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A homotopy-type-theoretic generalization of neurosymbolic inference

Paper proposing a framework for neurosymbolic systems using homotopy type theory.

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A homotopy-type-theoretic generalization of neurosymbolic inference

By Fernando Zhapa-Camacho, Robert HoehndorfarXiv
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The authors develop a framework for neurosymbolic systems based on homotopy type theory, which preserves information about symmetries and distinct proofs. They prove a conservativity theorem and show that the framework exposes symmetry behind reasoning shortcuts.

The proposed method is demonstrated to be better calibrated than ensemble methods on MNIST benchmarks.

Abstract

The authors develop a framework for neurosymbolic systems based on homotopy type theory, which preserves information about symmetries and distinct proofs. They prove a conservativity theorem and show that the framework exposes symmetry behind reasoning shortcuts. The proposed method is demonstrated to be better calibrated than ensemble methods on MNIST benchmarks.

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neurosymbolic systemshomotopy type theorysymmetry-aware inferencereasoning shortcutsmnist benchmarksAI AgentsLarge Language ModelsSemantic InteroperabilityOntology & Taxonomy
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