General intelligence requires rethinking exploration

Author:

Jiang Minqi1,Rocktäschel Tim1,Grefenstette Edward1ORCID

Affiliation:

1. AI Centre, Department of Computer Science, University College London, London, UK

Abstract

We are at the cusp of a transition from ‘learning from data’ to ‘learning what data to learn from’ as a central focus of artificial intelligence (AI) research. While the first-order learning problem is not completely solved, large models under unified architectures, such as transformers, have shifted the learning bottleneck from how to effectively train models to how to effectively acquire and use task-relevant data. This problem, which we frame asexploration, is a universal aspect of learning in open-ended domains like the real world. Although the study of exploration in AI is largely limited to the field of reinforcement learning, we argue that exploration is essential to all learning systems, including supervised learning. We propose the problem ofgeneralized explorationto conceptually unify exploration-driven learning between supervised learning and reinforcement learning, allowing us to highlight key similarities across learning settings and open research challenges. Importantly, generalized exploration is a necessary objective for maintaining open-ended learning processes, which in continually learning to discover and solve new problems, provides a promising path to more general intelligence.

Publisher

The Royal Society

Subject

Multidisciplinary

Reference192 articles.

1. Search strategies of foraging animals;O’Brien WJ;Am. Sci.,1990

2. Gordon DM. 1999 Ants at work: how an insect society is organized. New York, NY: Simon and Schuster.

3. Spatial representation of shelter locations in meerkats, Suricata suricatta

4. The origins of intelligence in children.

5. The construction of reality in the child.

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