Large-Scale Study of Curiosity-Driven Learning
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Abstract
Reinforcement learning algorithms rely on carefully engineering environment rewards that are extrinsic to the agent. However, annotating each environment with hand-designed, dense rewards is not scalable, motivating the need for developing reward functions that are intrinsic to the agent. Curiosity is a type of intrinsic reward function which uses prediction error as reward signal. In this paper: (a) We perform the first large-scale study of purely curiosity-driven learning, i.e. without any extrinsic rewards, across 54 standard benchmark environments, including the Atari game suite. Our results show surprisingly good performance, and a high degree of alignment between the intrinsic curiosity objective and the…
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1Topics & keywords
Keywords
- Curiosity
- Computer science
- Reinforcement learning
- Benchmark (surveying)
- Scalability
- Suite
- Artificial intelligence
- Code (set theory)
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