CL-BPUWM: continuous learning with Bayesian parameter updating and weight memory
Yao He,
Jing Yang,
Shaobo Li
et al.
Abstract:Catastrophic forgetting in neural networks is a common problem, in which neural networks lose information from previous tasks after training on new tasks. Although adopting a regularization method that preferentially retains the parameters important to the previous task to avoid catastrophic forgetting has a positive effect; existing regularization methods cause the gradient to be near zero because the loss is at the local minimum. To solve this problem, we propose a new continuous learning method with Bayesia… Show more
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