Seeking Critique on Research Approach to Open Set Recognition (Novelty Detection) [R]

Reddit - Machine Learning 1 min read

About this article

Hey guys, I'm an independent researcher working on a project that tries to address a very specific failure mode in LLMs and embedding based classifiers: the inability of the system to reliably distinguish between "familiar data" that it's seen variations of and "novel noise." The project's core idea is moving from a single probability vector (P(class|input)) to a dual-output system that measures μ(x), a continuous familiarity score bounded [0,1], derived from set coverage axioms. The detailed...

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Originally published on April 15, 2026. Curated by AI News.

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