Hybrid Recurrent Models Support Emergent Descriptions for Hierarchical Planning and Control
An open problem in artificial intelligence is how systems can flexibly learn discrete abstractions that are useful for solving inherently continuous problems. Previous work has demonstrated that a class of hybrid state-space model known as recurrent switching linear dynamical systems (rSLDS) discove...
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Zusammenfassung: | An open problem in artificial intelligence is how systems can flexibly learn
discrete abstractions that are useful for solving inherently continuous
problems. Previous work has demonstrated that a class of hybrid state-space
model known as recurrent switching linear dynamical systems (rSLDS) discover
meaningful behavioural units via the piecewise linear decomposition of complex
continuous dynamics (Linderman et al., 2016). Furthermore, they model how the
underlying continuous states drive these discrete mode switches. We propose
that the rich representations formed by an rSLDS can provide useful
abstractions for planning and control. We present a novel hierarchical
model-based algorithm inspired by Active Inference in which a discrete MDP sits
above a low-level linear-quadratic controller. The recurrent transition
dynamics learned by the rSLDS allow us to (1) specify temporally-abstracted
sub-goals in a method reminiscent of the options framework, (2) lift the
exploration into discrete space allowing us to exploit information-theoretic
exploration bonuses and (3) `cache' the approximate solutions to low-level
problems in the discrete planner. We successfully apply our model to the sparse
Continuous Mountain Car task, demonstrating fast system identification via
enhanced exploration and non-trivial planning through the delineation of
abstract sub-goals. |
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DOI: | 10.48550/arxiv.2408.10970 |