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On Graph Kernels: Hardness Results and Efficient Alternatives

机译:在图形内核上:硬度结果和有效的替代方法

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As most 'real-world' data is structured, research in kernel methods has begun investigating kernels for various kinds of structured data. One of the most widely used tools for modeling structured data are graphs. An interesting and important challenge is thus to investigate kernels on instances that are represented by graphs. So far, only very specific graphs such as trees and strings have been considered. This paper investigates kernels on labeled directed graphs with general structure. It is shown that computing a strictly positive definite graph kernel is at least as hard as solving the graph isomorphism problem. It is also shown that computing an inner product in a feature space indexed by all possible graphs, where each feature counts the number of subgraphs isomorphic to that graph, is NP-hard. On the other hand, inner products in an alternative feature space, based on walks in the graph, can be computed in polynomial time. Such kernels are defined in this paper.
机译:由于大多数“实际”数据都是结构化的,因此内核方法的研究已开始研究各种结构化数据的内核。图是用于结构化数据建模的最广泛使用的工具之一。因此,一个有趣且重要的挑战是研究图形表示的实例上的内核。到目前为止,仅考虑了非常具体的图形,例如树和字符串。本文研究具有一般结构的带标记有向图上的核。结果表明,计算严格正定图核至少与解决图同构问题一样困难。还表明,在由所有可能的图索引的特征空间中计算内部乘积是NP-hard的,其中每个特征都对与该图同构的子图的数量进行计数。另一方面,可以在多项式时间内计算基于图的走动的替代特征空间中的内积。本文定义了此类内核。

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