Litcius/Paper detail

Continual reinforcement learning in 3D non-stationary environments

Vincenzo Lomonaco, Karan Desai, Eugenio Culurciello, Davide Maltoni

2020CINECA IRIS Institutial research information system (University of Pisa)38 citationsDOI

Abstract

High-dimensional always-changing environments constitute a hard challenge for current reinforcement learning techniques. Artificial agents, nowadays, are often trained off-line in very static and controlled conditions in simulation such that training observations can be thought as sampled i.i.d. from the entire observations space. However, in real world settings, the environment is often non-stationary and subject to unpredictable, frequent changes. In this paper we propose and openly release CRLMaze, a new benchmark for learning continually through reinforcement in a complex 3D non-stationary task based on ViZDoom and subject to several environmental changes. Then, we introduce an end-to-end model-free continual reinforcement learning strategy showing competitive results with respect to four different baselines and not requiring any access to additional supervised signals, previously encountered environmental conditions or observations.

Topics & Concepts

Reinforcement learningComputer scienceBenchmark (surveying)Task (project management)Artificial intelligenceReinforcementSpace (punctuation)Machine learningEngineeringSystems engineeringGeographyGeodesyStructural engineeringOperating systemReinforcement Learning in RoboticsAdaptive Dynamic Programming ControlDistributed Control Multi-Agent Systems