Modular Architecture for StarCraft II with Deep Reinforcement Learning

November 08, 2018 Β· Declared Dead Β· πŸ› Artificial Intelligence and Interactive Digital Entertainment Conference

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Authors Dennis Lee, Haoran Tang, Jeffrey O Zhang, Huazhe Xu, Trevor Darrell, Pieter Abbeel arXiv ID 1811.03555 Category cs.AI: Artificial Intelligence Citations 58 Venue Artificial Intelligence and Interactive Digital Entertainment Conference Last Checked 4 months ago
Abstract
We present a novel modular architecture for StarCraft II AI. The architecture splits responsibilities between multiple modules that each control one aspect of the game, such as build-order selection or tactics. A centralized scheduler reviews macros suggested by all modules and decides their order of execution. An updater keeps track of environment changes and instantiates macros into series of executable actions. Modules in this framework can be optimized independently or jointly via human design, planning, or reinforcement learning. We apply deep reinforcement learning techniques to training two out of six modules of a modular agent with self-play, achieving 94% or 87% win rates against the "Harder" (level 5) built-in Blizzard bot in Zerg vs. Zerg matches, with or without fog-of-war.
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