Data processing: artificial intelligence – Knowledge processing system – Creation or modification
Reexamination Certificate
2011-07-05
2011-07-05
Starks, Jr., Wilbert L (Department: 2129)
Data processing: artificial intelligence
Knowledge processing system
Creation or modification
C706S045000
Reexamination Certificate
active
07974938
ABSTRACT:
A method and system for storing episodic sequences (events and actions). The system learns episodic sequencing by observing real-world events and actions or by receiving fact data from a database storing common sense facts. The episodic sequences are classified into events and actions, processed to indicate correlations and causality between the events and actions, and generated into linked graphs. The linked graphs may then be used to draw inferences, recognize patterns, and make decisions.
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Gupta Rakesh
Hennacy Ken
Duell Mark E.
Fenwick & West LLP
Honda Motor Co. Ltd.
Starks, Jr. Wilbert L
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