Abstractions of General Reinforcement Learning
Sultan J. Majeed

TL;DR
This paper explores the concept of abstractions in artificial general intelligence (AGI), emphasizing their role in enabling efficient planning across diverse domains with optimality guarantees.
Contribution
It investigates the existence and properties of task and action abstractions in AGI that facilitate effective planning without extensive retraining.
Findings
Abstractions enable compact representations for planning.
Task and action abstractions can be achieved with optimality guarantees.
These abstractions are crucial for AGI to perform across varied, complex domains.
Abstract
The field of artificial intelligence (AI) is devoted to the creation of artificial decision-makers that can perform (at least) on par with the human counterparts on a domain of interest. Unlike the agents in traditional AI, the agents in artificial general intelligence (AGI) are required to replicate human intelligence in almost every domain of interest. Moreover, an AGI agent should be able to achieve this without (virtually any) further changes, retraining, or fine-tuning of the parameters. The real world is non-stationary, non-ergodic, and non-Markovian: we, humans, can neither revisit our past nor are the most recent observations sufficient statistics. Yet, we excel at a variety of complex tasks. Many of these tasks require longterm planning. We can associate this success to our natural faculty to abstract away task-irrelevant information from our overwhelming sensory experience. We…
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Taxonomy
TopicsComputability, Logic, AI Algorithms
