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Manifold Identification in Dual Averaging for Regularized Stochastic Online Learning

机译:双重平均的流形识别,用于正规随机在线学习

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Iterative methods that calculate their steps from approximate subgradient directions have proved to be useful for stochastic learning problems over large and streaming data sets. When the objective consists of a loss function plus a nonsmooth regularization term, the solution often lies on a low-dimensional manifold of parameter space along which the regularizer is smooth. (When an l1 regularizer is used to induce sparsity in the solution, for example, this manifold is defined by the set of nonzero components of the parameter vector.) This paper shows that a regularized dual averaging algorithm can identify this manifold, with high probability, before reaching the solution. This observation motivates an algorithmic strategy in which, once an iterate is suspected of lying on an optimal or near-optimal manifold, we switch to a "local phase" that searches in this manifold, thus converging rapidly to a near-optimal point. Computational results are presented to verify the identification property and to illustrate the effectiveness of this approach. color="gray">
机译:从近似次梯度方向计算其步长的迭代方法已被证明对于大型和流数据集的随机学习问题很有用。当目标由损失函数加上不平滑的正则项组成时,解决方案通常位于参数空间的低维流形上,正则化器沿该参数流是平滑的。 (例如,当使用 l 1 正则化器来诱导溶液中的稀疏性时,此流形由的非零分量集合定义本文表明,正规对偶平均算法可以在达到解之前以很高的概率识别该流形。该观察结果激发了一种算法策略,其中,一旦怀疑迭代位于最佳或接近最佳的流形上,我们便切换到在该流形中进行搜索的“局部阶段”,从而迅速收敛至接近最佳的点。给出计算结果以验证识别属性并说明此方法的有效性。 color =“ gray”>

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