Reinforcement Learning Agent Design and Optimization with Bandwidth Allocation Model
Rafael F. Reale, Joberto S. B. Martins

TL;DR
This paper explores how a Bandwidth Allocation Model (BAM) can enhance reinforcement learning agent design and efficiency by offloading computational tasks and aiding in resource management.
Contribution
It introduces the ATCS BAM model, demonstrating its potential to improve RL agent design and operational efficiency through analytical modeling and simulation.
Findings
BAM models can offload computational tasks from RL agents.
The ATCS model effectively mimics RL agent operations.
Simulation results show improved agent efficiency with BAM integration.
Abstract
Reinforcement learning (RL) is currently used in various real-life applications. RL-based solutions have the potential to generically address problems, including the ones that are difficult to solve with heuristics and meta-heuristics and, in addition, the set of problems and issues where some intelligent or cognitive approach is required. However, reinforcement learning agents require a not straightforward design and have important design issues. RL agent design issues include the target problem modeling, state-space explosion, the training process, and agent efficiency. Research currently addresses these issues aiming to foster RL dissemination. A BAM model, in summary, allocates and shares resources with users. There are three basic BAM models and several hybrids that differ in how they allocate and share resources among users. This paper addresses the issue of an RL agent design and…
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Taxonomy
TopicsAuction Theory and Applications
MethodsBottleneck Attention Module
