Triadic Neurosymbolic Engine: Prime Factorization as a Neurosymbolic Bridge: Projecting Continuous Embeddings into Discrete Algebraic Space for Deterministic Verification
OBOrnelas Brand, J. Arturo
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Abstract
We propose a method for bridging continuous neural embeddings and discrete symbolic reasoning bymapping dense vectors to composite prime integers via Locality Sensitive Hashing (LSH), effectively enabling exact set operations on LSH signatures via unique factorization. Each LSH hyperplane is assigneda unique prime; a concept’s integer is the product of primes for its active hyperplanes. This encodingyields three algebraic operations impossible under cosine similarity or Hamming distance: (1) logical subsumption via divisibility, (2) concept composition via LCM, and (3) abductive gap analysis via GCD factorization. We benchmark on a 107-word vocabulary across a series of 9 experiments, achieving 28.4×faster…
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1- OBOrnelas Brand, J. ArturoCorresponding
Topics & keywords
Topics
Keywords
- Hamming distance
- Coprime integers
- Algebraic number
- Set (abstract data type)
- Locality-sensitive hashing
- Pairwise comparison
- Algebra over a field
- Hamming weight
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