Zheyuan Liu
2026
Instant Personalized Large Language Model Adaptation via Hypernetwork
Zhaoxuan Tan | Zixuan Zhang | Haoyang Wen | Zheng Li | Rongzhi Zhang | Pei Chen | Fengran Mo | Zheyuan Liu | Qingkai Zeng | Qingyu Yin | Meng Jiang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zhaoxuan Tan | Zixuan Zhang | Haoyang Wen | Zheng Li | Rongzhi Zhang | Pei Chen | Fengran Mo | Zheyuan Liu | Qingkai Zeng | Qingyu Yin | Meng Jiang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Personalized large language models (LLMs) tailor content to individual preferences using user profiles or histories. However, existing parameter-efficient fine-tuning (PEFT) methods, such as the “One-PEFT-Per-User” (OPPU) paradigm, require training a separate adapter for each user, making them computationally expensive and impractical for real-time updates. We introduce Profile-to-PEFT, a scalable framework that employs a hypernetwork, trained end-to-end, to map a user’s encoded profile directly to a full set of adapter parameters (e.g., LoRA), eliminating per-user training at deployment. This design enables instant adaptation, generalization to unseen users, and privacy-preserving local deployment. Experimental results demonstrate that our method outperforms both prompt-based personalization and OPPU while using substantially fewer computational resources at deployment. The framework exhibits strong generalization to out-of-distribution users and maintains robustness across varying user activity levels and different embedding backbones. The proposed Profile-to-PEFT framework enables efficient, scalable, and adaptive LLM personalization suitable for large-scale applications.
Addressing Overthinking in Large Vision-Language Models via Gated Perception-Reasoning Optimization
Xingjian Diao | Zheyuan Liu | Chunhui Zhang | Weiyi Wu | Keyi Kong | Lin Shi | Kaize Ding | Soroush Vosoughi | Jiang Gui
Findings of the Association for Computational Linguistics: ACL 2026
Xingjian Diao | Zheyuan Liu | Chunhui Zhang | Weiyi Wu | Keyi Kong | Lin Shi | Kaize Ding | Soroush Vosoughi | Jiang Gui
Findings of the Association for Computational Linguistics: ACL 2026
Large Vision-Language Models (LVLMs) have exhibited strong reasoning capabilities through chain-of-thought mechanisms that generate step-by-step rationales. However, such slow-thinking approaches often lead to overthinking, where models produce excessively verbose responses even for simple queries, resulting in test-time inefficiency and even degraded accuracy. Prior work has attempted to mitigate this issue via adaptive reasoning strategies, but these methods largely overlook a fundamental bottleneck: visual perception failures. We argue that stable reasoning critically depends on low-level visual grounding, and that reasoning errors often originate from imperfect perception rather than insufficient deliberation. To address this limitation, we propose Gated Perception-Reasoning Optimization (GPRO), a meta-reasoning controller that dynamically routes computation among three decision paths at each generation step: a lightweight fast path, a slow perception path for re-examining visual inputs, and a slow reasoning path for internal self-reflection. To learn this distinction, we derive large-scale failure attribution supervision from approximately 790k samples, using teacher models to distinguish perceptual hallucinations from reasoning errors. We then train the controller with multi-objective reinforcement learning to optimize the trade-off between task accuracy and computational cost under uncertainty. Experiments on five benchmarks demonstrate that GPRO substantially improves both accuracy and efficiency, outperforming recent slow-thinking methods while generating significantly shorter responses.
AutoRubric: Rubric-Based Generative Rewards for Faithful Multimodal Reasoning
Mengzhao Jia | Zhihan Zhang | Ignacio Cases | Zheyuan Liu | Meng Jiang | Peng Qi
Findings of the Association for Computational Linguistics: ACL 2026
Mengzhao Jia | Zhihan Zhang | Ignacio Cases | Zheyuan Liu | Meng Jiang | Peng Qi
Findings of the Association for Computational Linguistics: ACL 2026
Multimodal large language models (MLLMs) have rapidly advanced from perception tasks to complex multi-step reasoning, yet reinforcement learning with verifiable rewards (RLVR) often leads to spurious reasoning since only the final-answer correctness is rewarded. To address this limitation, we propose AutoRubric, a framework that integrates RLVR with process-level supervision through automatically collected rubric-based generative rewards. Our key innovation lies in a scalable self-aggregation method that distills consistent reasoning checkpoints from successful trajectories, enabling problem-specific rubric construction without human annotation or stronger teacher models. By jointly leveraging rubric-based and outcome rewards, AutoRubric-R1V achieves state-of-the-art performance on six multimodal reasoning benchmarks and substantially improves reasoning faithfulness in dedicated evaluations.
Multimodal Unlearning Across Vision, Language, Video, and Audio: Survey of Methods, Datasets, and Benchmarks
Nobin Sarwar | Shubhashis Roy Dipta | Zheyuan Liu | Vaidehi Patil
Findings of the Association for Computational Linguistics: ACL 2026
Nobin Sarwar | Shubhashis Roy Dipta | Zheyuan Liu | Vaidehi Patil
Findings of the Association for Computational Linguistics: ACL 2026
With the growing adoption of VLMs, DMs, LLMs, and AFMs, these multimodal foundation models can inadvertently encode sensitive, copyrighted, biased, or unsafe cross-modal associations that originate from their training data. Retraining after deletion requests or policy updates is often impractical, and targeted forgetting remains difficult because knowledge is distributed across shared representations. Multimodal unlearning addresses this challenge by enabling selective removal across modalities while retaining overall utility. This survey offers a unified, system-oriented view of multimodal unlearning across vision, language, audio, and video, grounded in recent advances, emerging applications, and open problems. Our taxonomy enables systematic comparison across model architectures and modalities, clarifying trade-offs among deletion strength, retention, efficiency, reversibility, and robustness. This survey highlights open problems and practical considerations to support future research and deployment of multimodal unlearning.
Behavior Knowledge Merge in Reinforced Agentic Models
Xiangchi Yuan | Dachuan Shi | Chunhui Zhang | Zheyuan Liu | Shenglong Yao | Soroush Vosoughi | Wenke Lee
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Xiangchi Yuan | Dachuan Shi | Chunhui Zhang | Zheyuan Liu | Shenglong Yao | Soroush Vosoughi | Wenke Lee
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Reinforcement learning (RL) is central to post-training, particularly for agentic models that require specialized reasoning behaviors. In this setting, model merging offers a practical mechanism for integrating multiple RL-trained agents from different tasks into a single generalist model. However, existing merging methods are designed for supervised fine-tuning (SFT), and they are suboptimal to preserve task-specific capabilities on RL-trained agentic models. The root is a task-vector mismatch between RL and SFT: on-policy RL induces task vectors that are highly sparse and heterogeneous, whereas SFT-style merging implicitly assumes dense and globally comparable task vectors. When standard global averaging is applied under this mismatch, RL’s non-overlapping task vectors that encode critical task-specific behaviors are reduced and parameter updates are diluted. To address this issue, we propose Reinforced Agent Merging (RAM), a distribution-aware merging framework explicitly designed for RL-trained agentic models. RAM disentangles shared and task-specific unique parameter updates, averaging shared components while selectively preserving and rescaling unique ones to counteract parameter update dilution. Experiments across multiple agent domains and model architectures demonstrate that RAM not only surpasses merging baselines, but also unlocks synergistic potential among agents to achieve performance superior to that of specialized agents in their domains.
MTMCS-Bench: Evaluating Contextual Safety of Multimodal Large Language Models in Multi-Turn Dialogues
Zheyuan Liu | Dongwhi Kim | Yixin Wan | Xiangchi Yuan | Zhaoxuan Tan | Fengran Mo | Meng Jiang
Findings of the Association for Computational Linguistics: ACL 2026
Zheyuan Liu | Dongwhi Kim | Yixin Wan | Xiangchi Yuan | Zhaoxuan Tan | Fengran Mo | Meng Jiang
Findings of the Association for Computational Linguistics: ACL 2026
Multimodal large language models (MLLMs) are increasingly deployed as assistants that interact through text and images, making it crucial to evaluate contextual safety when risk depends on both the visual scene and the evolving dialogue. Existing contextual safety benchmarks are mostly single-turn and often miss how malicious intent can emerge gradually or how the same scene can support both benign and exploitative goals. We introduce the Multi-Turn Multimodal Contextual Safety Benchmark (MTMCS-Bench), a benchmark of realistic images and multi-turn conversations that evaluates contextual safety in MLLMs under two complementary settings, escalation-based risk and context-switch risk. MTMCS-Bench offers paired safe and unsafe dialogues with structured evaluation. It contains over 30 thousand multimodal (image+text) and unimodal (text-only) samples, with metrics that separately measure contextual intent recognition, safety-awareness on unsafe cases, and helpfulness on benign ones. Across eight open-source and seven proprietary MLLMs, we observe persistent trade-offs between contextual safety and utility, with models tending to either miss gradual risks or over-refuse benign dialogues. Finally, we evaluate five current guardrails and find that they mitigate some failures but do not fully resolve multi-turn contextual risks.
Do LLMs Catch Their Own Mistakes? A Comprehensive Benchmark for Reflective Tool Use LLMs
Zheyuan Liu | Liqiang Xiao | Yang Li | Hyokun Yun | Lihong Li | Chao Zhang | Meng Jiang
Findings of the Association for Computational Linguistics: ACL 2026
Zheyuan Liu | Liqiang Xiao | Yang Li | Hyokun Yun | Lihong Li | Chao Zhang | Meng Jiang
Findings of the Association for Computational Linguistics: ACL 2026
Large language models (LLMs) increasingly rely on external tools to complete complex tasks, yet their ability to recognize and correct their own tool-use mistakes remains underexplored. Existing benchmarks primarily evaluate planning and execution success, overlooking the self-reflective dimension of tool use. To address this gap, we present ReflecTool-Bench, the first benchmark designed to assess LLMs’ self-reflective reasoning in tool-augmented multi-turn dialogues. ReflecTool-Bench covers 10 domains with 88 distinct APIs and 968 annotated dialogues, systematically injecting diverse error types arising from both user and assistant behavior. The benchmark defines two complementary evaluation setups: the Critique task, where models diagnose errors in third-party dialogues, and the Self-Reflection Task, where models must detect and repair their own prior tool-use mistakes. We introduce fine-grained metrics for error detection, error classification, correction accuracy, and explanation quality, enabling a holistic assessment of reflective reasoning. Evaluations across 12 state-of-the-art models, including both API-based closed source models and open source models, reveal that while models can reliably identify user-originated errors, they struggle with assistant-originated ones, and performance drops sharply when moving from critique to self-reflection.
2025
Knowing More, Acting Better: Hierarchical Representation for Embodied Decision-Making
Chunhui Zhang | Zhongyu Ouyang | Xingjian Diao | Zheyuan Liu | Soroush Vosoughi
Findings of the Association for Computational Linguistics: EMNLP 2025
Chunhui Zhang | Zhongyu Ouyang | Xingjian Diao | Zheyuan Liu | Soroush Vosoughi
Findings of the Association for Computational Linguistics: EMNLP 2025
Modern embodied AI uses multimodal large language models (MLLMs) as policy models, predicting actions from final-layer hidden states. This widely adopted approach, however, assumes that monolithic last-layer representations suffice for decision-making—a structural simplification at odds with decades of cognitive science, which highlights the importance of distributed, hierarchical processing for perception and action. Addressing this foundational asymmetry, we introduce a hierarchical action probing method that explicitly aggregates representations from all layers, mirroring the brain’s multi-level organization. Experiments reveal that early layers facilitate spatial grounding, middle layers support contextual integration, and later layers enable abstract generalization—which shows MLLMs inherently encode distributed action-relevant structures. These layer-wise features are integrated by a lightweight probe for spatial reasoning and contextual understanding, without costly backbone fine-tuning. This hierarchical solution shows significant improvements over standard last-layer embodied models in physical simulators, achieving a 46.6% success rate and a 62.5% gain in spatial reasoning tasks. These findings challenge conventional assumptions in embodied AI, establishing hierarchical probing as a principled alternative grounded in both cognitive theory and empirical evidence.
Modality-Aware Neuron Pruning for Unlearning in Multimodal Large Language Models
Zheyuan Liu | Guangyao Dou | Xiangchi Yuan | Chunhui Zhang | Zhaoxuan Tan | Meng Jiang
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zheyuan Liu | Guangyao Dou | Xiangchi Yuan | Chunhui Zhang | Zhaoxuan Tan | Meng Jiang
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Generative models such as Large Language Models (LLMs) and Multimodal Large Language Models (MLLMs) trained on massive datasets can lead them to memorize and inadvertently reveal sensitive information, raising ethical and privacy concerns. While some prior works have explored this issue in the context of LLMs, it presents a unique challenge for MLLMs due to the entangled nature of knowledge across modalities, making comprehensive unlearning more difficult. To address this challenge, we propose Modality Aware Neuron Unlearning (MANU), a novel unlearning framework for MLLMs designed to selectively clip neurons based on their relative importance to the targeted forget data, curated for different modalities. Specifically, MANU consists of two stages: important neuron selection and selective pruning. The first stage identifies and collects the most influential neurons across modalities relative to the targeted forget knowledge, while the second stage is dedicated to pruning those selected neurons. MANU effectively isolates and removes the neurons that contribute most to the forget data within each modality, while preserving the integrity of retained knowledge. Our experiments conducted across various MLLM architectures illustrate that MANU can achieve a more balanced and comprehensive unlearning in each modality without largely affecting the overall model utility.
Avoiding Copyright Infringement via Large Language Model Unlearning
Guangyao Dou | Zheyuan Liu | Qing Lyu | Kaize Ding | Eric Wong
Findings of the Association for Computational Linguistics: NAACL 2025
Guangyao Dou | Zheyuan Liu | Qing Lyu | Kaize Ding | Eric Wong
Findings of the Association for Computational Linguistics: NAACL 2025
Pre-trained Large Language Models (LLMs) have demonstrated remarkable capabilities but also pose risks by learning and generating copyrighted material, leading to significant legal and ethical concerns. In real-world scenarios, model owners need to continuously address copyright infringement as new requests for content removal emerge at different time points. This leads to the need for sequential unlearning, where copyrighted content is removed sequentially as new requests arise. Despite its practical relevance, sequential unlearning in the context of copyright infringement has not been rigorously explored in existing literature. To address this gap, we propose Stable Sequential Unlearning (SSU), a novel framework designed to unlearn copyrighted content from LLMs over multiple time steps. Our approach works by identifying and removing specific weight updates in the model’s parameters that correspond to copyrighted content. We improve unlearning efficacy by introducing random labeling loss and ensuring the model retains its general-purpose knowledge by adjusting targeted parameters. Experimental results show that SSU achieves an effective trade-off between unlearning efficacy and general-purpose language abilities, outperforming existing baselines.
Disentangling Biased Knowledge from Reasoning in Large Language Models via Machine Unlearning
Zheyuan Liu | Suraj Maharjan | Fanyou Wu | Rahil Parikh | Belhassen Bayar | Srinivasan H. Sengamedu | Meng Jiang
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zheyuan Liu | Suraj Maharjan | Fanyou Wu | Rahil Parikh | Belhassen Bayar | Srinivasan H. Sengamedu | Meng Jiang
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
The rapid development of Large Language Models (LLMs) has led to their widespread adoption across various domains, leveraging vast pre-training knowledge and impressive generalization capabilities. However, these models often inherit biased knowledge, resulting in unfair decisions in sensitive applications. It is challenging to remove this biased knowledge without compromising reasoning abilities due to the entangled nature of the learned knowledge within LLMs. To solve this problem, existing approaches have attempted to mitigate the bias using techniques such as fine-tuning with unbiased datasets, model merging, and gradient ascent. While these methods have experimentally proven effective, they can still be sub-optimum in fully disentangling biases from reasoning. To address this gap, we propose Selective Disentanglement Unlearning (SDU), a novel unlearning framework that selectively removes biased knowledge while preserving reasoning capabilities. SDU operates in three stages: identifying biased parameters using a shadow LLM, fine-tuning with unbiased data, and performing selective parameter updates based on weight saliency. Experimental results across multiple LLMs show that SDU improves fairness accuracy by 14.7% and enhances reasoning performance by 62.6% compared to existing baselines.
Superficial Self-Improved Reasoners Benefit from Model Merging
Xiangchi Yuan | Chunhui Zhang | Zheyuan Liu | Dachuan Shi | Leyan Pan | Soroush Vosoughi | Wenke Lee
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Xiangchi Yuan | Chunhui Zhang | Zheyuan Liu | Dachuan Shi | Leyan Pan | Soroush Vosoughi | Wenke Lee
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Large Language Models (LLMs) rely heavily on large-scale reasoning data, but as such data becomes increasingly scarce, model self-improvement offers a promising alternative. However, this process can lead to model collapse, as the model’s output becomes overly deterministic with reduced diversity. In this work, we identify a new risk beyond model collapse, which we term the Superficial Self-Improved Reasoners phenomenon. This phenomenon indicates that while self-improvement enhances in-domain (ID) reasoning accuracy, it degrades the model’s generalized reasoning capability on out-of-domain (OOD) datasets, as the model tends to memorize the training data. Our analyses of layer importance and parameter changes reveal that reasoning-critical layers receive fewer updates compared to less relevant layers during self-improvement. To address this, we propose Iterative Model Merging (IMM), which balances reasoning improvements and generalization by merging the weights of the original and self-improved models. IMM effectively mitigates model collapse and improves generalized reasoning capability. Code is available at https://github.com/xiangchi-yuan/merge_syn
Protecting Privacy in Multimodal Large Language Models with MLLMU-Bench
Zheyuan Liu | Guangyao Dou | Mengzhao Jia | Zhaoxuan Tan | Qingkai Zeng | Yongle Yuan | Meng Jiang
Proceedings of the 2025 Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)
Zheyuan Liu | Guangyao Dou | Mengzhao Jia | Zhaoxuan Tan | Qingkai Zeng | Yongle Yuan | Meng Jiang
Proceedings of the 2025 Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 1: Long Papers)
Generative models such as Large Language Models (LLM) and Multimodal Large Language models (MLLMs) trained on massive web corpora can memorize and disclose individuals’ confidential and private data, raising legal and ethical concerns. While many previous works have addressed this issue in LLM via machine unlearning, it remains largely unexplored for MLLMs. To tackle this challenge, we introduce Multimodal Large Language Model Unlearning Benchmark (MLLMU-Bench), a novel benchmark aimed at advancing the understanding of multimodal machine unlearning. MLLMU-Bench consists of 500 fictitious profiles and 153 profiles for public celebrities, each profile feature over 14 customized question-answer pairs, evaluated from both multimodal (image+text) and unimodal (text) perspectives. The benchmark is divided into four sets to assess unlearning algorithms in terms of efficacy, generalizability, and model utility. Finally, we provide baseline results using existing generative model unlearning algorithms. Surprisingly, our experiments show that unimodal unlearning algorithms excel in generation tasks, while multimodal unlearning approaches perform better in classification with multimodal inputs.
2024
Democratizing Large Language Models via Personalized Parameter-Efficient Fine-tuning
Zhaoxuan Tan | Qingkai Zeng | Yijun Tian | Zheyuan Liu | Bing Yin | Meng Jiang
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Zhaoxuan Tan | Qingkai Zeng | Yijun Tian | Zheyuan Liu | Bing Yin | Meng Jiang
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Personalization in large language models (LLMs) is increasingly important, aiming to align the LLMs’ interactions, content, and recommendations with individual user preferences. Recent advances have highlighted effective prompt design by enriching user queries with non-parametric knowledge through behavior history retrieval and textual profiles. However, these methods faced limitations due to a lack of model ownership, resulting in constrained customization and privacy issues, and often failed to capture complex, dynamic user behavior patterns. To address these shortcomings, we introduce One PEFT Per User (OPPU), employing personalized parameter-efficient fine-tuning (PEFT) modules to store user-specific behavior patterns and preferences. By plugging in personal PEFT parameters, users can own and use their LLMs individually. OPPU integrates parametric user knowledge in the personal PEFT parameters with non-parametric knowledge from retrieval and profiles, adapting LLMs to user behavior shifts. Experimental results demonstrate that OPPU significantly outperforms existing prompt-based methods across seven diverse tasks in the LaMP benchmark. Further studies reveal OPPU’s enhanced capabilities in handling user behavior shifts, modeling users at different activity levels, maintaining robustness across various user history formats, and displaying versatility with different PEFT methods.
Towards Safer Large Language Models through Machine Unlearning
Zheyuan Liu | Guangyao Dou | Zhaoxuan Tan | Yijun Tian | Meng Jiang
Findings of the Association for Computational Linguistics: ACL 2024
Zheyuan Liu | Guangyao Dou | Zhaoxuan Tan | Yijun Tian | Meng Jiang
Findings of the Association for Computational Linguistics: ACL 2024
The rapid advancement of Large Language Models (LLMs) has demonstrated their vast potential across various domains, attributed to their extensive pretraining knowledge and exceptional generalizability. However, LLMs often encounter challenges in generating harmful content when faced with problematic prompts. To address this problem, existing work attempted to implement a gradient ascent based approach to prevent LLMs from producing harmful output. While these methods can be effective, they frequently impact the model utility in responding to normal prompts. To address this gap, we introduce Selective Knowledge negation Unlearning (SKU), a novel unlearning framework for LLMs, designed to eliminate harmful knowledge while preserving utility on normal prompts. Specifically, SKU is consisted of two stages: harmful knowledge acquisition stage and knowledge negation stage. The first stage aims to identify and acquire harmful knowledge within the model, whereas the second is dedicated to remove this knowledge. SKU selectively isolates and removes harmful knowledge in model parameters, ensuring the model’s performance remains robust on normal prompts. Our experiments conducted across various LLM architectures demonstrate that SKU identifies a good balance point between removing harmful information and preserving utility.
Personalized Pieces: Efficient Personalized Large Language Models through Collaborative Efforts
Zhaoxuan Tan | Zheyuan Liu | Meng Jiang
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Zhaoxuan Tan | Zheyuan Liu | Meng Jiang
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Personalized large language models (LLMs) aim to tailor interactions, content, and recommendations to individual user preferences. While parameter-efficient fine-tuning (PEFT) methods excel in performance and generalization, they are costly and limit communal benefits when used individually. To this end, we introduce Personalized Pieces (Per-Pcs), a framework that allows users to safely share and assemble personalized PEFT efficiently with collaborative efforts. Per-Pcs involves selecting sharers, breaking their PEFT into pieces, and training gates for each piece. These pieces are added to a pool, from which target users can select and assemble personalized PEFT using their history data. This approach preserves privacy and enables fine-grained user modeling without excessive storage and computation demands. Experimental results show Per-Pcs outperforms non-personalized and PEFT retrieval baselines, offering performance comparable to OPPU with significantly lower resource use across six tasks. Further analysis highlights Per-Pcs’s robustness concerning sharer count and selection strategy, pieces sharing ratio, and scalability in computation time and storage space. Per-Pcs’s modularity promotes safe sharing, making LLM personalization more efficient, effective, and widely accessible through collaborative efforts.
2017
KnowYourNyms? A Game of Semantic Relationships
Ross Mechanic | Dean Fulgoni | Hannah Cutler | Sneha Rajana | Zheyuan Liu | Bradley Jackson | Anne Cocos | Chris Callison-Burch | Marianna Apidianaki
Proceedings of the 2017 Conference on Empirical Methods in Natural Language Processing: System Demonstrations
Ross Mechanic | Dean Fulgoni | Hannah Cutler | Sneha Rajana | Zheyuan Liu | Bradley Jackson | Anne Cocos | Chris Callison-Burch | Marianna Apidianaki
Proceedings of the 2017 Conference on Empirical Methods in Natural Language Processing: System Demonstrations
Semantic relation knowledge is crucial for natural language understanding. We introduce “KnowYourNyms?”, a web-based game for learning semantic relations. While providing users with an engaging experience, the application collects large amounts of data that can be used to improve semantic relation classifiers. The data also broadly informs us of how people perceive the relationships between words, providing useful insights for research in psychology and linguistics.
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- Meng Jiang 10
- Zhaoxuan Tan 7
- Chunhui Zhang 5
- Guangyao Dou 4
- Soroush Vosoughi 4
- Xiangchi Yuan 4
- Qingkai Zeng 3
- Xingjian Diao 2
- Kaize Ding 2
- Mengzhao Jia 2
- Wenke Lee 2
- Fengran Mo 2
- Dachuan Shi 2
- Yijun Tian 2
- Marianna Apidianaki 1
- Belhassen Bayar 1
- Chris Callison-Burch 1
- Ignacio Cases 1
- Pei Chen 1
- Anne Cocos 1
- Hannah Cutler 1
- Dean Fulgoni 1
- Jiang Gui 1
- Bradley Jackson 1
- Dongwhi Kim 1
- Keyi Kong 1
- Zheng Li 1
- Yang Li 1
- Lihong Li 1
- Qing Lyu 1
- Suraj Maharjan 1
- Ross Mechanic 1
- Zhongyu Ouyang 1
- Leyan Pan 1
- Rahil Parikh 1
- Vaidehi Patil 1
- Peng Qi 1
- Sneha Rajana 1
- Shubhashis Roy Dipta 1
- Nobin Sarwar 1
- Srinivasan Sengamedu Hanumantha Rao 1
- Lin Shi 1
- Yixin Wan 1
- Haoyang Wen 1
- Eric Wong 1
- Weiyi Wu 1
- Fanyou Wu 1
- Liqiang Xiao 1
- Shenglong Yao 1
- Qingyu Yin 1
- Bing Yin 1
- Yongle Yuan 1
- Hyokun Yun 1
- Zixuan Zhang 1
- Rongzhi Zhang 1
- Zhihan Zhang 1
- Chao Zhang 1