Hongfeng Chai
Also published as: 洪峰 柴
2026
GQLBench: A Large-Scale Cross-Domain, Cross-Dialect Benchmark for NL2GQL
Yanning Su | Yuhang Zhou | Yang Fang | Sen Liu | Guangnan Ye | Hongfeng Chai
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Yanning Su | Yuhang Zhou | Yang Fang | Sen Liu | Guangnan Ye | Hongfeng Chai
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Despite growing interest in NL2GQL, benchmarking progress has been constrained by the lack of resources that are simultaneously large-scale, cross-domain, and cross-dialect. To address this gap, we present **GQLBench**, a new benchmark built through an automated and scalable framework that integrates NL2SQL-to-NL2GQL conversion with graph-native data generation. GQLBench supports execution-based evaluation on both Cypher and ISO-GQL, covering hundreds of graph databases and over 20k natural language questions for each dialect. By combining converted data from mature NL2SQL resources with synthetic graph-specific queries, it captures both schema diversity from real-world relational sources and graph-native reasoning challenges, including long paths and cycles. Beyond overall performance comparison, GQLBench also enables fine-grained evaluation across dialects, graph patterns, and query complexity. Experiments on advanced LLMs show that even strong proprietary models struggle on GQLBench, with gemini-3-flash achieving only 35.40% average execution accuracy across the two dialects. Our data and code are available at https://github.com/qxssadf/GQLBench.
PII-Bench: Evaluating Query-Aware Privacy Protection Systems
Hao Shen | Zhouhong Gu | Haokai Hong | Weili Han | Hongfeng Chai
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Hao Shen | Zhouhong Gu | Haokai Hong | Weili Han | Hongfeng Chai
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
The widespread adoption of Large Language Models (LLMs) has raised significant privacy concerns regarding the exposure of personally identifiable information (PII) in user prompts. To address this challenge, we propose a query-unrelated PII masking strategy and introduce PII-Bench, the first comprehensive evaluation framework for assessing privacy protection systems. PII-Bench comprises 2,842 test samples across 7 PII types with 55 fine-grained subcategories, featuring diverse scenarios from single-subject descriptions to complex multi-party interactions. Each sample is carefully crafted with a user query, context description, and standard answer indicating query-relevant PII. Our empirical evaluation reveals that while current models perform adequately in basic PII detection, they show significant limitations in determining PII query relevance. Even advanced LLMs struggle with this task, particularly in handling complex multi-subject scenarios, indicating substantial room for improvement in achieving intelligent PII masking.
Rethinking the Role of Entropy in Optimizing Tool-Use Behaviors for Large Language Model Agents
Zeping Li | Hongru Wang | Yiwen Zhao | Guanhua Chen | Yixia Li | Keyang Chen | Yixin Cao | Guangnan Ye | Hongfeng Chai | Zhenfei Yin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Zeping Li | Hongru Wang | Yiwen Zhao | Guanhua Chen | Yixia Li | Keyang Chen | Yixin Cao | Guangnan Ye | Hongfeng Chai | Zhenfei Yin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Tool-using agents based on Large Language Models (LLMs) excel in tasks such as mathematical reasoning and multi-hop question answering. However, in long trajectories, agents often trigger excessive and low-quality tool calls, increasing latency and degrading inference performance, making managing tool-use behavior challenging. In this work, we conduct entropy-based pilot experiments and observe a strong positive correlation between entropy reduction and high-quality tool calls. Building on this finding, we propose using entropy reduction as a supervisory signal and design two reward strategies to address the differing needs of optimizing tool-use behavior. Sparse outcome rewards provide coarse, trajectory-level guidance to improve efficiency, while dense process rewards offer fine-grained supervision to enhance performance. Experiments across diverse domains show that both reward designs improve tool-use behavior: the former reduces tool calls by 72.07% compared to the average of baselines, while the latter improves performance by 22.27%. These results position entropy reduction as a key mechanism for enhancing tool-use behavior, enabling agents to be more adaptive in real-world applications.
Behavioral Consistency Validation for LLM Agents: An Analysis of Trading-Style Switching through Stock-Market Simulation
Zeping Li | Guancheng Wan | Keyang Chen | Yu Chen | Yiwen Zhao | Philip Torr | Guangnan Ye | Zhenfei Yin | Hongfeng Chai
Findings of the Association for Computational Linguistics: ACL 2026
Zeping Li | Guancheng Wan | Keyang Chen | Yu Chen | Yiwen Zhao | Philip Torr | Guangnan Ye | Zhenfei Yin | Hongfeng Chai
Findings of the Association for Computational Linguistics: ACL 2026
Recent works have increasingly applied Large Language Models (LLMs) as agents in financial stock market simulations to test if micro-level behaviors aggregate into macro-level phenomena. However, a crucial question arises: Do LLM agents’ behaviors align with real market participants? This alignment is key to the validity of simulation results. To explore this, we select a financial stock market scenario to test behavioral consistency. Investors are typically classified as fundamental or technical traders, but most simulations fix strategies at initialization, failing to reflect real-world trading dynamics. In this work, we assess whether agents’ strategy switching aligns with financial theory, providing a framework for this evaluation. We operationalize four behavioral-finance drivers—loss aversion, herding, wealth differentiation, and price misalignment—as personality traits set via prompting and stored long-term. In year-long simulations, agents process daily price-volume data, trade under a designated style, and reassess their strategy every 10 trading days. We introduce four alignment metrics and use Mann–Whitney U tests to compare agents’ style-switching behavior with financial theory. Our results show that recent LLMs’ switching behavior is only partially consistent with behavioral-finance theories, highlighting the need for further refinement in aligning agent behavior with financial theory.
2025
Are LLMs Rational Investors? A Study on the Financial Bias in LLMs
Yuhang Zhou | Yuchen Ni | Zhiheng Xi | Zhangyue Yin | Yu He | Gan Yunhui | Xiang Liu | Zhang Jian | Sen Liu | Xipeng Qiu | Yixin Cao | Guangnan Ye | Hongfeng Chai
Findings of the Association for Computational Linguistics: ACL 2025
Yuhang Zhou | Yuchen Ni | Zhiheng Xi | Zhangyue Yin | Yu He | Gan Yunhui | Xiang Liu | Zhang Jian | Sen Liu | Xipeng Qiu | Yixin Cao | Guangnan Ye | Hongfeng Chai
Findings of the Association for Computational Linguistics: ACL 2025
Large language models (LLMs) excel in natural language generation but also exhibit biases, particularly in gender, race, and religion, which can be amplified with widespread use. However, research on biases in specific domains, such as finance, remains limited. To address this gap, we conducted a comprehensive evaluation of 23 leading LLMs and found varying degrees of financial bias, including more pronounced biases in financial-specific LLMs (FinLLMs). In response, we propose the Financial Bias Indicators (FBI) framework, which includes components like the Bias Unveiler, Bias Detective, Bias Tracker, and Bias Antidote, designed to identify, detect, analyze, and mitigate financial biases. Our analysis explores the root causes of these biases and introduces a debiasing method based on financial causal knowledge, alongside three other debiasing techniques. For the most biased model, we successfully reduced bias by 68% according to key metrics. This study advances our understanding of LLM biases in finance and highlights the need for greater scrutiny in their application within this critical domain.
2024
银瞳:基于自适应语义空间学习的中文金融多任务大模型(SilverSight: A Multi-Task Chinese Financial Large Language Model Based on Adaptive Semantic Space Learning)
Yuhang Zhou (周宇航) | Zeping Li (李泽平) | Siyu Tian (思雨 田) | Yuchen Ni (倪雨琛) | Jian Zhang (张健) | Xiang Liu (刘响) | Guangnan Ye (叶广楠) | Jie Wu (吴杰) | Hongfeng Chai (柴洪峰)
Proceedings of the 23rd Chinese National Conference on Computational Linguistics (Volume 1: Main Conference)
Yuhang Zhou (周宇航) | Zeping Li (李泽平) | Siyu Tian (思雨 田) | Yuchen Ni (倪雨琛) | Jian Zhang (张健) | Xiang Liu (刘响) | Guangnan Ye (叶广楠) | Jie Wu (吴杰) | Hongfeng Chai (柴洪峰)
Proceedings of the 23rd Chinese National Conference on Computational Linguistics (Volume 1: Main Conference)
“大语言模型正逐渐被用于各种垂直领域,利用其广泛的知识储备来赋能领域中的多种场景。然而,各领域拥有多种待学习的特定任务,且多源异构的领域数据容易引发模型进行任务迁移时的冲突。基于此,本研究提出自适应语义空间学习框架,利用对语义空间内数据的自适应重分布,提升多专家模型的性能及选择效果,并基于此框架训练了一个金融多任务大模型“银瞳”。研究结果表明,我们的框架只需利用10%的数据就能达到接近全数据训练的效果,并拥有较强的泛化表现。”
R3-NL2GQL: A Model Coordination and Knowledge Graph Alignment Approach for NL2GQL
Yuhang Zhou | Yu He | Siyu Tian | Yuchen Ni | Zhangyue Yin | Xiang Liu | Chuanjun Ji | Sen Liu | Xipeng Qiu | Guangnan Ye | Hongfeng Chai
Findings of the Association for Computational Linguistics: EMNLP 2024
Yuhang Zhou | Yu He | Siyu Tian | Yuchen Ni | Zhangyue Yin | Xiang Liu | Chuanjun Ji | Sen Liu | Xipeng Qiu | Guangnan Ye | Hongfeng Chai
Findings of the Association for Computational Linguistics: EMNLP 2024
While current tasks of converting natural language to SQL (NL2SQL) using Foundation Models have shown impressive achievements, adapting these approaches for converting natural language to Graph Query Language (NL2GQL) encounters hurdles due to the distinct nature of GQL compared to SQL, alongside the diverse forms of GQL. Moving away from traditional rule-based and slot-filling methodologies, we introduce a novel approach, R3-NL2GQL, integrating both small and large Foundation Models for ranking, rewriting, and refining tasks. This method leverages the interpretative strengths of smaller models for initial ranking and rewriting stages, while capitalizing on the superior generalization and query generation prowess of larger models for the final transformation of natural language queries into GQL formats. Addressing the scarcity of datasets in this emerging field, we have developed a bilingual dataset, sourced from graph database manuals and selected open-source Knowledge Graphs (KGs). Our evaluation of this methodology on this dataset demonstrates its promising efficacy and robustness.
Search
Fix author
Co-authors
- Guangnan Ye (叶广楠) 6
- Yuhang Zhou (周宇航) 4
- Zeping Li 3
- Xiang Liu 3
- Sen Liu 3
- Yuchen Ni 3
- Yixin Cao 2
- Keyang Chen 2
- Yu He 2
- Xipeng Qiu (邱锡鹏) 2
- Siyu Tian 2
- Zhenfei Yin 2
- Zhangyue Yin 2
- Yiwen Zhao 2
- Guanhua Chen 1
- Yu Chen 1
- Yang Fang 1
- Zhouhong Gu 1
- Weili Han 1
- Haokai Hong 1
- Chuanjun Ji 1
- Zhang Jian 1
- Yixia Li 1
- Hao Shen 1
- Yanning Su 1
- Philip Torr 1
- Guancheng Wan 1
- Hongru Wang 1
- Jie Wu 1
- Zhiheng Xi 1
- Gan Yunhui 1
- Jian Zhang 1