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Recursive l_(1, infinity) Group Lasso

机译:递归 l_(1, 无穷大) 组套索

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摘要

We introduce a recursive adaptive group lasso algorithm for real-time penalized least squares prediction that produces a time sequence of optimal sparse predictor coefficient vectors. At each time index the proposed algorithm computes an exact update of the optimal l_(1,infinity)-penalized recursive least squares (RLS) predictor. Each update minimizes a convex but nondifferentiable function optimization problem. We develop an on-line homotopy method to reduce the computational complexity. Numerical simulations demonstrate that the proposed algorithm outperforms the l_(1) regularized RLS algorithm for a group sparse system identification problem and has lower implementation complexity than direct group lasso solvers.
机译:我们引入了一种递归自适应群套索算法,用于实时惩罚最小二乘预测,该算法产生最优稀疏预测系数向量的时间序列。在每个时间索引上,所提出的算法计算最优 l_(1,infinity) 惩罚递归最小二乘 (RLS) 预测变量的精确更新。每次更新都会最小化凸但不可微的函数优化问题。我们开发了一种在线同伦方法来降低计算复杂性。数值仿真表明,所提算法在群稀疏系统辨识问题上优于l_(1)正则化RLS算法,且实现复杂度低于直接群套索求解器。

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