论文标题

lleda-终身自我监督领域的适应

LLEDA -- Lifelong Self-Supervised Domain Adaptation

论文作者

Thota, Mamatha, Yi, Dewei, Leontidis, Georgios

论文摘要

人类和动物有能力在他们的一生中不断学习新信息而不会失去先前获得的知识。但是,由于新的信息与旧知识相冲突,导致灾难性的遗忘,因此人工神经网络遇到了困难。补充学习系统(CLS)理论表明,海马和新皮层系统之间的相互作用可以在哺乳动物大脑中长期有效学习,记忆重播有助于这两个系统之间的相互作用,以减少遗忘。拟议的终身自我监督的域适应性(LLEDA)框架从CLS理论中汲取了灵感,并模仿了两个网络之间的相互作用:受海马启发的DA网络,该网络迅速适应数据分布的变化和由NeoCortex启发的SSL网络,这些NeoCortex逐渐学习了域名域,该网络逐渐学习了域名 - AgagNostCognostic centrastic常规代表。 LLEDA的潜在重放技术通过重新激活和重播过去的内存潜在表示,以稳定长期的概括和保留而不会干扰先前学习的信息,从而促进了这两个网络之间的通信。广泛的实验表明,所提出的方法的表现优于其他几种导致长期适应性的方法,同时不容易转移到新领域时灾难性遗忘。

Humans and animals have the ability to continuously learn new information over their lifetime without losing previously acquired knowledge. However, artificial neural networks struggle with this due to new information conflicting with old knowledge, resulting in catastrophic forgetting. The complementary learning systems (CLS) theory suggests that the interplay between hippocampus and neocortex systems enables long-term and efficient learning in the mammalian brain, with memory replay facilitating the interaction between these two systems to reduce forgetting. The proposed Lifelong Self-Supervised Domain Adaptation (LLEDA) framework draws inspiration from the CLS theory and mimics the interaction between two networks: a DA network inspired by the hippocampus that quickly adjusts to changes in data distribution and an SSL network inspired by the neocortex that gradually learns domain-agnostic general representations. LLEDA's latent replay technique facilitates communication between these two networks by reactivating and replaying the past memory latent representations to stabilise long-term generalisation and retention without interfering with the previously learned information. Extensive experiments demonstrate that the proposed method outperforms several other methods resulting in a long-term adaptation while being less prone to catastrophic forgetting when transferred to new domains.

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