Jianxiang Peng
2026
From Curated Data to Scalable Models: Continual Pre-training of Dense and MoE Large Language Models for Tibetan
Lei Yang | Leiyu Pan | Bojian Xiong | Renren Jin | Shaowei Zhang | Yue Chen | Ling Shi | Jiang Zhou | Junru Wu | Zhen Wang | Jianxiang Peng | Juesi Xiao | Tianyu Dong | Zhuowen Han | Zhuo Chen | Yuqi Ren | Deyi Xiong
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Lei Yang | Leiyu Pan | Bojian Xiong | Renren Jin | Shaowei Zhang | Yue Chen | Ling Shi | Jiang Zhou | Junru Wu | Zhen Wang | Jianxiang Peng | Juesi Xiao | Tianyu Dong | Zhuowen Han | Zhuo Chen | Yuqi Ren | Deyi Xiong
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Large language models (LLMs) have achieved remarkable success across a wide range of natural language processing tasks, yet their performance remains heavily biased toward high-resource languages. Tibetan, despite its cultural significance and large speaker population, is still substantially underrepresented. In this work, we present a comprehensive pipeline for advancing Tibetan language modeling through large-scale data curation and continual pre-training. We construct a 72 GB high-quality Tibetan corpus, the largest to date, and adapt Qwen2.5-7B through balanced multilingual continual pre-training with Tibetan, Chinese, and English, followed by multilingual instruction tuning. To further scale capacity efficiently, we extend the dense model to a 50B-A10B Mixture-of-Experts architecture. Due to the absence of standardized Tibetan benchmarks, we build multiple evaluation datasets via high-quality translation and human verification. Experimental results show that both dense and MoE models consistently outperform existing open-source and Tibetan-focused models of similar scale across diverse tasks. Our work advances Tibetan-centric LLM research and provides transferable insights for extending LLMs to other low-resource languages. We will release the model weights, evaluation benchmarks, and detailed data processing documentation in the follow-up.
2025
DCIS: Efficient Length Extrapolation of LLMs via Divide-and-Conquer Scaling Factor Search
Lei Yang | Shaoyang Xu | Jianxiang Peng | Shaolin Zhu | Deyi Xiong
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Lei Yang | Shaoyang Xu | Jianxiang Peng | Shaolin Zhu | Deyi Xiong
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Large language models (LLMs) based on the Transformer architecture usually have their context length limited due to the high training cost. Recent advancements extend the context window by adjusting the scaling factors of RoPE and fine-tuning. However, suboptimal initialization of these factors results in increased fine-tuning costs and reduced performance at target length. To address these challenges, we propose a novel RoPE-based fine-tuning framework that diverges from conventional scaling factors search. Specifically, we present a Divide-and-Conquer Incremental Search (DCIS) algorithm that strategically determines the better scaling factors. Further fine-tuning with the identified scaling factors effectively extends the context window of LLMs. Empirical results demonstrate that our methodology not only mitigates performance decay at extended target lengths but also allows the model to fine-tune on short contexts and generalize to long contexts, thereby reducing the cost of fine-tuning. The scaling factors obtained through DCIS can even perform effectively without fine-tuning. Further analysis of the search space reveals that DCIS achieves twice the search efficiency compared to other methods. We also examine the impact of the non-strictly increasing scaling factors utilized in DCIS and evaluate the general capabilities of LLMs across various context lengths.
DiplomacyAgent: Do LLMs Balance Interests and Ethical Principles in International Events?
Jianxiang Peng | Ling Shi | Xinwei Wu | Hanwen Zhang | Fujiang Liu | Haocheng Lyu | Deyi Xiong
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
Jianxiang Peng | Ling Shi | Xinwei Wu | Hanwen Zhang | Fujiang Liu | Haocheng Lyu | Deyi Xiong
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing
The widespread deployment of large language models (LLMs) across various domains has made their safety a critical priority. Inspired by think-tank decision-making philosophy, we propose DiplomacyAgent, an LLM-based multi-agent system for diplomatic position analysis. With DiplomacyAgent, we are able to systematically assess how LLMs balance “interests” against “ethical principles” when addressing various international events, hence understanding the safety implications of LLMs in diplomacy. Specifically, this will help to assess the consistency of LLM stance with widely recognized ethical standards, as well as the potential risks or ideological biases that may arise. Through integrated quantitative metrics, our research uncovers unexpected decision-making patterns in LLM responses to sensitive issues including human rights protection, environmental sustainability, regional conflicts, etc. It discloses that LLMs could exhibit a strong bias towards interests, leading to unsafe decisions that violate ethical and moral principles. Our experiment results suggest that deploying LLMs in high-stakes domains, particularly in the formulation of diplomatic policies, necessitates a comprehensive assessment of potential ethical and social implications, as well as the implementation of stringent safety protocols.
ChatSOP: An SOP-Guided MCTS Planning Framework for Controllable LLM Dialogue Agents
Zhigen Li | Jianxiang Peng | Yanmeng Wang | Yong Cao | Tianhao Shen | Minghui Zhang | Linxi Su | Shang Wu | Yihang Wu | YuQian Wang | Ye Wang | Wei Hu | Jianfeng Li | Shaojun Wang | Jing Xiao | Deyi Xiong
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zhigen Li | Jianxiang Peng | Yanmeng Wang | Yong Cao | Tianhao Shen | Minghui Zhang | Linxi Su | Shang Wu | Yihang Wu | YuQian Wang | Ye Wang | Wei Hu | Jianfeng Li | Shaojun Wang | Jing Xiao | Deyi Xiong
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Dialogue agents powered by Large Language Models (LLMs) show superior performance in various tasks. Despite the better user understanding and human-like responses, their **lack of controllability** remains a key challenge, often leading to unfocused conversations or task failure. To address this, we introduce Standard Operating Procedure (SOP) to regulate dialogue flow. Specifically, we propose **ChatSOP**, a novel SOP-guided Monte Carlo Tree Search (MCTS) planning framework designed to enhance the controllability of LLM-driven dialogue agents. To enable this, we curate a dataset comprising SOP-annotated multi-scenario dialogues, generated using a semi-automated role-playing system with GPT-4o and validated through strict manual quality control. Additionally, we propose a novel method that integrates Chain of Thought reasoning with supervised fine-tuning for SOP prediction and utilizes SOP-guided Monte Carlo Tree Search for optimal action planning during dialogues. Experimental results demonstrate the effectiveness of our method, such as achieving a 27.95% improvement in action accuracy compared to baseline models based on GPT-3.5 and also showing notable gains for open-source models. Dataset and codes are publicly available.
Praetor: A Fine-Grained Generative LLM Evaluator with Instance-Level Customizable Evaluation Criteria
Yongqi Leng | Renren Jin | Yue Chen | Zhuowen Han | Ling Shi | Jianxiang Peng | Lei Yang | Juesi Xiao | Deyi Xiong
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yongqi Leng | Renren Jin | Yue Chen | Zhuowen Han | Ling Shi | Jianxiang Peng | Lei Yang | Juesi Xiao | Deyi Xiong
Proceedings of the 63rd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
With the increasing capability of large language models (LLMs), LLM-as-a-judge has emerged as a new evaluation paradigm. Compared with traditional automatic and manual evaluation, LLM evaluators exhibit better interpretability and efficiency. Despite this, existing LLM evaluators suffer from limited use scenarios and poor flexibility. To mitigate these issues, we propose Praetor, a fine-grained generative LLM evaluator with instance-level customazable evaluation criteria. To train Praetor, we curate a large-scale dataset guided with a hierarchical guideline covering a wide range of tasks and instance-level evaluation criteria. We train Praetor on this dataset in a multi-task learning fashion, which enables to evaluate LLMs in either pointwise grading or pairwise comparison way and support two languages simultaneously with a high flexibility of setting evaluation criteria. Extensive experiments demonstrate that Praetor outperforms previous LLM evaluators and instruction-tuned LLMs on multiple benchmarks, setting new SOTA results. It also exhibits the potential for generating critiques as scalable feedback to further improve LLMs. Our model and related resources are released at https://github.com/tjunlp-lab/Praetor.
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- Deyi Xiong (德意 熊) 5
- Ling Shi 3
- Yue Chen 2
- Zhuowen Han 2
- Renren Jin 2
- Juesi Xiao 2
- Lei Yang 2
- Yong Cao 1
- Zhuo Chen 1
- Tianyu Dong 1
- Wei Hu 1
- Yongqi Leng 1
- Jianfeng Li 1
- Zhigen Li 1
- Fujiang Liu 1
- Haocheng Lyu 1
- Leiyu Pan 1
- Yuqi Ren 1
- Tianhao Shen 1
- Linxi Su 1
- Shaojun Wang 1
- Yanmeng Wang 1
- Ye Wang 1
- YuQian Wang 1
- Zhen Wang 1
- Junru Wu 1
- Shang Wu 1
- Xinwei Wu 1
- Yihang Wu 1
- Jing Xiao 1
- Bojian Xiong 1
- Shaoyang Xu 1
- Lei Yang 1
- Hanwen Zhang 1
- Minghui Zhang 1
- Shaowei Zhang 1
- Jiang Zhou 1
- Shaolin Zhu 1