The Hiremath Early Detection (HED) Score: A Measure-Theoretic Evaluation Standard for Temporal Intelligence
arXiv cs.LG / 4/8/2026
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Key Points
- The paper introduces the Hiremath Early Detection (HED) Score, a measure-theoretic evaluation criterion that explicitly accounts for detection latency in non-stationary stochastic processes with abrupt regime changes.
- Unlike ROC/AUC, which is temporally agnostic, HED uses an exponentially decaying kernel over a posterior probability stream starting at the regime-shift onset to jointly reflect detection acuity, temporal lead, and pre-transition calibration quality.
- The authors prove HED satisfies three axioms—Temporal Monotonicity, invariance to pre-attack bias, and sensitivity decomposability—aimed at making time-critical evaluation more principled.
- They define a parametric family of HED scores via the Hiremath Decay Constant (λ_H), along with a domain-specific “Hiremath Standard Table” for calibration.
- As an example method, PARD-SSM (fSDEs + Switching Linear Dynamical System inference) improves the HED score on NSL-KDD to 0.0643 versus a Random Forest baseline of 0.0132 (388.8% improvement) with statistical significance (p < 0.001).
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