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Learning-To-Rank

Learning to rank is the application of machine learning to build ranking models. Some common use cases for ranking models are information retrieval (e.g., web search) and news feeds application (think Twitter, Facebook, Instagram).

Papers

Showing 701725 of 753 papers

TitleStatusHype
Detect2Rank : Combining Object Detectors Using Learning to Rank0
Ranking via Robust Binary Classification0
A Representation Theory for Ranking Functions0
Learning to Rank Binary Codes0
Multivariate Spearman's rho for aggregating ranks using copulas0
Learning to Differentiate Better from Worse Translations0
Invited Talk: Learning from Rational Behavior0
Fitting Sentence Level Translation Evaluation with Many Dense FeaturesCode0
The Lovasz-Bregman Divergence and connections to rank aggregation, clustering, and web ranking0
Learning the Peculiar Value of Actions0
Identifying Important Features for Graph Retrieval0
Learning Rank Functionals: An Empirical Study0
RankMerging: A supervised learning-to-rank framework to predict links in large social network0
Learning Translational and Knowledge-based Similarities from Relevance Rankings for Cross-Language Retrieval0
Learning to Rank Answer Candidates for Automatic Resolution of Crossword Puzzles0
Automated Disease Normalization with Low Rank Approximations0
A Learning-to-Rank Approach for Image Color Enhancement0
Learning to Exploit Different Translation Resources for Cross Language Information Retrieval0
Identification of functionally related enzymes by learning-to-rank methods0
On Lipschitz Continuity and Smoothness of Loss Functions in Learning to Rank0
Perceptron-like Algorithms and Generalization Bounds for Learning to Rank0
Ranking via Robust Binary Classification and Parallel Parameter Estimation in Large-Scale Data0
Support vector comparison machinesCode0
Boosting Cross-Language Retrieval by Learning Bilingual Phrase Associations from Relevance Rankings0
A Hierarchical Semantics-Aware Distributional Similarity Scheme0
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