The Jinx’s Theorem introduces a paradigm shift in number theory and discrete mathematics: arithmetic sets are shown to possess intrinsic spectral signatures that can be detected, analyzed, and distinguished through Fourier methods — much like physical systems reveal their nature through resonance. Core Idea: Stop calculating, start listening. In this foundational work, the theorem establishes that structured arithmetic objects (such as perfect squares, polynomial sequences, or iterated mappings) generate non-random, scale-dependent spectral patterns when analyzed in harmonic space. In contrast, unstructured or pseudo-random sets exhibit flat or rapidly decorrelating spectra. Formally, the work proves that the Fourier decay rate of an arithmetic indicator function encodes deep information about the geometric and algebraic structure of the underlying set. Key Results & Highlights: Spectral Discrimination Theorem: A rigorous proof that structured integer sets exhibit power-law spectral decay, sharply distinguishing them from noise-like ensembles. Geometry–Spectrum Correspondence (Conjecture): Evidence that the decay exponent directly reflects the effective dimension and growth law of the arithmetic structure. Quantum Fourier Proof-of-Principle: A controlled experiment on IBM Quantum hardware demonstrates that structured superposition states produce detectable harmonic responses, while unstructured controls do not. (This experiment illustrates detectability, not quantum advantage). Beyond Brute Force: Introduction of a resonance-based methodology that bypasses exhaustive enumeration, reframing certain intractable problems as questions of structural relevance rather than computational depth. This reframing opens a path toward structure-aware computation, where relevance replaces raw complexity By leveraging the Quantum Fourier Transform (QFT) as a structural probe, the theorem suggests a future in which deep arithmetic properties are accessed through spectral listening, not combinatorial explosion. Potential Impact & Applications (Non-Exhaustive): Quantum-assisted pattern recognition Structural anomaly detection (AI & data science) Discrete signal fingerprinting Cryptographic structure analysis Mathematical structure mining beyond brute-force search ------- Keywords: Arithmetical Harmonics • Spectral Signatures • Fourier Analysis • Quantum Fourier Transform (QFT) • Quantum Computing • Discrete Geometry • Number Theory • Structural Resonance • Pattern Detection • Signal vs Noise • Beyond Brute Force • Nitescence Theorem • IBM Quantum
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Xavier J. Régent
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Xavier J. Régent (Thu,) studied this question.
synapsesocial.com/papers/696c77afeb60fb80d1395ee0 — DOI: https://doi.org/10.5281/zenodo.18263784