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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Newton-Type Greedy Selection Methods for $ell _0$ -Constrained Minimization
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Newton-Type Greedy Selection Methods for $ell _0$ -Constrained Minimization

机译:$ ell _0 $的牛顿型贪婪选择方法-约束最小化

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摘要

We introduce a family of Newton-type greedy selection methods for $ell _0$ -constrained minimization problems. The basic idea is to construct a quadratic function to approximate the original objective function around the current iterate and solve the constructed quadratic program over the cardinality constraint. The next iterate is then estimated via a line search operation between the current iterate and the solution of the sparse quadratic program. This iterative procedure can be interpreted as an extension of the constrained Newton methods from convex minimization to non-convex $ell _0$ -constrained minimization. We show that the proposed algorithms converge asymptotically and the rate of local convergence is superlinear up to certain estimation error. Our methods compare favorably against several state-of-the-art greedy selection methods when applied to sparse logistic regression and sparse support vector machines.
机译:我们为<内联公式> $ ell _0 $ -约束最小化问题。基本思想是构造一个二次函数,以围绕当前迭代近似原始目标函数,并在基数约束条件下解决构造的二次程序。然后,通过当前迭代和稀疏二次程序的解之间的行搜索操作来估计下一个迭代。此迭代过程可以解释为从凸极小到非凸 $ ell _0 $ < inline-graphic xlink:href =“ yuan-ieq3-2651813.gif” /> -约束最小化。我们证明了所提出的算法是渐近收敛的,并且局部收敛速度在某些估计误差之前是超线性的。当应用于稀疏逻辑回归和稀疏支持向量机时,我们的方法与几种最新的贪婪选择方法相比具有优势。

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