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Vision Superalignment: Weak-to-Strong Generalization for Vision Foundation Models

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Recent advancements in large language models have sparked interest in their extraordinary and near-superhuman capabilities, leading researchers to explore methods for evaluating and optimizing these abilities, which is called superalignment. In this context, our paper delves into the realm of vision foundation models, focusing on the concept of weak-to-strong generalization, which involves using a weaker model to supervise a stronger one, aiming to enhance the latter's capabilities beyond the former's limits. We introduce a novel and adaptively adjustable loss function for weak-to-strong supervision. Our comprehensive experiments span various scenarios, including few-shot learning, transfer learning, noisy label learning, and common knowledge distillation settings. The results are striking: our approach not only exceeds the performance benchmarks set by strong-to-strong generalization but also surpasses the outcomes of fine-tuning strong models with whole datasets. This compelling evidence underscores the significant potential of weak-to-strong generalization, showcasing its capability to substantially elevate the performance of vision foundation models. The code is available at https://github.com/ggjy/vision_weak_to_strong.

Jianyuan Guo, Hanting Chen, Chengcheng Wang, Kai Han, Chang Xu, Yunhe Wang• 2024

Related benchmarks

TaskDatasetResultRank
Commonsense ReasoningCommonsenseQA Single Client
Accuracy83.46
6
Dialogue SummarizationSAMSum Multiple Client (test)
ROUGE-1 (Client 1)48.51
6
Dialogue SummarizationSAMSum Single Client
ROUGE-149.85
6
Mathematical ReasoningGSM8K Single Client
Accuracy72.71
6
Mathematical ReasoningAQuA-RAT Multiple Client (test)
Client 1 Accuracy54.56
6
Reading ComprehensionDROP Single Client
Accuracy (DROP Single Client)51.87
6
Commonsense ReasoningCommonsenseQA Multiple Client (test)
Client 1 Accuracy78.57
6
Dialogue SummarizationDialogSum Single Client
ROUGE-146.68
6
Mathematical ReasoningAQuA-RAT Single Client
Accuracy0.4724
6
Reading ComprehensionDROP Multiple Client (test)
Client 1 Accuracy56.85
6
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