Rong Jin
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.
2024
SumCSE: Summary as a transformation for Contrastive Learning
Raghuveer Thirukovalluru | Xiaolan Wang | Jun Chen | Shuyang Li | Jie Lei | Rong Jin | Bhuwan Dhingra
Findings of the Association for Computational Linguistics: NAACL 2024
Raghuveer Thirukovalluru | Xiaolan Wang | Jun Chen | Shuyang Li | Jie Lei | Rong Jin | Bhuwan Dhingra
Findings of the Association for Computational Linguistics: NAACL 2024
Sentence embedding models are typically trained using contrastive learning (CL), either using human annotations directly or by repurposing other annotated datasets. In this work, we explore the recently introduced paradigm of generating CL data using generative language models (LM). In CL for computer vision (CV), compositional transformations (series of operations applied over an image. e.g. cropping + color distortion) which modify the input/image to retain minimal information were shown to be very effective. We show that composition of a ‘Summary’ transformation with diverse paraphrasing/contradicting transformations accomplishes the same and works very well in CL for sentence embeddings. Our final generated dataset (using Vicuna-13B) significantly outperforms the previous best unsupervised method (using ChatGPT) by 1.8 points, and SimCSE, a strong supervised baseline by 0.3 points on the semantic text similarity (STS) benchmark.
UNICORN: A Unified Causal Video-Oriented Language-Modeling Framework for Temporal Video-Language Tasks
Yuanhao Xiong | Yixin Nie | Haotian Liu | Boxin Wang | Jun Chen | Rong Jin | Cho-Jui Hsieh | Lorenzo Torresani | Jie Lei
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
Yuanhao Xiong | Yixin Nie | Haotian Liu | Boxin Wang | Jun Chen | Rong Jin | Cho-Jui Hsieh | Lorenzo Torresani | Jie Lei
Proceedings of the 2024 Conference on Empirical Methods in Natural Language Processing
The great success of large language models has encouraged the development of large multimodal models, with a focus on image-language interaction. Despite promising results in various image-language downstream tasks, it is still challenging and unclear how to extend the capabilities of these models to the more complex video domain, especially when dealing with explicit temporal signals. To address the problem in existing large multimodal models, in this paper we adopt visual instruction tuning to build a unified causal video-oriented language modeling framework, named UNICORN. Specifically, we collect a comprehensive dataset under the instruction-following format, and instruction-tune the model accordingly. Experimental results demonstrate that without customized training objectives and intensive pre-training, UNICORN can achieve comparable or better performance on established temporal video-language tasks including moment retrieval, video paragraph captioning and dense video captioning. Moreover, the instruction-tuned model can be used to automatically annotate internet videos with temporally-aligned captions. Compared to commonly used ASR captions, we show that training on our generated captions improves the performance of video-language models on both zero-shot and fine-tuning settings. Source code can be found at https://github.com/xyh97/UNICORN.
2022
Learning to Generalize to More: Continuous Semantic Augmentation for Neural Machine Translation
Xiangpeng Wei | Heng Yu | Yue Hu | Rongxiang Weng | Weihua Luo | Rong Jin
Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Xiangpeng Wei | Heng Yu | Yue Hu | Rongxiang Weng | Weihua Luo | Rong Jin
Proceedings of the 60th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
The principal task in supervised neural machine translation (NMT) is to learn to generate target sentences conditioned on the source inputs from a set of parallel sentence pairs, and thus produce a model capable of generalizing to unseen instances. However, it is commonly observed that the generalization performance of the model is highly influenced by the amount of parallel data used in training. Although data augmentation is widely used to enrich the training data, conventional methods with discrete manipulations fail to generate diverse and faithful training samples. In this paper, we present a novel data augmentation paradigm termed Continuous Semantic Augmentation (CsaNMT), which augments each training instance with an adjacency semantic region that could cover adequate variants of literal expression under the same meaning. We conduct extensive experiments on both rich-resource and low-resource settings involving various language pairs, including WMT14 English→{German,French}, NIST Chinese→English and multiple low-resource IWSLT translation tasks. The provided empirical evidences show that CsaNMT sets a new level of performance among existing augmentation techniques, improving on the state-of-the-art by a large margin. The core codes are contained in Appendix E.
2007
Automated Vocabulary Acquisition and Interpretation in Multimodal Conversational Systems
Yi Liu | Joyce Chai | Rong Jin
Proceedings of the 45th Annual Meeting of the Association of Computational Linguistics
Yi Liu | Joyce Chai | Rong Jin
Proceedings of the 45th Annual Meeting of the Association of Computational Linguistics
2004
Discourse Structure for Context Question Answering
Joyce Y. Chai | Rong Jin
Proceedings of the Workshop on Pragmatics of Question Answering at HLT-NAACL 2004
Joyce Y. Chai | Rong Jin
Proceedings of the Workshop on Pragmatics of Question Answering at HLT-NAACL 2004
2002
A New Probabilistic Model for Title Generation
Rong Jin | Alexander G. Hauptmann
COLING 2002: The 19th International Conference on Computational Linguistics
Rong Jin | Alexander G. Hauptmann
COLING 2002: The 19th International Conference on Computational Linguistics
2001
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Co-authors
- Joyce Chai 2
- Jun Chen 2
- Alexander G. Hauptmann 2
- Jie Lei 2
- Bhuwan Dhingra 1
- Chaoyou Fu 1
- Cho-Jui Hsieh 1
- Yibo Hu 1
- Yue Hu (胡月) 1
- Feng Li 1
- Shuyang Li 1
- Haotian Liu 1
- Yi Liu 1
- Weihua Luo 1
- Yixin Nie 1
- Raghuveer Thirukovalluru 1
- Lorenzo Torresani 1
- Boxin Wang 1
- Kun Wang 1
- Liang Wang 1
- Xiaolan Wang 1
- Xiangpeng Wei 1
- Qingsong Wen 1
- Rongxiang Weng 1
- Yuanhao Xiong 1
- Heng Yu 1
- Tao Yu 1
- Yifan Zhang 1
- Zhang Zhang 1