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Papers/Rank consistent ordinal regression for neural networks wit...

Rank consistent ordinal regression for neural networks with application to age estimation

Wenzhi Cao, Vahid Mirjalili, Sebastian Raschka

2019-01-20regressionBinary ClassificationAge EstimationPredictionAge And Gender ClassificationGeneral ClassificationGender Prediction
PaperPDFCodeCodeCode(official)Code

Abstract

In many real-world prediction tasks, class labels include information about the relative ordering between labels, which is not captured by commonly-used loss functions such as multi-category cross-entropy. Recently, the deep learning community adopted ordinal regression frameworks to take such ordering information into account. Neural networks were equipped with ordinal regression capabilities by transforming ordinal targets into binary classification subtasks. However, this method suffers from inconsistencies among the different binary classifiers. To resolve these inconsistencies, we propose the COnsistent RAnk Logits (CORAL) framework with strong theoretical guarantees for rank-monotonicity and consistent confidence scores. Moreover, the proposed method is architecture-agnostic and can extend arbitrary state-of-the-art deep neural network classifiers for ordinal regression tasks. The empirical evaluation of the proposed rank-consistent method on a range of face-image datasets for age prediction shows a substantial reduction of the prediction error compared to the reference ordinal regression network.

Results

TaskDatasetMetricValueModel
Facial Recognition and ModellingAFADMAE3.48CORAL
Facial Recognition and ModellingUTKFaceMAE5.39CORAL
Facial Recognition and ModellingCACDMAE5.35CORAL
Facial Recognition and ModellingMORPH Album2MAE2.59CORAL
Face ReconstructionAFADMAE3.48CORAL
Face ReconstructionUTKFaceMAE5.39CORAL
Face ReconstructionCACDMAE5.35CORAL
Face ReconstructionMORPH Album2MAE2.59CORAL
3DAFADMAE3.48CORAL
3DUTKFaceMAE5.39CORAL
3DCACDMAE5.35CORAL
3DMORPH Album2MAE2.59CORAL
3D Face ModellingAFADMAE3.48CORAL
3D Face ModellingUTKFaceMAE5.39CORAL
3D Face ModellingCACDMAE5.35CORAL
3D Face ModellingMORPH Album2MAE2.59CORAL
3D Face ReconstructionAFADMAE3.48CORAL
3D Face ReconstructionUTKFaceMAE5.39CORAL
3D Face ReconstructionCACDMAE5.35CORAL
3D Face ReconstructionMORPH Album2MAE2.59CORAL
Age EstimationAFADMAE3.48CORAL
Age EstimationUTKFaceMAE5.39CORAL
Age EstimationCACDMAE5.35CORAL
Age EstimationMORPH Album2MAE2.59CORAL

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