A structured variable selection problem is considered in which the covariates, divided into predefined groups, activate according to sparse patterns with few nonzero entries per group. Capitalizing on the concept of atomic norm, a composite norm can be properly designed to promote such exclusive group sparsity patterns. The resulting norm lends itself to efficient and flexible regularized optimization algorithms for support recovery, like the proximal algorithm. Moreover, an active set algorithm is proposed that builds the solution by successively including structure atoms into the estimated support. It is also shown that such an algorithm can be tailored to match more rigid structures than plain exclusive group sparsity. Asymptotic consistency analysis (with both the number of parameters as well as the number of groups growing with the observation size) establishes the effectiveness of the proposed solution in terms of signed support recovery under conventional assumptions. Finally, a set of numerical simulations further corroborates the results.
翻译:考虑结构化的变量选择问题,即共变体分为预先定义的组群,根据稀少的模式按每个组群中很少的非零条目启动。利用原子规范的概念,可以适当地设计一个复合规范,以促进这种排他性的群集宽度模式。由此形成的规范有利于采用高效率和灵活的正规化优化算法来支持恢复,如近似算法。此外,还提出一套主动的一套算法,通过将结构原子连续地纳入估计支持中来构建解决方案。还表明,这种算法可以根据比普通的独家群集群体更僵硬的结构来定制。系统一致性分析(包括参数数量和随着观察规模的增加而增长的群)确定了拟议解决方案在常规假设下签名支持恢复的有效性。最后,一套数字模拟进一步证实了结果。