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Hidden Failure Modes of Gradient Modification under Adam in Continual Learning, and Adaptive Decoupled Moment Routing as a Repair

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Many continual-learning methods modify gradients upstream (e.g., projection, penalty rescaling, replay mixing) while treating Adam as a neutral backend. We show this composition has a hidden failure mode. In a high-overlap, non-adaptive 8-domain continual LM, all shared-routing projection baselines collapse close to vanilla forgetting (12.5--12.8 vs. 13.2). A 0.5% replay buffer is the strongest shared alternative but still reaches 11.6, while fixed-strength decoupling falls below vanilla at 14.1. Only adaptive decoupled routing remains stable at 9.4, improving over vanilla by 3.8 units. On a 16-domain stream, its gain over the strongest shared-routing projection baseline grows to 4.5--4.8 units. The failure is largely invisible on clean benchmarks. We explain this effect through Adam's second-moment pathway: in the tested regime, projection induces a 1/(1-alpha) inflation of the old-direction effective learning rate, matching measurements within 8% across eight alpha values. The same conflict appears with penalty methods, replay mixing, and at 7B scale under LoRA. Our fix routes the modified gradient only to the first moment while preserving magnitude-faithful second-moment statistics, with overlap-aware adaptive strength. This simple change is the only tested configuration that consistently avoids collapse across methods, optimizers, and scale.

Yuelin Hu, Zhenbo Yu, Zhengxue Cheng, Wei Liu, Li Song• 2026

Related benchmarks

TaskDatasetResultRank
Continual Language ModelingHOPE 8-domain, clean-regime 256M (3 seeds)
Avg PPL35.8
19
Continual LearningTRACE Llama2-7B-chat
Average Accuracy55.2
9
Continual LearningHOPE 8-domain (test)
Forgetting9.1
9
Task-Incremental LearningSplit CIFAR-100 20 tasks
Average Accuracy74.8
7
Task-Incremental LearningSplit-ImageNet 10 tasks
Avg Acc64.7
7
Continual Language ModelingHOPE 8-domain, high-overlap non-adaptive stream 256M
Forgetting9.4
6
Continual Learning8-domain NLP benchmark--
5
Continual Language ModelingHOPE 16-domain stream 256M (long continual sequence)
Forgetting10.2
4
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