Qiang Huang
2026
AnchorSeg: Language Grounded Query Banks for Reasoning Segmentation
Rui Qian | Chuanhang Deng | Qiang Huang | Jian Xiong | Mingxuan Li | Yingbo Zhou | Wei Zhai | Jintao Chen | Dejing Dou
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Rui Qian | Chuanhang Deng | Qiang Huang | Jian Xiong | Mingxuan Li | Yingbo Zhou | Wei Zhai | Jintao Chen | Dejing Dou
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Reasoning segmentation requires models to ground complex, implicit textual queries into precise pixel-level masks. Existing approaches rely on a single segmentation token \<SEG\>, whose hidden state implicitly encodes both semantic reasoning and spatial localization, limiting the model’s ability to explicitly disentangle *what to segment* from *where to segment*. We introduce AnchorSeg, which reformulates reasoning segmentation as a structured conditional generation process over image tokens, conditioned on language grounded query banks. Instead of compressing all semantic reasoning and spatial localization into a single embedding, AnchorSeg constructs an ordered sequence of query banks: latent reasoning tokens that capture intermediate semantic states, and a segmentation anchor token that provides explicit spatial grounding. We model spatial conditioning as a factorized distribution over image tokens, where the anchor query determines localization signals while contextual queries provide semantic modulation. To bridge token-level predictions and pixel-level supervision, we propose Token–Mask Cycle Consistency (TMCC), a bidirectional training objective that enforces alignment across resolutions. By explicitly decoupling spatial grounding from semantic reasoning through structured language grounded query banks, AnchorSeg achieves state-of-the-art results on ReasonSeg test set (67.7% gIoU and 68.1% cIoU). All code and models are publicly available at https://github.com/rui-qian/AnchorSeg.
Measuring Social Bias in Vision-Language Models with Face-Only Counterfactuals from Real Photos
Haodong Chen | Qiang Huang | Jiaqi Zhao | Qiuping Jiang | Xiaojun Chang | Jun Yu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Haodong Chen | Qiang Huang | Jiaqi Zhao | Qiuping Jiang | Xiaojun Chang | Jun Yu
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Vision-Language Models (VLMs) are increasingly deployed in socially consequential settings, raising concerns about social bias driven by demographic cues. A central challenge in measuring such social bias is attribution under visual confounding: real-world images entangle race and gender with correlated factors such as background and clothing, obscuring attribution. We propose a **face-only counterfactual evaluation paradigm** that isolates demographic effects while preserving real-image realism. Starting from real photographs, we generate counterfactual variants by editing only facial attributes related to race and gender, keeping all other visual factors fixed. Based on this paradigm, we construct **FOCUS**, a dataset of 480 scene-matched counterfactual images across six occupations and ten demographic groups, and propose **REFLECT,** a benchmark comprising three decision-oriented tasks: two-alternative forced choice, multiple-choice socioeconomic inference, and numeric salary recommendation. Experiments on five state-of-the-art VLMs reveal that demographic disparities persist under strict visual control and vary substantially across task formulations. These findings underscore the necessity of controlled, counterfactual audits and highlight task design as a critical factor in evaluating social bias in multimodal models.
AAPO: Enhancing the Reasoning Capabilities of LLMs with Advantage Margin
Jian Xiong | Jingbo Zhou | Jingyong Ye | Qiang Huang | Dejing Dou
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Jian Xiong | Jingbo Zhou | Jingyong Ye | Qiang Huang | Dejing Dou
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Reinforcement learning (RL) has emerged as an effective approach for enhancing the reasoning capabilities of large language models (LLMs), especially in scenarios where supervised fine-tuning (SFT) falls short due to limited chain-of-thought (CoT) data. Among RL-based post-training methods, group relative advantage estimation, as exemplified by Group Relative Policy Optimization (GRPO), has attracted considerable attention for eliminating the dependency on the value model, thereby simplifying training compared to traditional approaches like Proximal Policy Optimization (PPO). However, existing group relative advantage estimation method still suffers from training inefficiencies, particularly when the estimated advantage approaches zero. To address this limitation, we propose Advantage-Augmented Policy Optimization (AAPO), a novel RL algorithm that optimizes the cross-entropy (CE) loss using advantages enhanced through a margin-based estimation scheme. This approach effectively mitigates the inefficiencies associated with group relative advantage estimation. Experimental results on multiple mathematical reasoning benchmarks and model series demonstrate the superior performance of AAPO. Code is available at https://github.com/JianxXiong/AAPO.
2025
PRISM: A Framework for Producing Interpretable Political Bias Embeddings with Political-Aware Cross-Encoder
Yiqun Sun | Qiang Huang | Anthony Kum Hoe Tung | Jun Yu
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yiqun Sun | Qiang Huang | Anthony Kum Hoe Tung | Jun Yu
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Semantic Text Embedding is a fundamental NLP task that encodes textual content into vector representations, where proximity in the embedding space reflects semantic similarity. While existing embedding models excel at capturing general meaning, they often overlook ideological nuances, limiting their effectiveness in tasks that require an understanding of political bias. To address this gap, we introduce PRISM, the first framework designed to Produce inteRpretable polItical biaS eMbeddings. PRISM operates in two key stages: (1) Controversial Topic Bias Indicator Mining, which systematically extracts fine-grained political topics and corresponding bias indicators from weakly labeled news data, and (2) Cross-Encoder Political Bias Embedding, which assigns structured bias scores to news articles based on their alignment with these indicators. This approach ensures that embeddings are explicitly tied to bias-revealing dimensions, enhancing both interpretability and predictive power. Through extensive experiments on large-scale datasets, we demonstrate that PRISM outperforms state-of-the-art text embedding models in political bias classification while offering highly interpretable representations that facilitate diversified retrieval and ideological analysis. The source code is available at https://anonymous.4open.science/r/PRISM-80B4/.
Don’t Reinvent the Wheel: Efficient Instruction-Following Text Embedding based on Guided Space Transformation
Yingchaojie Feng | Yiqun Sun | Yandong Sun | Minfeng Zhu | Qiang Huang | Anthony Kum Hoe Tung | Wei Chen
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yingchaojie Feng | Yiqun Sun | Yandong Sun | Minfeng Zhu | Qiang Huang | Anthony Kum Hoe Tung | Wei Chen
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
In this work, we investigate an important task named instruction-following text embedding, which generates dynamic text embeddings that adapt to user instructions, highlighting specific attributes of text. Despite recent advancements, existing approaches suffer from significant computational overhead, as they require re-encoding the entire corpus for each new instruction. To address this challenge, we propose GSTransform, a novel instruction-following text embedding framework based on Guided Space Transformation. Our key observation is that instruction-relevant information is inherently encoded in generic embeddings but remains underutilized. Instead of repeatedly encoding the corpus for each instruction, GSTransform is a lightweight transformation mechanism that adapts pre-computed embeddings in real time to align with user instructions, guided by a small amount of text data with instruction-focused label annotation. We conduct extensive experiments on three instruction-awareness downstream tasks across nine real-world datasets, demonstrating that GSTransform improves instruction-following text embedding quality over state-of-the-art methods while achieving dramatic speedups of 6~300× in real-time processing on large-scale datasets. The source code is available at https://github.com/YingchaojieFeng/GSTransform.
2020
A Joint Model for Aspect-Category Sentiment Analysis with Shared Sentiment Prediction Layer
Yuncong Li | Zhe Yang | Cunxiang Yin | Xu Pan | Lunan Cui | Qiang Huang | Ting Wei
Proceedings of the 19th Chinese National Conference on Computational Linguistics
Yuncong Li | Zhe Yang | Cunxiang Yin | Xu Pan | Lunan Cui | Qiang Huang | Ting Wei
Proceedings of the 19th Chinese National Conference on Computational Linguistics
Aspect-category sentiment analysis (ACSA) aims to predict the aspect categories mentioned in texts and their corresponding sentiment polarities. Some joint models have been proposed to address this task. Given a text, these joint models detect all the aspect categories mentioned in the text and predict the sentiment polarities toward them at once. Although these joint models obtain promising performances, they train separate parameters for each aspect category and therefore suffer from data deficiency of some aspect categories. To solve this problem, we propose a novel joint model which contains a shared sentiment prediction layer. The shared sentiment prediction layer transfers sentiment knowledge between aspect categories and alleviates the problem caused by data deficiency. Experiments conducted on SemEval-2016 Datasets demonstrate the effectiveness of our model.
2015
Chinese Spelling Check System Based on N-gram Model
Weijian Xie | Peijie Huang | Xinrui Zhang | Kaiduo Hong | Qiang Huang | Bingzhou Chen | Lei Huang
Proceedings of the Eighth SIGHAN Workshop on Chinese Language Processing
Weijian Xie | Peijie Huang | Xinrui Zhang | Kaiduo Hong | Qiang Huang | Bingzhou Chen | Lei Huang
Proceedings of the Eighth SIGHAN Workshop on Chinese Language Processing
2014
Chinese Spelling Check System Based on Tri-gram Model
Qiang Huang | Peijie Huang | Xinrui Zhang | Weijian Xie | Kaiduo Hong | Bingzhou Chen | Lei Huang
Proceedings of the Third CIPS-SIGHAN Joint Conference on Chinese Language Processing
Qiang Huang | Peijie Huang | Xinrui Zhang | Weijian Xie | Kaiduo Hong | Bingzhou Chen | Lei Huang
Proceedings of the Third CIPS-SIGHAN Joint Conference on Chinese Language Processing
Ch2R: A Chinese Chatter Robot for Online Shopping Guide
Peijie Huang | Xianmao Lin | Zeqi Lian | De Yang | Xiaoling Tang | Li Huang | Qiang Huang | Xiupeng Wu | Guisheng Wu | Xinrui Zhang
Proceedings of the Third CIPS-SIGHAN Joint Conference on Chinese Language Processing
Peijie Huang | Xianmao Lin | Zeqi Lian | De Yang | Xiaoling Tang | Li Huang | Qiang Huang | Xiupeng Wu | Guisheng Wu | Xinrui Zhang
Proceedings of the Third CIPS-SIGHAN Joint Conference on Chinese Language Processing
2004
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- Peijie Huang 3
- Xinrui Zhang 3
- Bingzhou Chen 2
- Dejing Dou 2
- Kaiduo Hong 2
- Lei Huang (黄磊) 2
- Yiqun Sun 2
- Anthony Kum Hoe Tung 2
- Weijian Xie 2
- Jian Xiong 2
- Jun Yu 2
- Xiaojun Chang 1
- Haodong Chen 1
- Jintao Chen 1
- Wei Chen 1
- Stephen Cox 1
- Lunan Cui 1
- Chuanhang Deng 1
- Yingchaojie Feng 1
- Li Huang 1
- Qiuping Jiang 1
- Mingxuan Li 1
- Yuncong Li 1
- Zeqi Lian 1
- Xianmao Lin 1
- Xu Pan 1
- Rui Qian 1
- Yandong Sun 1
- Xiaoling Tang 1
- Ting Wei 1
- Guisheng Wu 1
- Xiupeng Wu 1
- Dechuan Yang 1
- Zhe Yang 1
- Jingyong Ye 1
- Cunxiang Yin 1
- Wei Zhai 1
- Jiaqi Zhao 1
- Jingbo Zhou 1
- Yingbo Zhou 1
- Minfeng Zhu 1