LGNov 12, 2025

Compact Memory for Continual Logistic Regression

arXiv:2511.09167v11 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses the problem of catastrophic forgetting for continual learning practitioners, offering a novel approach that is incremental but shows strong gains in shallow models.

The paper tackles catastrophic forgetting in continual learning by developing a compact memory method for logistic regression, achieving 74% accuracy on Split-ImageNet with 2% memory size, closing the gap to batch training accuracy of 77.6%.

Despite recent progress, continual learning still does not match the performance of batch training. To avoid catastrophic forgetting, we need to build compact memory of essential past knowledge, but no clear solution has yet emerged, even for shallow neural networks with just one or two layers. In this paper, we present a new method to build compact memory for logistic regression. Our method is based on a result by Khan and Swaroop [2021] who show the existence of optimal memory for such models. We formulate the search for the optimal memory as Hessian-matching and propose a probabilistic PCA method to estimate them. Our approach can drastically improve accuracy compared to Experience Replay. For instance, on Split-ImageNet, we get 60% accuracy compared to 30% obtained by replay with memory-size equivalent to 0.3% of the data size. Increasing the memory size to 2% further boosts the accuracy to 74%, closing the gap to the batch accuracy of 77.6% on this task. Our work opens a new direction for building compact memory that can also be useful in the future for continual deep learning.

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