Polynomial-time algorithms for the Polynomial Freiman-Ruzsa theorem and equivalent formulations over F_2^n, based on an optimized quadratic Goldreich-Levin procedure.
Asadi, Alexander Golovnev, Tom Gur, and Igor Shinkar
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A one-ancilla framework for QSAMPLE preparation via GQSP-based selective phase compilation embedded in fixed-point amplitude amplification, improving overlap dependence to inverse square-root minimum overlap.
Polynomial-time algorithm samples the Sherrington-Kirkpatrick Gibbs measure at beta < 1/2 with o(1) TVD error by combining potential Hessian ascent, stochastic localization, covariance estimates, and Jarzynski equality with rejection sampling.
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An algorithmic Polynomial Freiman-Ruzsa theorem
Polynomial-time algorithms for the Polynomial Freiman-Ruzsa theorem and equivalent formulations over F_2^n, based on an optimized quadratic Goldreich-Levin procedure.
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Ancilla-Efficient QSAMPLE Preparation for Reversible Markov Chains
A one-ancilla framework for QSAMPLE preparation via GQSP-based selective phase compilation embedded in fixed-point amplitude amplification, improving overlap dependence to inverse square-root minimum overlap.
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Potential Hessian Ascent III: Sampling the Sherrington--Kirkpatrick Model at Beta < 1/2
Polynomial-time algorithm samples the Sherrington-Kirkpatrick Gibbs measure at beta < 1/2 with o(1) TVD error by combining potential Hessian ascent, stochastic localization, covariance estimates, and Jarzynski equality with rejection sampling.