EVAAA: A Virtual Environment Platform for Essential Variables in Autonomous and Adaptive Agents
–Neural Information Processing Systems
Reinforcement learning (RL) agents have demonstrated strong performance in structured environments, yet they continue to struggle in real-world settings where goals are ambiguous, conditions change dynamically, and external supervision is limited. These challenges stem not primarily from the algorithmic limitations but from the characteristics of conventional training environments, which are usually static, task-specific, and externally defined. In contrast, biological agents develop autonomy and adaptivity by interacting with complex, dynamic environments, where most behaviors are ultimately driven by internal physiological needs. Inspired by these biological constraints, we introduce EVAAA (Essential Variables in Autonomous and Adaptive Agents), a 3D virtual environment for training and evaluating egocentric RL agents endowed with internal physiological state variables. In EVAAA, agents must maintain essential variables (EVs)--e.g., satiation, hydration, body temperature, and tissue integrity (the level of damage)--within viable bounds by interacting with environments that increase in difficulty at each stage.
Neural Information Processing Systems
Jun-12-2026, 08:18:42 GMT