We theoretically analyze the model selection consistency of least absolute shrinkage and selection operator (Lasso) for high-dimensional Ising models. For random regular (RR) graphs of size $p$ with regular node degree $d$ and uniform couplings $\theta_0$, it is rigorously proved that Lasso without post-thresholding is model selection consistent in the whole paramagnetic phase with the same order of sample complexity $n=\Omega{(d^3\log{p})}$ as that of $\ell_1$-regularized logistic regression ($\ell_1$-LogR). This result is consistent with the conjecture in $\textit{Meng, Obuchi, and Kabashima 2021}$ using the non-rigorous replica method from statistical physics and thus complements it with a rigorous proof. For general tree-like graphs, it is demonstrated that the same result as RR graphs can be obtained under mild assumptions of the dependency condition and incoherence condition. Moreover, we provide a rigorous proof of the model selection consistency of Lasso with post-thresholding for general tree-like graphs in the paramagnetic phase without further assumptions on the dependency and incoherence conditions. Experimental results agree well with our theoretical analysis.
翻译:我们从理论上分析了高维Ising 模型中最不绝对缩缩和选择操作员(Lasso)的模型选择一致性。对于有常规节点的以美元为单位的随机经常(RR)图表($p),其大小为$p$,美元和统一的联结$\theta_0美元,我们严格地证明,没有后期保藏的Lasso是整个抛射磁性阶段的模型选择,其样本复杂程度为$ ⁇ Omega{(d3\log{p}),其顺序与1美元正常后勤回归($ell_1$1美元-LogR)相同。这一结果与美元/textit{Meng,Obuchi,和Kabashima 2021}的假设一致,使用了统计物理的非硬性复制法,从而用严格的证据补充了它。对于像树一样的图表,也证明在对依赖性条件和一致性条件的温和假设下可以取得RRR图表。此外,我们提供了一个严格的证据,表明Lasso的模型选择的一致性与我们的实验性模型模型与我们的实验后期的模型分析结果一致。