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mHC-lite: You Don't Need 20 Sinkhorn-Knopp Iterations

Yongyi Yang, Jianyang Gao1/9/2026arxiv

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88
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Novelty85/100
Methodology90/100
Reproducibility95/100
Impact80/100
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