Crawling in Rogue's dungeons with (partitioned) A3C
2018-04-23Code Available0· sign in to hype
Andrea Asperti, Daniele Cortesi, Francesco Sovrano
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- github.com/Francesco-Sovrano/Partitioned-A3C-for-RogueInABoxOfficialIn papertf★ 0
Abstract
Rogue is a famous dungeon-crawling video-game of the 80ies, the ancestor of its gender. Rogue-like games are known for the necessity to explore partially observable and always different randomly-generated labyrinths, preventing any form of level replay. As such, they serve as a very natural and challenging task for reinforcement learning, requiring the acquisition of complex, non-reactive behaviors involving memory and planning. In this article we show how, exploiting a version of A3C partitioned on different situations, the agent is able to reach the stairs and descend to the next level in 98% of cases.