A Structured Prediction Approach for Label Ranking
Korba, Anna, Garcia, Alexandre, d', Alché-Buc, Florence
–Neural Information Processing Systems
We propose to solve a label ranking problem as a structured output regression task. In this view, we adopt a least square surrogate loss approach that solves a supervised learning problem in two steps: a regression step in a well-chosen feature space and a pre-image (or decoding) step. We use specific feature maps/embeddings for ranking data, which convert any ranking/permutation into a vector representation. These embeddings are all well-tailored for our approach, either by resulting in consistent estimators, or by solving trivially the pre-image problem which is often the bottleneck in structured prediction. Their extension to the case of incomplete or partial rankings is also discussed.
Neural Information Processing Systems
Feb-14-2020, 20:27:14 GMT