Deep Predictive Learning: A Comprehensive Model of Three Visual Streams
Randall C. O'Reilly, Dean R. Wyatte, and John Rohrlich

TL;DR
This paper proposes a comprehensive predictive learning framework for the neocortex, integrating biological, computational, and cognitive insights to explain high-level cognition and visual processing.
Contribution
It introduces a biologically plausible model of cortical predictive learning involving thalamic and cortical interactions, advancing understanding of neural development and high-level abstraction.
Findings
Self-organized invariant object representations for 100 objects
Accounts for diverse experimental data
Predicts testable neural and developmental phenomena
Abstract
How does the neocortex learn and develop the foundations of all our high-level cognitive abilities? We present a comprehensive framework spanning biological, computational, and cognitive levels, with a clear theoretical continuity between levels, providing a coherent answer directly supported by extensive data at each level. Learning is based on making predictions about what the senses will report at 100 msec (alpha frequency) intervals, and adapting synaptic weights to improve prediction accuracy. The pulvinar nucleus of the thalamus serves as a projection screen upon which predictions are generated, through deep-layer 6 corticothalamic inputs from multiple brain areas and levels of abstraction. The sparse driving inputs from layer 5 intrinsic bursting neurons provide the target signal, and the temporal difference between it and the prediction reverberates throughout the cortex,…
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Taxonomy
TopicsNeural dynamics and brain function · Anomaly Detection Techniques and Applications · Visual perception and processing mechanisms
