Spatio-temporal learning algorithms in hierarchical temporal...

Data processing: artificial intelligence – Miscellaneous

Reexamination Certificate

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C706S015000, C706S020000, C706S021000, C706S022000, C706S045000

Reexamination Certificate

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08037010

ABSTRACT:
A spatio-temporal learning node is a type of HTM node which learns both spatial and temporal groups of sensed input patterns over time. Spatio-temporal learning nodes comprise spatial poolers which are used to determine spatial groups in a set of sensed input patterns. The spatio-temporal learning nodes further comprise temporal poolers which are used to determine groups of sensed input patterns that temporally co-occur. A spatio-temporal learning network is a hierarchical network including a plurality of spatio-temporal learning nodes.

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