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Learning to rankwith bregman divergences and monotone retargeting
Sreangsu Acharyya
,
Oluwasanmi Koyejo
, Joydeep Ghosh
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Dive into the research topics of 'Learning to rankwith bregman divergences and monotone retargeting'. Together they form a unique fingerprint.
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Keyphrases
Monotone
100%
Retargeting
100%
Bregman Divergence
100%
Learning to Rank
66%
Large Classes
33%
Divergence
33%
Parameter Estimation
33%
Global Optimum
33%
Benchmark Dataset
33%
Ranking Method
33%
Generalized Linear Model
33%
Parallelizable Algorithm
33%
Alternating Projections
33%
Prediction Function
33%
Simultaneous Projection Method
33%
Distance-like Functions
33%
Mathematics
Parameter Estimation
100%
Global Optimum
100%
Function Prediction
100%
Alternating Projections
100%
Increasing Transformation
100%
Generalized Linear Model
100%
Computer Science
Mild Condition
100%
Parameter Estimation
100%
Prediction Function
100%
Psychology
Generalized Linear Model
100%