The Epistemic Support-Point Filter: Jaynesian Maximum Entropy Meets Popperian Falsification
arXiv cs.AI / 3/12/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The Epistemic Support-Point Filter (ESPF) formalizes a principle to be quick to embrace ignorance and slow to assert certainty by combining Jaynesian maximum entropy with Popperian falsification.
- It proves ESPF is the unique optimal filter within the class of epistemically admissible evidence-only filters under a possibilistic minimax entropy criterion.
- The framework contrasts with Bayesian filters by minimizing worst-case epistemic ignorance, with the Kalman filter recovered in the Gaussian limit.
- Numerical validation on a 2-day Smolyak Level-3 orbital-tracking run confirms regime structure under nominal and stress conditions.
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