Saved in:
Bibliographic Details
Main Authors: Huang, Libo, An, Zhulin, Yang, Chuanguang, Diao, Boyu, Wang, Fei, Zeng, Yan, Hao, Zhifeng, Xu, Yongjun
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.08586
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915291367211008
author Huang, Libo
An, Zhulin
Yang, Chuanguang
Diao, Boyu
Wang, Fei
Zeng, Yan
Hao, Zhifeng
Xu, Yongjun
author_facet Huang, Libo
An, Zhulin
Yang, Chuanguang
Diao, Boyu
Wang, Fei
Zeng, Yan
Hao, Zhifeng
Xu, Yongjun
contents Class Incremental Learning (CIL) based on pre-trained models offers a promising direction for open-world continual learning. Existing methods typically rely on correlation-based strategies, where an image's classification feature is used as a query to retrieve the most related key prompts and select the corresponding value prompts for training. However, these approaches face an inherent limitation: fitting the entire feature space of all tasks with only a few trainable prompts is fundamentally challenging. We propose Predictive Prompting (PrePrompt), a novel CIL framework that circumvents correlation-based limitations by leveraging pre-trained models' natural classification ability to predict task-specific prompts. Specifically, PrePrompt decomposes CIL into a two-stage prediction framework: task-specific prompt prediction followed by label prediction. While theoretically appealing, this framework risks bias toward recent classes due to missing historical data for older classifier calibration. PrePrompt then mitigates this by incorporating feature translation, dynamically balancing stability and plasticity. Experiments across multiple benchmarks demonstrate PrePrompt's superiority over state-of-the-art prompt-based CIL methods. Code available at \href{github.com/libo-huang/preprompt}{github.com/libo-huang/preprompt}.
format Preprint
id arxiv_https___arxiv_org_abs_2505_08586
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PrePrompt: Predictive prompting for class incremental learning
Huang, Libo
An, Zhulin
Yang, Chuanguang
Diao, Boyu
Wang, Fei
Zeng, Yan
Hao, Zhifeng
Xu, Yongjun
Computer Vision and Pattern Recognition
I.5.4
Class Incremental Learning (CIL) based on pre-trained models offers a promising direction for open-world continual learning. Existing methods typically rely on correlation-based strategies, where an image's classification feature is used as a query to retrieve the most related key prompts and select the corresponding value prompts for training. However, these approaches face an inherent limitation: fitting the entire feature space of all tasks with only a few trainable prompts is fundamentally challenging. We propose Predictive Prompting (PrePrompt), a novel CIL framework that circumvents correlation-based limitations by leveraging pre-trained models' natural classification ability to predict task-specific prompts. Specifically, PrePrompt decomposes CIL into a two-stage prediction framework: task-specific prompt prediction followed by label prediction. While theoretically appealing, this framework risks bias toward recent classes due to missing historical data for older classifier calibration. PrePrompt then mitigates this by incorporating feature translation, dynamically balancing stability and plasticity. Experiments across multiple benchmarks demonstrate PrePrompt's superiority over state-of-the-art prompt-based CIL methods. Code available at \href{github.com/libo-huang/preprompt}{github.com/libo-huang/preprompt}.
title PrePrompt: Predictive prompting for class incremental learning
topic Computer Vision and Pattern Recognition
I.5.4
url https://arxiv.org/abs/2505.08586