SOTAVerified

Unimodal Distributions for Ordinal Regression

2023-03-08Code Available0· sign in to hype

Jaime S. Cardoso, Ricardo Cruz, Tomé Albuquerque

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

In many real-world prediction tasks, class labels contain information about the relative order between labels that are not captured by commonly used loss functions such as multicategory cross-entropy. Recently, the preference for unimodal distributions in the output space has been incorporated into models and loss functions to account for such ordering information. However, current approaches rely on heuristics that lack a theoretical foundation. Here, we propose two new approaches to incorporate the preference for unimodal distributions into the predictive model. We analyse the set of unimodal distributions in the probability simplex and establish fundamental properties. We then propose a new architecture that imposes unimodal distributions and a new loss term that relies on the notion of projection in a set to promote unimodality. Experiments show the new architecture achieves top-2 performance, while the proposed new loss term is very competitive while maintaining high unimodality.

Tasks

Reproductions