Why Deep Learning Is More Efficient than Support Vector Machines, and How it is Related to Sparsity Techniques in Signal Processing

Laxman Bokati, O. Kosheleva, V. Kreinovich, Uram Anibal Sosa Aguirre
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引用次数: 1

Abstract

Several decades ago, traditional neural networks were the most efficient machine learning technique. Then it turned out that, in general, a different technique called support vector machines is more efficient. Reasonably recently, a new technique called deep learning has been shown to be the most efficient one. These are empirical observations, but how we explain them - thus making the corresponding conclusions more reliable? In this paper, we provide a possible theoretical explanation for the above-described empirical comparisons. This explanation enables us to explain yet another empirical fact - that sparsity techniques turned out to be very efficient in signal processing.
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为什么深度学习比支持向量机更有效,以及它与信号处理中的稀疏性技术有何关系
几十年前,传统的神经网络是最有效的机器学习技术。然后我们发现,一般来说,另一种叫做支持向量机的技术更有效。最近,一种被称为深度学习的新技术被证明是最有效的技术。这些都是经验观察,但我们如何解释它们——从而使相应的结论更可靠?本文为上述实证比较提供了一种可能的理论解释。这种解释使我们能够解释另一个经验事实——稀疏性技术在信号处理中非常有效。
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