A new evidence hierarchy plus OSINT integration enables Bayesian classification that reaches up to 95% accuracy in simulations while improving robustness to clutter and prior mismatch.
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2026 3verdicts
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Simulated fidelity quantum kernels achieve competitive or better accuracy than RBF kernels on Indian Pines binary and multiclass tasks and Methane Detection data without heavy dimensionality reduction.
A multi-view evidential framework combines semantic and reasoning information to improve accuracy and provide trustworthy uncertainty estimates for mental health prediction on text data.
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An Evidence Hierarchy for Bayesian Object Classification via OSINT-Aided Heterogeneous Sensor Fusion
A new evidence hierarchy plus OSINT integration enables Bayesian classification that reaches up to 95% accuracy in simulations while improving robustness to clutter and prior mismatch.