Data processing: artificial intelligence – Machine learning
Reexamination Certificate
2008-03-18
2008-03-18
Vincent, David (Department: 2129)
Data processing: artificial intelligence
Machine learning
C706S012000, C706S014000, C706S016000, C706S045000, C706S050000, C708S003000, C708S100000, C708S131000, C708S160000, C708S446000, C708S800000
Reexamination Certificate
active
10619626
ABSTRACT:
For sequentially input data string, the outliner and the change point are detected through calculation of the outlier score and the change point score by combining a time-series model learning device to learn the generation mechanism of the read data series as the time-series statistic model, a score calculator to calculate the outlier score of each data based on the time-series model parameter and the input data, a moving average calculator to calculate the moving average of the outlier score, a time-series model learning device to learn the generation mechanism of the moving average series as the time-series statistic model and the above score calculator that further calculates the outlier score of the moving average based on the moving average of the outlier score and outputs the result as the change point score of the original data.
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Takeuchi Jun-ichi
Yamanishi Kenji
Fernández Rivas Omar F
Foley & Lardner LLP
NEC Corporation
Vincent David
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