Litcius/Paper detail

Contextual Transformation Networks for Online Continual Learning

Quang Pham, Chenghao Liu, Doyen Sahoo, Steven C. H. Hoi

2021Singapore Management University Institutional Knowledge (InK) (Singapore Management University)20 citationsOpen Access PDF

Abstract

Continual learning methods with fixed architectures rely on a single network to learn models that can perform well on all tasks. As a result, they often only accommodate common features of those tasks but neglect each task's specific features. On the other hand, dynamic architecture methods can have a separate network for each task, but they are too expensive to train and not scalable in practice, especially in online settings. To address this problem, we propose a novel online continual learning method named ``Contextual Transformation Networks” (CTN) to efficiently model the \emph{task-specific features} while enjoying neglectable complexity overhead compared to other fixed architecture methods. Moreover, inspired by the Complementary Learning Systems (CLS) theory, we propose a novel dual memory design and an objective to train CTN that can address both catastrophic forgetting and knowledge transfer simultaneously. Our extensive experiments show that CTN is competitive with a large scale dynamic architecture network and consistently outperforms other fixed architecture methods under the same standard backbone. We will release our implementation upon acceptance.

Topics & Concepts

Computer scienceScalabilityForgettingTask (project management)Overhead (engineering)Artificial intelligenceArchitectureNetwork architectureDistributed computingTransfer of learningTransformation (genetics)Machine learningDeep learningComputer networkOperating systemGeneDatabasePhilosophyLinguisticsEconomicsManagementVisual artsArtBiochemistryChemistryDomain Adaptation and Few-Shot LearningMultimodal Machine Learning ApplicationsCovalent Organic Framework Applications