Modelleyen: Continual Learning and Planning via Structured Modelling of Environment Dynamics
The current machine learning paradigm relies on continuous representations and fixed neural network architectures to approximate environmental structures, leading to challenges with continual learning, internal structure design, and goal-directed behavior due to overparameterization and reliance on continuous parameter tuning. This paper introduces “Modelleyen,” an alternative learning mechanism that learns environmental structures topologically in an inherently continual manner, and a planning algorithm that utilizes Modelleyen’s output for goal-directed behavior. We demonstrate the effectiveness of Modelleyen and the planner in a simple environment, and also discuss their potential for creating human-comprehensible hierarchical models in machine learning.
2-s2.0-105002479077
EPFL
EPFL
2025
978-981-96-3294-7
Lecture Notes in Computer Science; 15541
1611-3349
0302-9743
402
413
REVIEWED
EPFL
| Event name | Event acronym | Event place | Event date |
BI 2024 | Bangkok, Thailand | 2024-12-13 - 2024-12-15 | |