LGAINENov 23, 2021

Reviewing continual learning from the perspective of human-level intelligence

arXiv:2111.11964v15 citations
Originality Synthesis-oriented
AI Analysis

It offers a broad overview for researchers in AI, but is incremental as it synthesizes existing knowledge without presenting new experimental results.

This paper provides a comprehensive review of continual learning, framing it through the Stability Versus Plasticity Dilemma to address how AI agents can achieve ongoing learning like humans, focusing on information retrospection, prospection, and transfer.

Humans' continual learning (CL) ability is closely related to Stability Versus Plasticity Dilemma that describes how humans achieve ongoing learning capacity and preservation for learned information. The notion of CL has always been present in artificial intelligence (AI) since its births. This paper proposes a comprehensive review of CL. Different from previous reviews that mainly focus on the catastrophic forgetting phenomenon in CL, this paper surveys CL from a more macroscopic perspective based on the Stability Versus Plasticity mechanism. Analogous to biological counterpart, "smart" AI agents are supposed to i) remember previously learned information (information retrospection); ii) infer on new information continuously (information prospection:); iii) transfer useful information (information transfer), to achieve high-level CL. According to the taxonomy, evaluation metrics, algorithms, applications as well as some open issues are then introduced. Our main contributions concern i) rechecking CL from the level of artificial general intelligence; ii) providing a detailed and extensive overview on CL topics; iii) presenting some novel ideas on the potential development of CL.

Foundations

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