AI RESEARCH
Conveyance: A Versatile Framework for Learning in Structured Class Spaces
arXiv CS.LG
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ArXi:2605.28420v1 Announce Type: new While machine learning (ML) architectures have evolved rapidly to account for complex data, loss functions like cross-entropy remain mostly structure-agnostic in many real-world applications. However, the `class-symmetric' nature of these standard losses fundamentally limits the ability of ML models to exploit structural relationships between classes, particularly when facing structured noise. We propose \textsc{Conveyance}, a new classification approach and associated loss function tailored to structured class spaces.