Data processing: structural design – modeling – simulation – and em – Modeling by mathematical expression
Reexamination Certificate
2008-01-29
2008-01-29
Thangavelu, Kandasamy (Department: 2123)
Data processing: structural design, modeling, simulation, and em
Modeling by mathematical expression
C704S002000, C704S010000, C704S240000, C704S224000, C706S045000, C706S021000, C702S181000
Reexamination Certificate
active
10613366
ABSTRACT:
A method to select features for maximum entropy modeling in which the gains for all candidate features are determined during an initialization stage and gains for only top-ranked features are determined during each feature selection stage. The candidate features are ranked in an ordered list based on the determined gains, a top-ranked feature in the ordered list with a highest gain is selected, and the model is adjusted using the selected top-ranked feature.
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Weng Fuliang
Zhou Yaqian
Kenyon & Kenyon LLP
Robert & Bosch GmbH
Thangavelu Kandasamy
The Board Of Trustees Of The Leland Stanford Junior University
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