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Smart memory replay: Harnessing unlabeled data for efficient class-incremental learning

01.23.26 | Higher Education Press

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Current continual learning methods can utilize labeled data to alleviate catastrophic forgetting effectively. However, obtaining labeled samples can be difficult and tedious as it may require expert knowledge. In many practical application scenarios, labeled and unlabeled samples exist simultaneously, with more unlabeled than labeled samples in streaming data. Unfortunately, existing class-incremental learning methods face limitations in effectively utilizing unlabeled data, thereby impeding their performance in incremental learning scenarios.

To solve the problems, a research team led by Qiang Wang published their new research on 15 December 2025 in Frontiers of Computer Science co-published by Higher Education Press and Springer Nature.

We delve into a more challenging scenario: Semi-Supervised Class-Incremental Learning (SSCIL), aiming to leverage unlabeled data to alleviate catastrophic forgetting in classification tasks. The SSCIL model is restricted to the current task's dataset, comprising a limited number of labeled samples and a substantial amount of unlabeled samples.

In the research, we propose a novel SSCIL framework tailored to classification tasks, based on Fixmatch. This framework facilitates the gradual acquisition of new class knowledge while maintaining a balance between the stability and plasticity on previously learned classes. Apart from it, to regularize the incremental learning process, we propose a novel strategy for measuring the temporal consistency with the unlabeled data memory replay. The extensive experiments on two benchmark datasets are concluded and experimental results showcase notable performance advantages over other competing methods.

Frontiers of Computer Science

10.1007/s11704-025-40828-0

Experimental study

Not applicable

Memory replay with unlabeled data for semi-supervised class-incremental learning via temporal consistency

15-Dec-2025

Keywords

Article Information

Contact Information

Rong Xie
Higher Education Press
xierong@hep.com.cn

Source

How to Cite This Article

APA:
Higher Education Press. (2026, January 23). Smart memory replay: Harnessing unlabeled data for efficient class-incremental learning. Brightsurf News. https://www.brightsurf.com/news/LQ40G9N8/smart-memory-replay-harnessing-unlabeled-data-for-efficient-class-incremental-learning.html
MLA:
"Smart memory replay: Harnessing unlabeled data for efficient class-incremental learning." Brightsurf News, Jan. 23 2026, https://www.brightsurf.com/news/LQ40G9N8/smart-memory-replay-harnessing-unlabeled-data-for-efficient-class-incremental-learning.html.