Feng Li
2026
Scaling Law for Multimodal Large Language Model Supervised Fine-Tuning
YiFan Zhang | Tao Yu | Feng Li | Chaoyou Fu | Yibo Hu | Kun Wang | Qingsong Wen | Zhang Zhang | Liang Wang | Rong Jin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
YiFan Zhang | Tao Yu | Feng Li | Chaoyou Fu | Yibo Hu | Kun Wang | Qingsong Wen | Zhang Zhang | Liang Wang | Rong Jin
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
The supervised fine-tuning (SFT) stage is crucial for multimodal large language models (MLLMs), yet a comprehensive scaling law to guide the optimal model-data configuration remains lacking. In this paper, we make an initial attempt to address this gap. First, we theoretically demonstrate that directly computing the optimal computation frontier for MLLM-SFT, as we can for traditional LLMs, is a challenging task. This complexity arises because MLLM-SFT is influenced by a broader range of factors, including model size, LLM pre-training tokens, and MLLM SFT tokens. To tackle this issue, we propose two scaling laws based on LLM paradigms: one applicable when training data volumes are well defined by researchers, and another for cases where models are sourced from open communities with unknown training data. Through theoretical modeling and approximations, we provide researchers with valuable recommendations for optimal resource allocation. Furthermore, we establish a strong correlation ( R2 = 0.98) between training loss and downstream performance, enabling accurate performance estimation without the need for exhaustive benchmarking. To validate our scaling laws, we construct a testbed of 60 models ranging from 50 million to 8 billion parameters, totaling 1,560 checkpoints. Each checkpoint is evaluated on than 10 MLLM benchmarks, ensuring robust fitting of our formulations.
2025
CLEAR: A Clinically Grounded Tabular Framework for Radiology Report Evaluation
Yuyang Jiang | Chacha Chen | Shengyuan Wang | Feng Li | Zecong Tang | Benjamin M. Mervak | Lydia Chelala | Christopher M Straus | Reve Chahine | Samuel G. Armato Iii | Chenhao Tan
Findings of the Association for Computational Linguistics: EMNLP 2025
Yuyang Jiang | Chacha Chen | Shengyuan Wang | Feng Li | Zecong Tang | Benjamin M. Mervak | Lydia Chelala | Christopher M Straus | Reve Chahine | Samuel G. Armato Iii | Chenhao Tan
Findings of the Association for Computational Linguistics: EMNLP 2025
Existing metrics often lack the granularity and interpretability to capture nuanced clinical differences between candidate and ground-truth radiology reports, resulting in suboptimal evaluation. We introduce a **Cl**inically grounded tabular framework with **E**xpert-curated labels and **A**ttribute-level comparison for **R**adiology report evaluation (**CLEAR**). CLEAR not only examines whether a report can accurately identify the presence or absence of medical conditions, but it also assesses whether the report can precisely describe each positively identified condition across five key attributes: first occurrence, change, severity, descriptive location, and recommendation. Compared with prior works, CLEAR’s multi-dimensional, attribute-level outputs enable a more comprehensive and clinically interpretable evaluation of report quality. Additionally, to measure the clinical alignment of CLEAR, we collaborated with five board-certified radiologists to develop **CLEAR-Bench**, a dataset of 100 chest radiograph reports from MIMIC-CXR, annotated across 6 curated attributes and 13 CheXpert conditions. Our experiments demonstrated that CLEAR achieves high accuracy in extracting clinical attributes and provides automated metrics that are strongly aligned with clinical judgment.
2022
Toward the Limitation of Code-Switching in Cross-Lingual Transfer
Yukun Feng | Feng Li | Philipp Koehn
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing
Yukun Feng | Feng Li | Philipp Koehn
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing
Multilingual pretrained models have shown strong cross-lingual transfer ability. Some works used code-switching sentences, which consist of tokens from multiple languages, to enhance the cross-lingual representation further, and have shown success in many zero-shot cross-lingual tasks. However, code-switched tokens are likely to cause grammatical incoherence in newly substituted sentences, and negatively affect the performance on token-sensitive tasks, such as Part-of-Speech (POS) tagging and Named-Entity-Recognition (NER). This paper mitigates the limitation of the code-switching method by not only making the token replacement but considering the similarity between the context and the switched tokens so that the newly substituted sentences are grammatically consistent during both training and inference. We conduct experiments on cross-lingual POS and NER over 30+ languages, and demonstrate the effectiveness of our method by outperforming the mBERT by 0.95 and original code-switching method by 1.67 on F1 scores.
A Token-pair Framework for Information Extraction from Dialog Transcripts in SereTOD Challenge
Chenyue Wang | Xiangxing Kong | Mengzuo Huang | Feng Li | Jian Xing | Weidong Zhang | Wuhe Zou
Proceedings of the Towards Semi-Supervised and Reinforced Task-Oriented Dialog Systems (SereTOD)
Chenyue Wang | Xiangxing Kong | Mengzuo Huang | Feng Li | Jian Xing | Weidong Zhang | Wuhe Zou
Proceedings of the Towards Semi-Supervised and Reinforced Task-Oriented Dialog Systems (SereTOD)
This paper describes our solution for Sere- TOD Challenge Track 1: Information extraction from dialog transcripts. We propose a token-pair framework to simultaneously identify entity and value mentions and link them into corresponding triples. As entity mentions are usually coreferent, we adopt a baseline model for coreference resolution. We exploit both annotated transcripts and unsupervised dialogs for training. With model ensemble and post-processing strategies, our system significantly outperforms the baseline solution and ranks first in triple f1 and third in entity f1.
Learn To Remember: Transformer with Recurrent Memory for Document-Level Machine Translation
Yukun Feng | Feng Li | Ziang Song | Boyuan Zheng | Philipp Koehn
Findings of the Association for Computational Linguistics: NAACL 2022
Yukun Feng | Feng Li | Ziang Song | Boyuan Zheng | Philipp Koehn
Findings of the Association for Computational Linguistics: NAACL 2022
The Transformer architecture has led to significant gains in machine translation. However, most studies focus on only sentence-level translation without considering the context dependency within documents, leading to the inadequacy of document-level coherence. Some recent research tried to mitigate this issue by introducing an additional context encoder or translating with multiple sentences or even the entire document. Such methods may lose the information on the target side or have an increasing computational complexity as documents get longer. To address such problems, we introduce a recurrent memory unit to the vanilla Transformer, which supports the information exchange between the sentence and previous context. The memory unit is recurrently updated by acquiring information from sentences, and passing the aggregated knowledge back to subsequent sentence states. We follow a two-stage training strategy, in which the model is first trained at the sentence level and then finetuned for document-level translation. We conduct experiments on three popular datasets for document-level machine translation and our model has an average improvement of 0.91 s-BLEU over the sentence-level baseline. We also achieve state-of-the-art results on TED and News, outperforming the previous work by 0.36 s-BLEU and 1.49 d-BLEU on average.
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Co-authors
- Yukun Feng 2
- Philipp Koehn 2
- Reve Chahine 1
- Lydia Chelala 1
- Chacha Chen 1
- Chaoyou Fu 1
- Yibo Hu 1
- Mengzuo Huang 1
- Samuel G. Armato Iii 1
- Yuyang Jiang 1
- Rong Jin 1
- Xiangxing Kong 1
- Benjamin M. Mervak 1
- Ziang Song 1
- Christopher M Straus 1
- Chenhao Tan 1
- Zecong Tang 1
- Shengyuan Wang 1
- Chenyue Wang 1
- Kun Wang 1
- Liang Wang 1
- Qingsong Wen 1
- Jian Xing 1
- Tao Yu 1
- Weidong Zhang 1
- Yifan Zhang 1
- Zhang Zhang 1
- Boyuan Zheng 1
- Wuhe Zou 1