Hanhua Hong
2026
HiRAS: A Hierarchical Multi-Agent Framework for Paper-to-Code Generation and Execution
Hanhua Hong | Yizhi LI | Jiaoyan Chen | Sophia Ananiadou | Xiaoli Li | Jung-jae Kim | Chenghua Lin
Findings of the Association for Computational Linguistics: ACL 2026
Hanhua Hong | Yizhi LI | Jiaoyan Chen | Sophia Ananiadou | Xiaoli Li | Jung-jae Kim | Chenghua Lin
Findings of the Association for Computational Linguistics: ACL 2026
Recent advances in large language models have highlighted their potential to automate computational research, particularly reproducing experimental results. However, existing approaches still use fixed sequential agent pipelines with weak global coordination, which limits their robustness and overall performance. In this work, we propose Hierarchical Research Agent System (HiRAS), a hierarchical multi-agent framework for end-to-end paper reproduction that employs supervisory manager agents to coordinate specialised agents across fine-grained stages. We also identify limitations in the reference-free evaluation of the Paper2Code benchmark and introduce Paper2Code-Extra (P2C-Ex), a refined protocol that incorporates repository-level information and better aligns with the original reference-based metric. We conduct extensive evaluation, validating the effectiveness and robustness of our proposed methods, and observing improvements, including >10% relative performance gain above the previous state-of-the-art using open-source backbone models and significantly reduced hallucination in the evaluation. All code and data will be made publicly available.
2024
Leveraging Estimated Transferability Over Human Intuition for Model Selection in Text Ranking
Jun Bai | Zhuofan Chen | Zhenzi Li | Hanhua Hong | Jianfei Zhang | Chen Li | Chenghua Lin | Wenge Rong
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Jun Bai | Zhuofan Chen | Zhenzi Li | Hanhua Hong | Jianfei Zhang | Chen Li | Chenghua Lin | Wenge Rong
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Text ranking has witnessed significant advancements, attributed to the utilization of dual-encoder enhanced by Pre-trained Language Models (PLMs). Given the proliferation of available PLMs, selecting the most effective one for a given dataset has become a non-trivial challenge. As a promising alternative to human intuition and brute-force fine-tuning, Transferability Estimation (TE) has emerged as an effective approach to model selection. However, current TE methods are primarily designed for classification tasks, and their estimated transferability may not align well with the objectives of text ranking. To address this challenge, we propose to compute the expected rank as transferability, explicitly reflecting the model’s ranking capability. Furthermore, to mitigate anisotropy and incorporate training dynamics, we adaptively scale isotropic sentence embeddings to yield an accurate expected rank score. Our resulting method, Adaptive Ranking Transferability (AiRTran), can effectively capture subtle differences between models. On challenging model selection scenarios across various text ranking datasets, it demonstrates significant improvements over previous classification-oriented TE methods, human intuition, and ChatGPT with minor time consumption.
2023
How to Determine the Most Powerful Pre-trained Language Model without Brute Force Fine-tuning? An Empirical Survey
Jun Bai | Xiaofeng Zhang | Chen Li | Hanhua Hong | Xi Xu | Chenghua Lin | Wenge Rong
Findings of the Association for Computational Linguistics: EMNLP 2023
Jun Bai | Xiaofeng Zhang | Chen Li | Hanhua Hong | Xi Xu | Chenghua Lin | Wenge Rong
Findings of the Association for Computational Linguistics: EMNLP 2023
Transferability estimation has been attached to great attention in the computer vision fields. Researchers try to estimate with low computational cost the performance of a model when transferred from a source task to a given target task. Considering the effectiveness of such estimations, the communities of natural language processing also began to study similar problems for the selection of pre-trained language models. However, there is a lack of a comprehensive comparison between these estimation methods yet. Also, the differences between vision and language scenarios make it doubtful whether previous conclusions can be established across fields. In this paper, we first conduct a thorough survey of existing transferability estimation methods being able to find the most suitable model, then we conduct a detailed empirical study for the surveyed methods based on the GLUE benchmark. From qualitative and quantitative analyses, we demonstrate the strengths and weaknesses of existing methods and show that H-Score generally performs well with superiorities in effectiveness and efficiency. We also outline the difficulties of consideration of training details, applicability to text generation, and consistency to certain metrics which shed light on future directions.