ON THE INFORMATION BOTTLENECK THEORY OF DEEP LEARNING
Andrew M. Saxe, Yamini Bansal, et al.
ICLR 2018
Existing multi-agent reinforcement learning (MARL) communication methods have relied on a trusted third party (TTP) to distribute reward to agents, leaving them inapplicable in peer-to-peer environments. This paper proposes reward distribution using Neuron as an Agent (NaaA) in MARL without a TTP with two key ideas: (i) inter-agent reward distribution and (ii) auction theory. Auction theory is introduced because inter-agent reward distribution is insufficient for optimization. Agents in NaaA maximize their profits (the difference between reward and cost) and, as a theoretical result, the auction mechanism is shown to have agents autonomously evaluate counterfactual returns as the values of other agents. NaaA enables representation trades in peer-to-peer environments, ultimately regarding unit in neural networks as agents. Finally, numerical experiments (a single-agent environment from OpenAI Gym and a multi-agent environment from ViZDoom) confirm that NaaA framework optimization leads to better performance in reinforcement learning.
Andrew M. Saxe, Yamini Bansal, et al.
ICLR 2018
Abhishek Kumar, Prasanna Sattigeri, et al.
ICLR 2018
Marlos C. Machado, Clemens Rosenbaum, et al.
ICLR 2018
Tsui Wei Weng, Huan Zhang, et al.
ICLR 2018