Multiclass threshold-based classification and model evaluation

Abstract

In this paper, we introduce a threshold-based framework for multiclass classification that generalizes the standard argmax rule. This is done by replacing the probabilistic interpretation of softmax outputs with a geometric one on the multidimensional simplex, where the classification depends on a multidimensional threshold. This change of perspective enables for any trained classification network an a posteriori optimization of the classification score by means of threshold tuning, as usually carried out in the binary setting, thus allowing for a further refinement of the prediction capability of any network. Our experiments show indeed that multidimensional threshold tuning yields performance improvements across various networks and datasets. Moreover, we derive a multiclass ROC analysis based on ROC clouds -- the attainable (FPR,TPR) operating points induced by a single multiclass threshold -- and summarize them via a Distance From Point (DFP) score to (0,1). This yields a coherent alternative to standard One-vs-Rest (OvR) curves and aligns with the observed tuning gains.

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