Novel Hybrid Continual Learning Algorithm Counters Agent Forgetfulness

Novel Hybrid Continual Learning Algorithm Counters Agent Forgetfulness

Adversarial Continual Learning (ACL) aims to enable the persistent explicit or implicit replay of experiences by storing original samples.

3 mentions: @Synced_Global@Synced_Global
Date: 2020/03/25 17:40

Referring Tweets

@Synced_Global The ACL method learns the task-specific or private latent space for each task and a task-invariant or shared feature space for all tasks to enhance better knowledge transfer as well as better recall of previous tasks. #machinelearning t.co/vfZzhZSaIB
@Synced_Global .@facebookai and @UCBerkeley recently introduced a novel hybrid continual learning algorithm, Adversarial Continual Learning, aiming to enable the persistent explicit or implicit replay of experiences by storing original samples. #MachineLearning #AI t.co/vfZzi09M7b

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