Low Degree Hardness for Broadcasting on Trees
–Neural Information Processing Systems
We study the low-degree hardness of broadcasting on trees.Broadcasting on trees has been extensively studied in statistical physics, in computational biology in relation to phylogenetic reconstruction and in statistics and computer science in the context of block model inference, and as a simple data model for algorithms that may require depth for inference. The inference of the root can be carried by celebrated Belief Propagation (BP) algorithm which achieves Bayes-optimal performance. Despite the fact that this algorithm runs in linear time (using real operations), recent works indicated that this algorithm in fact requires high level of complexity. Moitra, Mossel and Sandon constructed a chain for which estimating the root better than random (for a typical input) is NC1 complete. Kohler and Mossel constructed chains such that for trees with N leaves, recovering the root better than random requires a polynomial of degree N {\Omega(1)} .
Neural Information Processing Systems
May-26-2025, 21:28:46 GMT
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