An Experimental Study on Learning with Good Edit Similarity Functions

A. Bellet, M. Sebban, Amaury Habrard
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引用次数: 6

Abstract

Similarity functions are essential to many learning algorithms. To allow their use in support vector machines (SVM), i.e., for the convergence of the learning algorithm to be guaranteed, they must be valid kernels. In the case of structured data, the similarities based on the popular edit distance often do not satisfy this requirement, which explains why they are typically used with k-nearest neighbor (k-NN). A common approach to use such edit similarities in SVM is to transform them into potentially (but not provably) valid kernels. Recently, a different theory of learning with (e,g,t) -good similarity functions was proposed, allowing the use of non-kernel similarity functions. Moreover, the resulting models are supposedly sparse, as opposed to standard SVM models that can be unnecessarily dense. In this paper, we study the relevance and applicability of this theory in the context of string edit similarities. We show that they are naturally good for a given string classification task and provide experimental evidence that the obtained models not only clearly outperform the k-NN approach, but are also competitive with standard SVM models learned with state-of-the-art edit kernels, while being much sparser.
基于良好编辑相似函数的学习实验研究
相似函数在许多学习算法中是必不可少的。为了允许它们在支持向量机(SVM)中使用,即为了保证学习算法的收敛性,它们必须是有效的核。在结构化数据的情况下,基于流行编辑距离的相似性通常不能满足这一要求,这解释了为什么它们通常与k-最近邻(k-NN)一起使用。在支持向量机中使用这种编辑相似性的一种常见方法是将它们转换为潜在(但不能证明)有效的核。最近,提出了一种使用(e,g,t) -良好相似函数的不同学习理论,允许使用非核相似函数。此外,所得到的模型应该是稀疏的,而不是标准的SVM模型,它可能是不必要的密集。在本文中,我们研究了该理论在字符串编辑相似度背景下的相关性和适用性。我们证明了它们对于给定的字符串分类任务自然是好的,并提供了实验证据,证明所获得的模型不仅明显优于k-NN方法,而且与使用最先进的编辑核学习的标准SVM模型竞争,同时更加稀疏。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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