AI RESEARCH
FLARE: Task-agnostic embedding model evaluation through a normalization process
arXiv CS.LG
•
ArXi:2604.17344v1 Announce Type: new When task-specific labels are not available, it becomes difficult to select an embedding model for a specific target corpus. Existing labelless measures based on kernel estimators or Gaussian mixes fail in high-dimensional space, resulting in unstable rankings. We propose a flow-based labelless representation embedding evaluation (FLARE), which utilizes normalized streams to estimate information sufficiency directly from log-likelihood and avoid distance-based density estimation.