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Spectral Kernels for Classification

机译:分类光谱核

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摘要

Spectral methods, as an unsupervised technique, have been used with success in data mining such as LSI in information retrieval, HITS and PageRank in Web search engines, and spectral clustering in machine learning. The essence of success in these applications is the spectral information that captures the semantics inherent in the large amount of data required during unsupervised learning. In this paper, we ask if spectral methods can also be used in supervised learning, e.g., classification. In an attempt to answer this question, our research reveals a novel kernel in which spectral clustering information can be easily exploited and extended to new incoming data during classification tasks. From our experimental results, the proposed Spectral Kernel has proved to speedup classification tasks without compromising accuracy.
机译:作为无监督技术的光谱方法已被用于数据挖掘的成功,例如LSI在Web搜索引擎中的信息检索,点击和PageRank中,以及机器学习中的光谱聚类。这些应用程序中成功的本质是谱图信息,其捕获在无监督期间所需的大量数据中固有的语义。在本文中,我们询问频谱方法是否也可以用于监督学习,例如分类。在尝试回答这个问题时,我们的研究揭示了一种新的内核,其中可以在分类任务期间容易地利用和扩展到新的传入数据的光谱聚类信息。从我们的实验结果来看,所提出的光谱内核已经证明在不影响精度的情况下加速分类任务。

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