Data processing: artificial intelligence – Machine learning
Reexamination Certificate
2011-06-07
2011-06-07
Holmes, Michael (Department: 2129)
Data processing: artificial intelligence
Machine learning
Reexamination Certificate
active
07958065
ABSTRACT:
A resilient classifier for using with a rule-based system is provided. A system for classifying data for a rule-based system, may include: a system(s) for generating two training data sets, one data set is generated from input data while the second data set is generated from disturbed data; a system for merging the two training data sets; and a system for training a data classifier with the merged training data sets. As a result, the classification of data becomes more accurate, including when disturbed data is encountered.
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Drissi Youssef
Kim Moon J.
Sow Daby M.
Yee Eric T. C.
Hoffman Warnick LLC
Holmes Michael
International Business Machines - Corporation
Schiesser William
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