4.2 Article

Improving ranking performance with cost-sensitive ordinal classification via regression

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INFORMATION RETRIEVAL
卷 17, 期 1, 页码 1-20

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SPRINGER
DOI: 10.1007/s10791-013-9219-2

关键词

List-wise ranking; Cost-sensitive; Regression; Reduction

资金

  1. National Science Council of Taiwan [NSC 98-2221-E-002-192, 101-2628-E-002-029-MY2, 100-2218-E-004-001, 101-2221-E-004-017]

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This paper proposes a novel ranking approach, cost-sensitive ordinal classification via regression (COCR), which respects the discrete nature of ordinal ranks in real-world data sets. In particular, COCR applies a theoretically sound method for reducing an ordinal classification to binary and solves the binary classification sub-tasks with point-wise regression. Furthermore, COCR allows us to specify mis-ranking costs to further improve the ranking performance; this ability is exploited by deriving a corresponding cost for a popular ranking criterion, expected reciprocal rank (ERR). The resulting ERR-tuned COCR boosts the benefits of the efficiency of using point-wise regression and the accuracy of top-rank prediction from the ERR criterion. Evaluations on four large-scale benchmark data sets, i.e., Yahoo! Learning to Rank Challenge and Microsoft Learning to Rank, verify the significant superiority of COCR over commonly used regression approaches.

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