Yongkang Liu
Also published as: YongKang Liu
2026
NEAT: Neuron-Based Early Exit for Large Reasoning Models
Kang Liu | YongKang Liu | Xiaocui Yang | Peidong Wang | Wen Zhang | Shi Feng | Yifei Zhang | Daling Wang
Findings of the Association for Computational Linguistics: ACL 2026
Kang Liu | YongKang Liu | Xiaocui Yang | Peidong Wang | Wen Zhang | Shi Feng | Yifei Zhang | Daling Wang
Findings of the Association for Computational Linguistics: ACL 2026
Large Reasoning Models (LRMs) often suffer from overthinking, a phenomenon in which redundant reasoning steps are generated after a correct solution has already been reached. Existing early reasoning exit methods primarily rely on output-level heuristics or trained probing models to skip redundant reasoning steps, thereby mitigating overthinking. However, these approaches typically require additional rollout computation or externally labeled datasets. In this paper, we propose NEAT, a Neuron-based Early reAsoning exiT framework that monitors neuron-level activation dynamics to enable training-free early exits, without introducing any additional test-time computation. NEAT identifies exit-associated neurons and tracks their activation patterns during reasoning to dynamically trigger early exit or suppress reflection, thereby reducing unnecessary reasoning while preserving solution quality. Experiments on four reasoning benchmarks across six models with different scales and architectures show that, for each model, NEAT achieves an average token reduction of 22% to 28% when averaged over the four benchmarks, while maintaining accuracy.
MoLAN: A Unified Modality-Aware Noise Dynamic Editing Framework for Multimodal Sentiment Analysis
Xingle Xu | YongKang Liu | Dexian Cai | Shi Feng | Xiaocui Yang | Daling Wang | Yifei Zhang
Findings of the Association for Computational Linguistics: ACL 2026
Xingle Xu | YongKang Liu | Dexian Cai | Shi Feng | Xiaocui Yang | Daling Wang | Yifei Zhang
Findings of the Association for Computational Linguistics: ACL 2026
Multimodal Sentiment Analysis aims to integrate information from various modalities to make complementary predictions. However, it often struggles with irrelevant or misleading visual and auditory information. Most existing approaches treat entire modality as an independent unit for feature enhancement or denoising, which often suppresses redundant noise at the cost of weakening critical information. To address this challenge, we propose MoLAN, a unified ModaLity-aware noise dynAmic editiNg framework. Specifically, MoLAN performs modality-aware block partitioning by dividing the features of each modality into multiple blocks. Each block is then dynamically assigned a distinct denoising strength based on its noise level and semantic relevance, enabling fine-grained noise suppression while preserving essential multimodal information. Notably, MoLAN is a unified and flexible framework that can be seamlessly integrated into a wide range of multimodal models. Building upon this framework, we further introduce MoLAN+, a new multimodal sentiment analysis approach. Experiments across five models and four datasets demonstrate the broad effectiveness of the MoLAN framework. Extensive evaluations show that MoLAN+ achieves the state-of-the-art performance.
PlaM: Training-Free Plateau-Guided Model Merging for Better Visual Grounding in MLLMs
Zijing Wang | YongKang Liu | Mingyang Wang | Ercong Nie | Deyuan Chen | Zhengjie Zhao | Shi Feng | Daling Wang | Xiaocui Yang | Yifei Zhang | Hinrich Schuetze
Findings of the Association for Computational Linguistics: ACL 2026
Zijing Wang | YongKang Liu | Mingyang Wang | Ercong Nie | Deyuan Chen | Zhengjie Zhao | Shi Feng | Daling Wang | Xiaocui Yang | Yifei Zhang | Hinrich Schuetze
Findings of the Association for Computational Linguistics: ACL 2026
Multimodal Large Language Models (MLLMs) rely on strong linguistic reasoning inherited from their base language models. However, multimodal instruction fine-tuning paradoxically degrades this text’s reasoning capability, undermining multimodal performance. To address this issue, we propose a training-free framework to mitigate this degradation. Through layer-wise vision token masking, we reveal a common three-stage pattern in multimodal large language models: early-modal separation, mid-modal alignment, and late-modal degradation. By analyzing the behavior of MLLMs at different stages, we propose a plateau-guided model merging method that selectively injects base language model parameters into MLLMs. Experimental results based on five MLLMs on nine benchmarks demonstrate the effectiveness of our method. Attention-based analysis further reveals that merging shifts attention from diffuse, scattered patterns to focused localization on task-relevant visual regions.Our repository is on https://github.com/wzj1718/PlaM .
Look Within or Beyond? A Theoretical Comparison Between Parameter-Efficient and Full Fine-Tuning
YongKang Liu | Xingle Xu | Ercong Nie | Zijing Wang | Shi Feng | Daling Wang | Qian Li | Hinrich Schuetze
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
YongKang Liu | Xingle Xu | Ercong Nie | Zijing Wang | Shi Feng | Daling Wang | Qian Li | Hinrich Schuetze
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Parameter-Efficient Fine-Tuning (PEFT) has become a popular alternative to Full-Parameter Fine-Tuning (FFT), achieving similar performance on many benchmarks with far lower computational and memory costs. Yet, its effectiveness on complex tasks such as reasoning and instruction-following remains unclear. In this work, we provide a theoretical and empirical comparison of PEFT and FFT in terms of representational capacity and robustness. We show that PEFT’s solution space is a strict subset of FFT’s and derive upper bounds revealing how its restricted parameterization limits expressiveness and increases vulnerability to perturbations. Experiments on 20 datasets and 11 adversarial test sets support these findings, indicating that while PEFT performs well on standard tasks, its weaknesses on complex and adversarial settings call for new directions beyond current PEFT paradigms.The source code is in the anonymous GitHub repository[https://anonymous.4open.science/r/PEFTEval-E2AC ].
Why Do More Experts Fail? A Theoretical Analysis of Model Merging
Zijing Wang | Xingle Xu | YongKang Liu | Yiqun Zhang | Peiqin Lin | Shi Feng | Daling Wang | Xiaocui Yang | Hinrich Schuetze
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zijing Wang | Xingle Xu | YongKang Liu | Yiqun Zhang | Peiqin Lin | Shi Feng | Daling Wang | Xiaocui Yang | Hinrich Schuetze
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Model merging dramatically reduces storage and computational resources by combining multiple expert models into a single multi-task model. However, existing methods struggle to maintain performance gains as the number of merged models increases. In this paper, we investigate the key obstacles that limit the scalability of model merging. We prove that the limited effective parameter space imposes a strict constraint on the number of models that can be successfully merged. Through Gaussian Width analysis, we show that marginal benefits diminish according to a strictly concave function as more models are merged. Using Approximate Kinematics Theory, we further prove the existence of a unique optimal threshold beyond which additional models yield negligible improvements. To address this limitation, we propose a straightforward Reparameterized Heavy-Tailed method to extend the merged model’s coverage and enhance performance. Empirical results on 19 benchmarks, including both knowledge-intensive and general-purpose tasks, validate our theoretical analysis. We believe that these results spark further research beyond the current scope of model merging.
SAD: A Large-Scale Strategic Argumentative Dialogue Dataset
YongKang Liu | Jiayang Yu | Mingyang Wang | Yiqun Zhang | Ercong Nie | Shi Feng | Daling Wang | Kaisong Song | Hinrich Schuetze
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
YongKang Liu | Jiayang Yu | Mingyang Wang | Yiqun Zhang | Ercong Nie | Shi Feng | Daling Wang | Kaisong Song | Hinrich Schuetze
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Argumentation generation has attracted substantial research interest due to its central role in human reasoning and decision-making. However, most existing argumentative corpora focus on non-interactive, single-turn settings, either generating arguments from a given topic or refuting an existing argument. In practice, however, argumentation is often realized as multi-turn dialogue, where speakers defend their stances and employ diverse argumentative strategies to strengthen persuasiveness. To support deeper modeling of argumentation dialogue, we present the first large-scale Strategic Argumentative Dialogue dataset, SAD, consisting of 392,822 examples. Grounded in argumentation theories, we annotate each utterance with five strategy types, allowing multiple strategies per utterance. Unlike prior datasets, SAD requires models to generate contextually appropriate arguments conditioned on the dialogue history, a specified stance on the topic, and targeted argumentation strategies. We further benchmark a range of pretrained generative models on SAD and present in-depth analysis of strategy usage patterns in argumentation.
SAFE-QAQ: End-to-End Slow-Thinking Audio-Text Fraud Detection via Reinforcement Learning
Peidong Wang | Zhiming Ma | Xin Dai | YongKang Liu | Shi Feng | Xiaocui Yang | Wenxing Hu | Zhihao Wang | Mingjun Pan | Li Yuan | Daling Wang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Peidong Wang | Zhiming Ma | Xin Dai | YongKang Liu | Shi Feng | Xiaocui Yang | Wenxing Hu | Zhihao Wang | Mingjun Pan | Li Yuan | Daling Wang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Existing fraud detection methods predominantly rely on transcribed text, suffering from ASR errors and missing crucial acoustic cues like vocal tone and environmental context. This limits their effectiveness against complex deceptive strategies. To address these challenges, we first propose **SAFE-QAQ**, an end-to-end comprehensive framework for audio-based slow-thinking fraud detection. First, the SAFE-QAQ framework eliminates the impact of transcription errors on detection performance. Secondly, we propose rule-based slow-thinking reward mechanisms that systematically guide the system to identify fraud-indicative patterns by accurately capturing fine-grained audio details, through hierarchical reasoning processes. Besides, our framework introduces a dynamic risk assessment framework during live calls, enabling early detection and prevention of fraud. Experiments on the TeleAntiFraud-Bench demonstrate that SAFE-QAQ achieves dramatic improvements over existing methods in multiple key dimensions, including accuracy, inference efficiency, and real-time processing capabilities. Currently deployed and analyzing over 70,000 calls daily, SAFE-QAQ effectively automates complex fraud detection, reducing human workload and financial losses. Code: https://anonymous.4open.science/r/SAFE-QAQ.
2025
SSMLoRA: Enhancing Low-Rank Adaptation with State Space Model
Jiayang Yu | Yihang Zhang | Bin Wang | Peiqin Lin | YongKang Liu | Shi Feng
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)
Jiayang Yu | Yihang Zhang | Bin Wang | Peiqin Lin | YongKang Liu | Shi Feng
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)
Fine-tuning is a key approach for adapting language models to specific downstream tasks, but updating all model parameters becomes impractical as model sizes increase.Parameter-Efficient Fine-Tuning (PEFT) methods, such as Low-Rank Adaptation (LoRA), address this challenge by introducing additional adaptation parameters into pre-trained weight matrices.However, LoRA’s performance varies across different insertion points within the model, highlighting potential parameter inefficiency due to unnecessary insertions. To this end, we propose SSMLoRA (**S**tate **S**pace **M**odel **L**ow-**R**ank **A**daptation), an extension of LoRA that incorporates a State Space Model (SSM) to interconnect low-rank matrices. SSMLoRA ensures that performance is maintained even with sparser insertions. SSMLoRA allows the model to not only map inputs to a low-rank space for better feature extraction but also leverage the computations from the previous low-rank space. Our method achieves comparable performance to LoRA on the General Language Understanding Evaluation (GLUE) benchmark while using only half the parameters. Additionally, due to its structure, SSMLoRA shows promise in handling tasks with longer input sequences.
MUSE: A Multimodal Conversational Recommendation Dataset with Scenario-Grounded User Profiles
Zihan Wang | Xiaocui Yang | YongKang Liu | Shi Feng | Daling Wang | Yifei Zhang
Findings of the Association for Computational Linguistics: ACL 2025
Zihan Wang | Xiaocui Yang | YongKang Liu | Shi Feng | Daling Wang | Yifei Zhang
Findings of the Association for Computational Linguistics: ACL 2025
Current conversational recommendation systems focus predominantly on text. However, real-world recommendation settings are generally multimodal, causing a significant gap between existing research and practical applications. To address this issue, we propose Muse, the first multimodal conversational recommendation dataset. Muse comprises 83,148 utterances from 7,000 conversations centered around the Clothing domain. Each conversation contains comprehensive multimodal interactions, rich elements, and natural dialogues. Data in Muse are automatically synthesized by a multi-agent framework powered by multimodal large language models (MLLMs). It innovatively derives user profiles from real-world scenarios rather than depending on manual design and history data for better scalability, and then it fulfills conversation simulation and optimization. Both human and LLM evaluations demonstrate the high quality of conversations in Muse. Additionally, fine-tuning experiments on three MLLMs demonstrate Muse’s learnable patterns for recommendations and responses, confirming its value for multimodal conversational recommendation. Our dataset and codes are available at https://anonymous.4open.science/r/Muse-0086.
SolEval: Benchmarking Large Language Models for Repository-level Solidity Smart Contract Generation
Zhiyuan Peng | Xin Yin | Rui Qian | Peiqin Lin | YongKang Liu | Hao Zhang | Chenhao Ying | Yuan Luo
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Zhiyuan Peng | Xin Yin | Rui Qian | Peiqin Lin | YongKang Liu | Hao Zhang | Chenhao Ying | Yuan Luo
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Large language models (LLMs) have transformed code generation.However, most existing approaches focus on mainstream languages such as Python and Java, neglecting the Solidity language, the predominant programming language for Ethereum smart contracts.Due to the lack of adequate benchmarks for Solidity, LLMs’ ability to generate secure, cost-effective smart contracts remains unexplored.To fill this gap, we construct SolEval, the first repository-level benchmark designed for Solidity smart contract generation, to evaluate the performance of LLMs on Solidity.SolEval consists of 1,507 samples from 28 different repositories, covering 6 popular domains, providing LLMs with a comprehensive evaluation benchmark.Unlike the existing Solidity benchmark, SolEval not only includes complex function calls but also reflects the real-world complexity of the Ethereum ecosystem by incorporating Gas@k and Vul@k.We evaluate 16 LLMs on SolEval, and our results show that the best-performing LLM achieves only 26.29% Pass@10, highlighting substantial room for improvement in Solidity code generation by LLMs.Additionally, we conduct supervised fine-tuning (SFT) on Qwen-7B using SolEval, resulting in a significant performance improvement, with Pass@5 increasing from 16.67% to 58.33%, demonstrating the effectiveness of fine-tuning LLMs on our benchmark.We release our data and code at https://github.com/pzy2000/SolEval.
DASR: Distributed Adaptive Scene Recognition - A Multi-Agent Cloud-Edge Framework for Language-Guided Scene Detection
Can Cui | Yongkang Liu | Seyhan Ucar | Juntong Peng | Ahmadreza Moradipari | Maryam Khabazi | Ziran Wang
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing: Industry Track
Can Cui | Yongkang Liu | Seyhan Ucar | Juntong Peng | Ahmadreza Moradipari | Maryam Khabazi | Ziran Wang
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing: Industry Track
The increasing complexity of modern driving systems demands efficient collection and analysis of specific driving scenarios that are crucial for system development and validation. Current approaches either rely on massive data collection followed by manual filtering, or rigid threshold-based recording systems that often miss important edge cases. In this paper, we present Distributed Adaptive Scene Recognition (DASR), a novel multi-agent cloud-edge framework for language-guided scene detection in connected vehicles. Our system leverages the complementary strengths of cloud-based large language models and edge-deployed vision language models to intelligently identify and preserve relevant driving scenarios while optimizing limited on-vehicle buffer storage. The cloud-based LLM serves as an intelligent coordinator that analyzes developer prompts to determine which specialized tools and sensor data streams should be incorporated, while the edge-deployed VLM efficiently processes video streams in real time to make relevant decisions. Extensive experiments across multiple driving datasets demonstrate that our framework achieves superior performance compared to larger baseline models, with exceptional performance on complex driving tasks requiring sophisticated reasoning. DASR also shows strong generalization capabilities on out-of-distribution datasets and significantly reduces storage requirements (28.73 %) compared to baseline methods.
Pixel-Level Reasoning Segmentation via Multi-turn Conversations
Dexian Cai | Xiaocui Yang | YongKang Liu | Daling Wang | Shi Feng | Yifei Zhang | Soujanya Poria
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Dexian Cai | Xiaocui Yang | YongKang Liu | Daling Wang | Shi Feng | Yifei Zhang | Soujanya Poria
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Existing visual perception systems focus on region-level segmentation in single-turn dialogues, relying on complex and explicit query instructions. Such systems cannot reason at the pixel level and comprehend dynamic user intent that changes over interaction. Our work tackles this issue by introducing a novel task, Pixel-level Reasoning Segmentation (Pixel-level RS) based on multi-turn conversations, tracking evolving user intent via multi-turn interactions for fine-grained segmentation. To establish a benchmark for this novel task, we build a Pixel-level ReasonIng Segmentation Dataset Based on Multi-Turn Conversations (PRIST), comprising 24k utterances from 8.3k multi-turn conversational scenarios with segmentation targets. Building on PRIST, we further propose MIRAS, a Multi-turn Interactive ReAsoning Segmentation framework, integrates pixel-level segmentation with robust multi-turn conversation understanding, generating pixel-grounded explanations aligned with user intent. The PRIST dataset and MIRSA framework fill the gap in pixel-level reasoning segmentation. Experimental results on the PRIST dataset demonstrate that our method outperforms current segmentation-specific baselines in terms of segmentation and LLM-based reasoning metrics. The code and data are available at: https://anonymous.4open.science/r/PixelRS/.
2024
HiFT: A Hierarchical Full Parameter Fine-Tuning Strategy
YongKang Liu | Yiqun Zhang | Qian Li | Tong Liu | Shi Feng | Daling Wang | Yifei Zhang | Hinrich Schuetze
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
YongKang Liu | Yiqun Zhang | Qian Li | Tong Liu | Shi Feng | Daling Wang | Yifei Zhang | Hinrich Schuetze
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Full-parameter fine-tuning (FPFT) has become the go-to choice for adapting language models (LMs) to downstream tasks due to its excellent performance. As LMs grow in size, fine-tuning the full parameters of LMs requires a prohibitively large amount of GPU memory. Existing approaches utilize zeroth-order optimizer to conserve GPU memory, which potentially compromises the performance of LMs as non-zero order optimizers tend to converge more readily on most downstream tasks. We propose a novel, memory-efficient, optimizer-independent, end-to-end hierarchical fine-tuning strategy, HiFT, which only updates a subset of parameters at each training step. HiFT significantly reduces the amount of gradients and optimizer state parameters residing in GPU memory at the same time, thereby reducing GPU memory usage. Our results demonstrate that: (1) HiFT achieves comparable performance with parameter-efficient fine-tuning and standard FPFT. (2) Results on six models show that HiFT reduces the number of trainable parameters by about 89.18% on average compared to FPFT. (3) HiFT supports FPFT of 7B models for 24G GPU memory devices under mixed precision without using any memory saving techniques. (4) HiFT supports various optimizers including AdamW, AdaGrad, SGD, etc. The source code link is https://github.com/misonsky/HiFT.
2023
PVGRU: Generating Diverse and Relevant Dialogue Responses via Pseudo-Variational Mechanism
Yongkang Liu | Shi Feng | Daling Wang | Yifei Zhang | Hinrich Schütze
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yongkang Liu | Shi Feng | Daling Wang | Yifei Zhang | Hinrich Schütze
Proceedings of the 61st Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
We investigate response generation for multi-turn dialogue in generative chatbots. Existing generative modelsbased on RNNs (Recurrent Neural Networks) usually employ the last hidden state to summarize the history, which makesmodels unable to capture the subtle variability observed in different dialogues and cannot distinguish the differencesbetween dialogues that are similar in composition. In this paper, we propose Pseudo-Variational Gated Recurrent Unit (PVGRU). The key novelty of PVGRU is a recurrent summarizing variable thataggregates the accumulated distribution variations of subsequences. We train PVGRU without relying on posterior knowledge, thus avoiding the training-inference inconsistency problem. PVGRU can perceive subtle semantic variability through summarizing variables that are optimized by two objectives we employ for training: distribution consistency and reconstruction. In addition, we build a Pseudo-Variational Hierarchical Dialogue(PVHD) model based on PVGRU. Experimental results demonstrate that PVGRU can broadly improve the diversity andrelevance of responses on two benchmark datasets.
2022
DialogConv: A Lightweight Fully Convolutional Network for Multi-view Response Selection
Yongkang Liu | Shi Feng | Wei Gao | Daling Wang | Yifei Zhang
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing
Yongkang Liu | Shi Feng | Wei Gao | Daling Wang | Yifei Zhang
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing
Current end-to-end retrieval-based dialogue systems are mainly based on Recurrent Neural Networks or Transformers with attention mechanisms. Although promising results have been achieved, these models often suffer from slow inference or huge number of parameters. In this paper, we propose a novel lightweight fully convolutional architecture, called DialogConv, for response selection. DialogConv is exclusively built on top of convolution to extract matching features of context and response. Dialogues are modeled in 3D views, where DialogConv performs convolution operations on embedding view, word view and utterance view to capture richer semantic information from multiple contextual views. On the four benchmark datasets, compared with state-of-the-art baselines, DialogConv is on average about 8.5x smaller in size, and 79.39x and 10.64x faster on CPU and GPU devices, respectively. At the same time, DialogConv achieves the competitive effectiveness of response selection.
MulZDG: Multilingual Code-Switching Framework for Zero-shot Dialogue Generation
Yongkang Liu | Shi Feng | Daling Wang | Yifei Zhang
Proceedings of the 29th International Conference on Computational Linguistics
Yongkang Liu | Shi Feng | Daling Wang | Yifei Zhang
Proceedings of the 29th International Conference on Computational Linguistics
Building dialogue generation systems in a zero-shot scenario remains a huge challenge, since the typical zero-shot approaches in dialogue generation rely heavily on large-scale pre-trained language generation models such as GPT-3 and T5. The research on zero-shot dialogue generation without cumbersome language models is limited due to lacking corresponding parallel dialogue corpora. In this paper, we propose a simple but effective Multilingual learning framework for Zero-shot Dialogue Generation (dubbed as MulZDG) that can effectively transfer knowledge from an English corpus with large-scale training samples to a non-English corpus with zero samples. Besides, MulZDG can be viewed as a multilingual data augmentation method to improve the performance of the resource-rich language. First, we construct multilingual code-switching dialogue datasets via translation utterances randomly selected from monolingual English datasets. Then we employ MulZDG to train a unified multilingual dialogue model based on the code-switching datasets. The MulZDG can conduct implicit semantic alignment between different languages. Experiments on DailyDialog and DSTC7 datasets demonstrate that MulZDG not only achieve competitive performance under zero-shot case compared to training with sufficient examples but also greatly improve the performance of the source language.
2018
Neural Relation Classification with Text Descriptions
Feiliang Ren | Di Zhou | Zhihui Liu | Yongcheng Li | Rongsheng Zhao | Yongkang Liu | Xiaobo Liang
Proceedings of the 27th International Conference on Computational Linguistics
Feiliang Ren | Di Zhou | Zhihui Liu | Yongcheng Li | Rongsheng Zhao | Yongkang Liu | Xiaobo Liang
Proceedings of the 27th International Conference on Computational Linguistics
Relation classification is an important task in natural language processing fields. State-of-the-art methods usually concentrate on building deep neural networks based classification models on the training data in which the relations of the labeled entity pairs are given. However, these methods usually suffer from the data sparsity issue greatly. On the other hand, we notice that it is very easily to obtain some concise text descriptions for almost all of the entities in a relation classification task. The text descriptions can provide helpful supplementary information for relation classification. But they are ignored by most of existing methods. In this paper, we propose DesRC, a new neural relation classification method which integrates entities’ text descriptions into deep neural networks models. We design a two-level attention mechanism to select the most useful information from the “intra-sentence” aspect and the “cross-sentence” aspect. Besides, the adversarial training method is also used to further improve the classification per-formance. Finally, we evaluate the proposed method on the SemEval 2010 dataset. Extensive experiments show that our method achieves much better experimental results than other state-of-the-art relation classification methods.
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Co-authors
- Shi Feng 14
- Daling Wang 13
- Xiaocui Yang 7
- Yifei Zhang 6
- Hinrich Schuetze 4
- Peiqin Lin 3
- Ercong Nie 3
- Zijing Wang 3
- Xingle Xu 3
- Yifei Zhang 3
- Yiqun Zhang 3
- Dexian Cai 2
- Qian Li 2
- Hinrich Schütze 2
- Mingyang Wang 2
- Peidong Wang 2
- Jiayang Yu 2
- Deyuan Chen 1
- Can Cui 1
- Xin Dai 1
- Wei Gao 1
- Wenxing Hu 1
- Maryam Khabazi 1
- Yongcheng Li 1
- Xiaobo Liang 1
- Kang Liu 1
- Tong Liu 1
- Zhihui Liu 1
- Yuan Luo 1
- Zhiming Ma 1
- Ahmadreza Moradipari 1
- Mingjun Pan 1
- Juntong Peng 1
- Zhiyuan Peng 1
- Soujanya Poria 1
- Rui Qian 1
- Feiliang Ren 1
- Kaisong Song 1
- Seyhan Ucar 1
- Bin Wang 1
- Zhihao Wang 1
- Zihan Wang 1
- Ziran Wang 1
- Xin Yin 1
- Chenhao Ying 1
- Li Yuan 1
- Hao Zhang 1
- Wen Zhang 1
- Yihang Zhang 1
- Rongsheng Zhao 1
- Zhengjie Zhao 1
- Di Zhou 1