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Suspiciousness of loading problems

机译:怀疑装载问题

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摘要

We introduce the notion of suspect families of loading problems in an attempt of formalizing situations in which classical learning algorithms based on local optimization are likely to fail (because of local minima or numerical precision problems). We show that any loading problem belonging to a non-suspect family can be solved with optimal complexity by a canonical form of gradient descent with forced dynamics (i.e., for this class of problems no algorithm exhibits a better computational complexity than a slightly modified form of backpropagation). The analysis of this paper suggests intriguing links between the shape of the error surface attached to parametric learning systems (like neural networks) and the computational complexity of the corresponding optimization problem.
机译:我们介绍了疑似加载问题的概念,以尝试正式化的情况,其中基于本地优化的古典学习算法可能会失败(因为局部最小值或数值精确问题)。我们表明,属于非嫌疑人家庭的任何装载问题都可以通过强制动态的规范形式的梯度下降来解决具有最佳复杂性(即,对于该类问题,没有算法表现出比略微修改的形式更好的计算复杂性backprojagation)。本文的分析表明,误差表面的形状与参数学习系统(如神经网络)的形状与相应优化问题的计算复杂度之间的迷难面之间的迷恋链路。

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