Data processing: artificial intelligence – Machine learning
Reexamination Certificate
2011-01-11
2011-01-11
Holmes, Michael B. (Department: 2129)
Data processing: artificial intelligence
Machine learning
C705S014270, C702S085000
Reexamination Certificate
active
07870083
ABSTRACT:
Systems and methods are disclosed to predict one or more missing elements from a partially-observed matrix by receiving one or more user item ratings; generating a model parameterized by matrices U, S, V; applying the model to display an item based on one or more predicted missing elements; and applying the model at run-time and determining UiTSVj.
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Gong Yihong
Yu Kai
Zhu Shenghuo
Bharadwaj Kalpana
Holmes Michael B.
Kolodka Joseph
NEC Laboratories America, Inc.
Tran Bao
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