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2026 4

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representative citing papers

Energy-Weighted Site Percolation in Two Dimensions

cond-mat.stat-mech · 2026-05-18 · unverdicted · novelty 6.0

Adding a continuous bond energy ε to 2D site percolation shifts the threshold smoothly and drives the correlation-length exponent ν from 1/2 through 4/3 to 1, as shown by Monte Carlo simulations and real-space RG that also reveal an energy-weighted correlation length and antiferromagnetic ordering,

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Showing 4 of 4 citing papers.

  • Apparent double-$T_c$ from a single BKT transition in anisotropic phase-only models cond-mat.supr-con · 2026-05-11 · unverdicted · none · ref 54

    An anisotropic phase-only Josephson array with a single BKT transition yields apparent double-Tc in linear R-T curves under anisotropic dissipation and finite-size crossover, but critical scaling criteria remain consistent with one transition.

  • Accelerated Time-domain Analysis for Gravitational Wave Astronomy gr-qc · 2026-03-06 · unverdicted · none · ref 74

    Presents a practical fully time-domain end-to-end likelihood for gravitational-wave inference with structured linear algebra and GPU acceleration.

  • Energy-Weighted Site Percolation in Two Dimensions cond-mat.stat-mech · 2026-05-18 · unverdicted · none · ref 41

    Adding a continuous bond energy ε to 2D site percolation shifts the threshold smoothly and drives the correlation-length exponent ν from 1/2 through 4/3 to 1, as shown by Monte Carlo simulations and real-space RG that also reveal an energy-weighted correlation length and antiferromagnetic ordering,

  • Introduction to the artificial neural network-based variational Monte Carlo method physics.comp-ph · 2026-03-16 · unverdicted · none · ref 53

    The paper introduces neural-network trial wave functions for variational Monte Carlo, frames the variational method as unsupervised learning, and illustrates the approach on the Yukawa potential and hydrogen molecule.