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by nielsr HF Staff - opened
README.md
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license: mit
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---
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license: mit
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pipeline_tag: image-classification
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tags:
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- continual-learning
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- meta-learning
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- computer-vision
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---
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# MePo: Meta Post-Refinement for Rehearsal-Free General Continual Learning
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This repository contains the model checkpoints and artifacts for **MePo** (**Me**ta **Po**st-Refinement), as presented in the paper [MePo: Meta Post-Refinement for Rehearsal-Free General Continual Learning](https://huggingface.co/papers/2602.07940).
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## Introduction
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**MePo** is an innovative approach for Pretrained Models (PTMs)-based General Continual Learning (GCL). It addresses the challenges of online datastreams and blurry task boundaries by refining the pretrained backbone before downstream continual learning. Inspired by meta-plasticity and reconstructive memory in neuroscience, MePo adapts representation learning to facilitate rapid adaptation to evolving environments in a rehearsal-free manner.
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## Resources
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- **Paper:** [MePo: Meta Post-Refinement for Rehearsal-Free General Continual Learning](https://huggingface.co/papers/2602.07940)
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- **GitHub Repository:** [SunGL001/MePo](https://github.com/SunGL001/MePo)
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## Methodology Overview
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MePo improves GCL performance through three core components:
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1. **Meta-Learning for Representation Learning**: A bi-level meta-learning paradigm that constructs pseudo task sequences from pretraining data to refine the backbone.
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2. **Meta Covariance Initialization**: Initializes a meta covariance matrix as the reference geometry of the pretrained representation space, enabling the exploitation of second-order statistics.
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3. **Feature Alignment**: Ensures robust output alignment during downstream tasks.
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The method serves as a plug-in strategy that achieves significant gains across various benchmarks such as CIFAR-100, ImageNet-R, and CUB-200.
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## Citation
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If you find this work useful for your research, please cite:
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```bibtex
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@misc{sun2026mepometapostrefinementrehearsalfree,
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title={MePo: Meta Post-Refinement for Rehearsal-Free General Continual Learnin},
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author={Guanglong Sun and Hongwei Yan and Liyuan Wang and Zhiqi Kang and Shuang Cui and Hang Su and Jun Zhu and Yi Zhong},
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year={2026},
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eprint={2602.07940},
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archivePrefix={arXiv},
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primaryClass={cs.AI},
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url={https://arxiv.org/abs/2602.07940},
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}
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```
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