Autonomous development and learning in artificial intelligence and robotics: Scaling up deep learning to human--like learning
Pierre-Yves Oudeyer (Flowers)

TL;DR
This paper discusses how integrating mechanisms like curiosity, social learning, and embodiment with deep learning can enable artificial systems to develop and learn autonomously in a manner similar to humans, emphasizing the importance of open-ended, incremental, and embodied learning.
Contribution
The paper highlights the importance of autonomous development mechanisms such as intrinsic motivation and social interaction, proposing their integration with deep learning to bridge the gap with human-like learning.
Findings
Deep learning systems require task-specific objectives and offline training.
Humans learn through autonomous, incremental, and embodied processes.
Integrating curiosity and social learning can enhance AI's autonomous development.
Abstract
Autonomous lifelong development and learning is a fundamental capability of humans, differentiating them from current deep learning systems. However, other branches of artificial intelligence have designed crucial ingredients towards autonomous learning: curiosity and intrinsic motivation, social learning and natural interaction with peers, and embodiment. These mechanisms guide exploration and autonomous choice of goals, and integrating them with deep learning opens stimulating perspectives. Deep learning (DL) approaches made great advances in artificial intelligence, but are still far away from human learning. As argued convincingly by Lake et al., differences include human capabilities to learn causal models of the world from very little data, leveraging compositional representations and priors like intuitive physics and psychology. However, there are other fundamental differences…
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