Deep hybrid models: infer and plan in a dynamic world
In order to determine an optimal plan for a complex task, one often deals with dynamic and hierarchical relationships between several entities. Traditionally, such problems are tackled with optimal control, which relies on the optimization of cost functions; instead, a recent biologically-motivated...
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Zusammenfassung: | In order to determine an optimal plan for a complex task, one often deals
with dynamic and hierarchical relationships between several entities.
Traditionally, such problems are tackled with optimal control, which relies on
the optimization of cost functions; instead, a recent biologically-motivated
proposal casts planning and control as an inference process. Active inference
assumes that action and perception are two complementary aspects of life
whereby the role of the former is to fulfill the predictions inferred by the
latter. In this study, we present a solution, based on active inference, for
complex control tasks. The proposed architecture exploits hybrid (discrete and
continuous) processing, and it is based on three features: the representation
of potential body configurations related to the objects of interest; the use of
hierarchical relationships that enable the agent to flexibly expand its body
schema for tool use; the definition of potential trajectories related to the
agent's intentions, used to infer and plan with dynamic elements at different
temporal scales. We evaluate this deep hybrid model on a habitual task:
reaching a moving object after having picked a moving tool. We show that the
model can tackle the presented task under different conditions. This study
extends past work on planning as inference and advances an alternative
direction to optimal control. |
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DOI: | 10.48550/arxiv.2402.10088 |