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Optimizing Attention and Cognitive Control Costs Using Temporally Layered Architectures. | LitMetric

Optimizing Attention and Cognitive Control Costs Using Temporally Layered Architectures.

Neural Comput

Manning College of Information and Computer Science, University of Massachusetts, Amherst, MA 01003, U.S.A.

Published: November 2024

AI Article Synopsis

  • Current reinforcement learning frameworks prioritize performance over efficiency, often leading to high computational costs.
  • The proposed decision-bounded Markov decision process (DB-MDP) limits both decision-making and energy expenditure in reinforcement learning, revealing weaknesses in existing algorithms.
  • The introduction of a biologically inspired, temporally layered architecture (TLA) enables optimal performance with lower computing costs, setting a new benchmark for energy and time-aware control in future research.

Article Abstract

The current reinforcement learning framework focuses exclusively on performance, often at the expense of efficiency. In contrast, biological control achieves remarkable performance while also optimizing computational energy expenditure and decision frequency. We propose a decision-bounded Markov decision process (DB-MDP) that constrains the number of decisions and computational energy available to agents in reinforcement learning environments. Our experiments demonstrate that existing reinforcement learning algorithms struggle within this framework, leading to either failure or suboptimal performance. To address this, we introduce a biologically inspired, temporally layered architecture (TLA), enabling agents to manage computational costs through two layers with distinct timescales and energy requirements. TLA achieves optimal performance in decision-bounded environments and in continuous control environments, matching state-of-the-art performance while using a fraction of the computing cost. Compared to current reinforcement learning algorithms that solely prioritize performance, our approach significantly lowers computational energy expenditure while maintaining performance. These findings establish a benchmark and pave the way for future research on energy and time-aware control.

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Source
http://dx.doi.org/10.1162/neco_a_01718DOI Listing

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