Publication | Open Access
A neural circuit architecture for rapid learning in goal-directed navigation
28
Citations
120
References
2024
Year
Artificial IntelligenceEngineeringBrain MechanismNeural RecodingLearning ControlSocial SciencesHead DirectionNeural MechanismFlexible NavigationRobot LearningCognitive NeuroscienceAutomatic NavigationCognitive ScienceBehavioral SciencesBehavioral NeuroscienceHd NeuronsComputer EngineeringInvertebrate VisionComputer ScienceNeural Architecture SearchAutonomous NavigationPerception-action LoopComputational NeuroscienceNeural Circuit ArchitectureNeuroscienceBrain-like Computing
Anchoring goals to spatial representations enables flexible navigation but is challenging in novel environments when both representations must be acquired simultaneously. We propose a framework for how Drosophila uses internal representations of head direction (HD) to build goal representations upon selective thermal reinforcement. We show that flies use stochastically generated fixations and directed saccades to express heading preferences in an operant visual learning paradigm and that HD neurons are required to modify these preferences based on reinforcement. We used a symmetric visual setting to expose how flies' HD and goal representations co-evolve and how the reliability of these interacting representations impacts behavior. Finally, we describe how rapid learning of new goal headings may rest on a behavioral policy whose parameters are flexible but whose form is genetically encoded in circuit architecture. Such evolutionarily structured architectures, which enable rapidly adaptive behavior driven by internal representations, may be relevant across species.
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