjiang Han 1
- Yueru He 1
- James Hensman 1
- Junling Hu 1
- Qiangqiang Hu 1
- Wentao Hu 1
- Xiaohui Hu 1
- Hong Huang 1
- Jimin Huang 1
- Fengxian Ji 1
- Hong Kang 1
- Peng Kang 1
- Senyu Li 1
- Xuelong Li 1
- Fulin Lin 1
- Liyuan Meng 1
- Alexander Meulemans 1
- Liana Mikaelyan 1
- Yidong Ming 1
- Bhaskar Mitra 1
- Fabrizio Morbini 1
- Preslav Nakov 1
- Emiliano Penaloza 1
- Xueqing Peng 1
- Siva Reddy 1
- Muhammad Usman Safder 1
- Mingzi Song 1
- Shuangyong Song (宋双永) 1
- Pontus Stenetorp 1
- Qingfeng Sun 1
- Yuxing Tian 1
- Hongwei Wang 1
- Jiayi Wang 1
- Shaobo Wang 1
- Yufei Wang 1
- Fuliang Weng 1
- Dapeng Wu 1
- Decheng Wu 1
- Fan Wu 1
- Zhaofen Wu 1
- Zhuohan Xie 1
- Can Xu 1
- Wujiang Xu 1
- Xinran Xu 1
- Jinhai Yang 1
- Guanghua Yu 1
- Kaidong Yu 1
- Philip S. Yu 1
- Yanbo Zhai 1
- Fan Zhang 1
- Hanrong Zhang 1
- Weixu Zhang 1
- Weizhi Zhang 1
- Junning Zhao 1
- Mingkuan Zhao 1
- Zichen Zhao 1
- Kai Zheng 1
- Xunwen Zheng 1
- Junyi Zhou 1
- Yixi Zhou 1
- Jianchen Zhu 1
- Henry Peng Zou 1
- Shanhong yu 1