2021
DOI: 10.48550/arxiv.2110.12187
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AFEC: Active Forgetting of Negative Transfer in Continual Learning

Abstract: Continual learning aims to learn a sequence of tasks from dynamic data distributions. Without accessing to the old training samples, knowledge transfer from the old tasks to each new task is difficult to determine, which might be either positive or negative. If the old knowledge interferes with the learning of a new task, i.e., the forward knowledge transfer is negative, then precisely remembering the old tasks will further aggravate the interference, thus decreasing the performance of continual learning. By c… Show more

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