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Computational Suspiciousness of Learning in Artificial Neural Nets

机译:人工神经网络学习的计算可疑

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In this paper we study the time complexity of learning in terms of continuous-parametric representations (CPR) of concept classes, that un-derly most of the connectionist approaches to machine learning. We introduce the notion of non-suspect concept classes in CPR. Suspicious-ness essentially qualifies the shape of the error function associated to a CP representation when the learner adopts an optimization algorithm for searching in the parameter space. We show that a concept class F is non-suspect in a CPR only if F is efficiently learnable. Under some further assumptions, that are met for example in the case of the class of linearly separable patterns, we claim that there exists an optimal algorithm for learning non-suspect concept classes in the representation of multilayered neural networks, whose time complexity is Θ(mp), being m the number of training examples and p the dimension of the parameter space.
机译:在本文中,我们研究了在概念类的连续参数表示(CPR)方面的学习时间复杂性,即大多数连接到机器学习的方法。我们介绍了CPR中非嫌疑人概念课程的概念。当学习者采用用于在参数空间中搜索的优化算法时,可疑-NES基本上符合与CP表示相关的错误函数的形状。我们表明,只有在F有效学习时,才能在CPR中是非嫌疑人。在一些进一步的假设下,例如在线性可分离模式的类别的情况下满足,我们要求在多层神经网络的表示中学习非嫌疑概念类的最佳算法,其时间复杂度是θ( MP),是M训练示例的数量和参数空间的维度的数量。

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