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ToriLLE: Learning Environment for Hand-to-Hand Combat

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arxiv 1807.10110 v3 pith:UKNS6KLC submitted 2018-07-26 cs.AI cs.LG

ToriLLE: Learning Environment for Hand-to-Hand Combat

classification cs.AI cs.LG
keywords environmentlearningtoribashtorilleagentsevaluatinghand-to-handmachine
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present Toribash Learning Environment (ToriLLE), a learning environment for machine learning agents based on the video game Toribash. Toribash is a MuJoCo-like environment of two humanoid character fighting each other hand-to-hand, controlled by changing actuation modes of the joints. Competitive nature of Toribash as well its focused domain provide a platform for evaluating self-play methods, and evaluating machine learning agents against human players. In this paper we describe the environment with ToriLLE's capabilities and limitations, and experimentally show its applicability as a learning environment. The source code of the environment and conducted experiments can be found at https://github.com/Miffyli/ToriLLE.

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