Graph Kernels and Applications in Protein Classification

Jiang Qiangrong, Xiong Zhikang, Zhai Can

Abstract


Protein classification is a well established research field concerned with the discovery of molecule’s properties through informa­tional techniques. Graph-based kernels provide a nice framework combining machine learning techniques with graph theory. In this paper we introduce a novel graph kernel method for an­notating functional residues in protein structures. A structure­ is first modeled as a protein contact graph, where nodes ­corres­pond to residues and edges connect spatially neighboring resi­dues. In experiments on classification of graph models of proteins, the method based on Weisfeiler-Lehman shortest path kernel with complement graphs outperformed other state-of-art methods.

Keywords


Protein Classification; Machine Learning; Graph Kernels; Weisfeiler-Lehman

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DOI: http://doi.org/10.11591/tijee.v12i10.3904

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