核机中所有公共子序列的研究

Zhiting Guo, Hui Wang, Zhiwen Lin, Xiaoxia Guo
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引用次数: 2

摘要

统计所有公共子序列(ACS)被提出作为一种相似性度量,它与序列核(SK)在概念上有所不同,ACS只考虑子序列的出现次数,而SK则使用子序列出现的频率。这种差异明显导致了显著的性能变化。ACS在kNN分类器中具有很强的竞争力,但其在核机上的性能研究却很少。这是由于ACS是否适合内核分类器这一事实尚不清楚。为此,本文首先证明了ACS是一个有效的内核,并进行了细致的分析。然后,通过与支持向量机中的SK核的比较,进一步证明了ACS核是一个很好的核。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A study of all common subsequences in kernel machine
Counting all common subsequences (ACS) was proposed as a similarity measurement, which is conceptually different from the sequence kernel (SK) in that ACS only considers the occurrence of subsequences while SK uses the frequency of occurrences of subsequences. This difference evidently results in significant performance variety. ACS has been very competitive in the kNN classifier, however, its performance with kernel machine has been rarely investigated. This is due to the fact that whether ACS is suitable for a kernel classifier is not clear. To this end, this paper firstly proves that ACS is a valid kernel, with a delicate analysis. Then, ACS is further proved to be a good kernel with a comparison with SK in the support vector machine.
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