We establish exact asymptotic expressions for the normalized mutual information and minimum mean-square-error (MMSE) of sparse linear regression in the sub-linear sparsity regime. Our result is achieved by a generalization of the adaptive interpolation method in Bayesian inference for linear regimes to sub-linear ones. A modification of the well-known approximate message passing algorithm to approach the MMSE fundamental limit is also proposed, and its state evolution is rigorously analyzed. Our results show that the traditional linear assumption between the signal dimension and number of observations in the replica and adaptive interpolation methods is not necessary for sparse signals. They also show how to modify the existing well-known AMP algorithms for linear regimes to sub-linear ones.
翻译:我们通过贝叶斯推理中的自适应插值方法将稀疏线性回归在次线性稀疏性区间内的归一化互信息和最小均方误差 (MMSE) 确定了精确渐进表达式。我们的结果通过将线性度与次线性度推广到自适应插值方法实现。我们还提出了一种修改了知名的真实消息传递算法,以实现MMSE基本极限,同时严格分析其状态演变。我们的结果表明,对于稀疏信号,传统的信号维度与观测数之间的线性关系在复制品和自适应插值方法中不是必需的。它们还展示了如何将现有知名的线性区间的AMP算法修改为次线性的。