Resolving Task Confusion in Dynamic Expansion Architectures for Class Incremental Learning

29 Dec 2022  ยท  Bingchen Huang, Zhineng Chen, Peng Zhou, Jiayin Chen, Zuxuan Wu ยท

The dynamic expansion architecture is becoming popular in class incremental learning, mainly due to its advantages in alleviating catastrophic forgetting. However, task confusion is not well assessed within this framework, e.g., the discrepancy between classes of different tasks is not well learned (i.e., inter-task confusion, ITC), and certain priority is still given to the latest class batch (i.e., old-new confusion, ONC). We empirically validate the side effects of the two types of confusion. Meanwhile, a novel solution called Task Correlated Incremental Learning (TCIL) is proposed to encourage discriminative and fair feature utilization across tasks. TCIL performs a multi-level knowledge distillation to propagate knowledge learned from old tasks to the new one. It establishes information flow paths at both feature and logit levels, enabling the learning to be aware of old classes. Besides, attention mechanism and classifier re-scoring are applied to generate more fair classification scores. We conduct extensive experiments on CIFAR100 and ImageNet100 datasets. The results demonstrate that TCIL consistently achieves state-of-the-art accuracy. It mitigates both ITC and ONC, while showing advantages in battle with catastrophic forgetting even no rehearsal memory is reserved.

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Datasets


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Incremental Learning CIFAR-100 - 50 classes + 10 steps of 5 classes TCIL-Lite Average Incremental Accuracy 73.50 # 2
Incremental Learning CIFAR-100 - 50 classes + 10 steps of 5 classes TCIL Average Incremental Accuracy 73.72 # 1
Incremental Learning CIFAR-100 - 50 classes + 2 steps of 25 classes TCIL Average Incremental Accuracy 76.42 # 1
Incremental Learning CIFAR-100 - 50 classes + 2 steps of 25 classes TCIL-Lite Average Incremental Accuracy 74.95 # 2
Incremental Learning CIFAR-100 - 50 classes + 5 steps of 10 classes TCIL Average Incremental Accuracy 74.88 # 1
Incremental Learning CIFAR-100 - 50 classes + 5 steps of 10 classes TCIL-Lite Average Incremental Accuracy 74.30 # 2
Incremental Learning CIFAR100-B0(10steps of 10 classes) TCIL-Lite Average Incremental Accuracy 76.74 # 2
Incremental Learning CIFAR100-B0(10steps of 10 classes) TCIL Average Incremental Accuracy 77.30 # 1
Incremental Learning CIFAR100B020Step(5ClassesPerStep) TCIL-Lite Average Incremental Accuracy 75.47 # 1
Incremental Learning CIFAR100B020Step(5ClassesPerStep) TCIL Average Incremental Accuracy 75.11 # 2
Incremental Learning CIFAR-100-B0(5steps of 20 classes) TCIL Average Incremental Accuracy 77.72 # 1
Incremental Learning CIFAR-100-B0(5steps of 20 classes) TCIL-Lite Average Incremental Accuracy 76.96 # 2
Incremental Learning ImageNet100 - 10 steps TCIL Average Incremental Accuracy 77.66 # 4
Final Accuracy 67.34 # 2
Average Incremental Accuracy Top-5 94.17 # 1
Final Accuracy Top-5 88.84 # 1
# M Params 116.54 # 8
Incremental Learning ImageNet100 - 10 steps TCIL-Lite Average Incremental Accuracy 77.50 # 5
Final Accuracy 67.30 # 3
Average Incremental Accuracy Top-5 93.60 # 2
Final Accuracy Top-5 87.94 # 4
# M Params 26.36 # 6

Methods