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Towards Understanding Continual Factual Knowledge Acquisition of Language Models: From Theory to Algorithm

About

Continual Pre-Training (CPT) is essential for enabling Language Models (LMs) to integrate new knowledge without erasing old. While classical CPT techniques like data replay have become the standard paradigm, the mechanisms underlying how LMs acquire and retain facts over time, termed as continual Factual Knowledge Acquisition (cFKA), remain unclear. In this work, we present a theoretical framework that characterizes the training dynamics of cFKA using a single-layer Transformer, offering a unified explanation for the behavior of representative CPT methods. Our analysis reveals that regularization-based methods merely adjust the convergence rate of parameters without altering the inherent forgetting tendency, whereas data replay methods succeed in shifting convergence dynamics and stabilizing pretrained knowledge. Building on these insights, we propose a novel generative data replay approach, called \textbf{S}electing \textbf{T}okens via attenti\textbf{O}n \textbf{C}ontribution~(STOC), which identifies influential factual snippets to guide replay data generation. Extensive experiments on both synthetic and real-world datasets validate our findings and demonstrate that STOC effectively enhances cFKA by mitigating catastrophic forgetting.

Haoyu Wang, Yifan Shang, Zhongxiang Sun, Weijie Yu, Xiao Zhang, Jun Xu• 2026

Related benchmarks

TaskDatasetResultRank
Knowledge EvaluationMMLU
MMLU Accuracy42.49
64
Continual Factual Knowledge AcquisitionWiki Bio (Original)
Averaged Soft Token Accuracy35.57
10
Continual Factual Knowledge AcquisitionWiki Recent (Original)
Averaged Soft Token Accuracy21.4
10
Continual Factual Knowledge AcquisitionWiki Recent (Continual)
Averaged Soft Token Accuracy28.75
10
Continual Factual Knowledge AcquisitionZSRE (Original)
Averaged Soft Token Accuracy37.47
10
Continual Factual Knowledge AcquisitionZSRE Continual
Averaged Soft Token Accuracy62.59
10
Continual Factual Knowledge AcquisitionWikiBio Continual
Soft Token Accuracy35.46
10
Knowledge EvaluationMMLU (Continual)
Accuracy32.03
6
Knowledge EvaluationMMLU-Redux 2.0 (Original)
Accuracy42.03
6
Knowledge EvaluationMMLU-Redux 2.0 (Continual)
Accuracy33.49
6
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