SoDeep: a Sorting Deep net to learn ranking loss surrogates
Engilberge, Martin, Chevallier, Louis, Pérez, Patrick, Cord, Matthieu
Several tasks in machine learning are evaluated using non-differentiable metrics such as mean average precision or Spearman correlation. However, their non-differentiability prevents from using them as objective functions in a learning framework. Surrogate and relaxation methods exist but tend to be specific to a given metric. In the present work, we introduce a new method to learn approximations of such non-differentiable objective functions. Our approach is based on a deep architecture that approximates the sorting of arbitrary sets of scores. It is trained virtually for free using synthetic data. This sorting deep (SoDeep) net can then be combined in a plug-and-play manner with existing deep architectures. We demonstrate the interest of our approach in three different tasks that require ranking: Cross-modal text-image retrieval, multi-label image classification and visual memorability ranking. Our approach yields very competitive results on these three tasks, which validates the merit and the flexibility of SoDeep as a proxy for sorting operation in ranking-based losses.
Apr-8-2019
- Country:
- Asia > Middle East
- Jordan (0.04)
- Europe > France
- Île-de-France > Paris > Paris (0.04)
- Asia > Middle East
- Genre:
- Research Report (0.82)
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