AI RESEARCH

ZAYAN: Disentangled Contrastive Transformer for Tabular Remote Sensing Data

arXiv CS.AI

ArXi:2604.27606v1 Announce Type: cross Learning informative representations from tabular data in remote sensing and environmental science is challenging due to heterogeneity, scarce labels, and redundancy among features. We present ZAYAN (Zero-Anchor dYnamic feAture eNcoding), a self-supervised, feature-centric contrastive framework for tabular data. ZAYAN performs contrastive learning at the feature rather than sample level, removing the need for explicit anchor selection and any reliance on class labels, while encouraging a redundancy-minimized, disentangled embedding space.