GPM: A Graph Pattern Matching Kernel with Diffusion for Chemical Compound Classification.

Aaron Smalter, Jun Huan, Gerald Lushington
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Abstract

Classifying chemical compounds is an active topic in drug design and other cheminformatics applications. Graphs are general tools for organizing information from heterogenous sources and have been applied in modelling many kinds of biological data. With the fast accumulation of chemical structure data, building highly accurate predictive models for chemical graphs emerges as a new challenge.In this paper, we demonstrate a novel technique called Graph Pattern Matching kernel (GPM). Our idea is to leverage existing frequent pattern discovery methods and explore their application to kernel classifiers (e.g. support vector machine) for graph classification. In our method, we first identify all frequent patterns from a graph database. We then map subgraphs to graphs in the database and use a diffusion process to label nodes in the graphs. Finally the kernel is computed using a set matching algorithm. We performed experiments on 16 chemical structure data sets and have compared our methods to other major graph kernels. The experimental results demonstrate excellent performance of our method.

GPM:用于化合物分类的具有扩散功能的图模式匹配核。
化合物分类是药物设计和其他化学信息学应用中一个活跃的话题。图是组织异源信息的通用工具,已被应用于多种生物数据建模。随着化学结构数据的快速积累,为化学图建立高精度预测模型成为一项新的挑战。我们的想法是利用现有的频繁模式发现方法,并探索将其应用于图分类的核分类器(如支持向量机)。在我们的方法中,我们首先从图数据库中找出所有频繁模式。然后,我们将子图映射到数据库中的图,并使用扩散过程来标记图中的节点。最后使用集合匹配算法计算内核。我们在 16 个化学结构数据集上进行了实验,并将我们的方法与其他主要图核进行了比较。实验结果表明我们的方法性能卓越。
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