Publication | Open Access
A simple squared-error reformulation for ordinal classification
20
Citations
5
References
2016
Year
EngineeringMachine LearningClassification MethodImage AnalysisData ScienceData MiningPattern RecognitionBiostatisticsStatisticsSupervised LearningAutomatic ClassificationFeature LearningMachine Learning ModelKnowledge DiscoveryDeep LearningOrdinal ClassificationData ClassificationDeep Neural NetworksClass OrderingClassifier System
In this paper, we explore ordinal classification (in the context of deep neural networks) through a simple modification of the squared error loss which not only allows it to not only be sensitive to class ordering, but also allows the possibility of having a discrete probability distribution over the classes. Our formulation is based on the use of a softmax hidden layer, which has received relatively little attention in the literature. We empirically evaluate its performance on the Kaggle diabetic retinopathy dataset, an ordinal and high-resolution dataset and show that it outperforms all of the baselines employed.
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