Data processing: artificial intelligence – Having particular user interface
Reexamination Certificate
2011-07-12
2011-07-12
Gaffin, Jeffrey A (Department: 2129)
Data processing: artificial intelligence
Having particular user interface
C702S127000, C707S776000
Reexamination Certificate
active
07979362
ABSTRACT:
An interactive data mining system (100, 3000) that is suitable for data mining large high dimensional (e.g., 200 dimension) data sets is provided. The system graphically presents rules in a context allowing users to readily gain an intuitive appreciation of the significance of important attributes (data fields) in the data. The system (100, 3000) uses metrics to quantify the importance of the various data attributes, data values, attribute/value pairs, ranks them according to the metrics and displays histograms and lists of attributes and values in order according to the metric, thereby allowing the user to rapidly find the most interesting aspects of the data. The system explores the impact of user defined constraints and presents histograms and rule cubes including superposed and interleaved rule cubes showing the effect of the constraints.
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Benkler Jeffrey G.
Liu Bing
Xiao Weimin
Zhao Kaidi
Bharadwaj Kalpana
Bretscher John T.
Davis Valerie M.
Gaffin Jeffrey A
Motorola Solutions, Inc.
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