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Learning in Hilbert vs. Banach Spaces: A Measure Embedding Viewpoint

机译:Hilbert与Banach空间中的学习:嵌入观点的度量

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The goal of this paper is to investigate the advantages and disadvantages of learning in Banach spaces over Hilbert spaces. While many works have been carried out in generalizing Hilbert methods to Banach spaces, in this paper, we consider the simple problem of learning a Parzen window classifier in a reproducing kernel Banach space (RKBS)-which is closely related to the notion of embedding probability measures into an RKBS-in order to carefully understand its pros and cons over the Hilbert space classifier. We show that while this generalization yields richer distance measures on probabilities compared to its Hilbert space counterpart, it however suffers from serious computational drawback limiting its practical applicability, which therefore demonstrates the need for developing efficient learning algorithms in Banach spaces.
机译:本文的目的是研究在Banach空间中学习的优势和劣势,而不是Hilbert空间。尽管在将Hilbert方法推广到Banach空间方面已经进行了许多工作,但在本文中,我们考虑了在再生内核Banach空间(RKBS)中学习Parzen窗口分类器的简单问题-与嵌入概率的概念密切相关在RKBS中进行测量,以便仔细了解其在Hilbert空间分类器上的优缺点。我们表明,尽管与广义的希尔伯特空间相比,这种广义化方法在概率上可以得到更丰富的距离度量,但是它遭受了严重的计算缺陷,限制了它的实际适用性,因此证明了在Banach空间中开发有效的学习算法的必要性。

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