JSAI2019

Presentation information

General Session

General Session » [GS] J-7 Agents

[3P4-J-7] Agents: social multiagents

Thu. Jun 6, 2019 3:50 PM - 5:30 PM Room P (Front-left room of 1F Exhibition hall)

Chair:Naoki Fukuda Reviewer:Jun Ichikawa

4:10 PM - 4:30 PM

[3P4-J-7-02] An allocation strategy with deep reinforcement learning for efficient task processing in multi agent system

〇Genki Matsuno1, Sho Tanaka2, Hiroki Hara2, Syunyo Kawamoto2, Syo Shimoyama2, Takashi Kawashima2, Daisuke Tsumita2, Yasushi Kido1, Osamu Hashimoto1, Tomohiro Takagi2 (1. Skydisc, Inc., 2. Meiji University)

Keywords:multi-agent, task allocation, reinforcement learning

In this study, it was considered how to make matching between task required resource and member capability that will be applied into multi-agent systems.

Supported by Reinforcement Learning strategy with deep Neural Network technique, a modern solution was conducted accompanied with standard baseline methods and evaluated from several suggestive viewpoints.

According to the numerical experiments, it is elucidated that RL strategy has some advantages when targeting on both execution time duration and accuracy of combination matching.