MLLGQMAug 9, 2022

Literature Review: Graph Kernels in Chemoinformatics

arXiv:2208.04929v2
Originality Synthesis-oriented
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It provides an overview for researchers in chemoinformatics, but is incremental as it reviews existing methods without new findings.

This review introduces graph kernels and their literature, focusing on applications in chemoinformatics for tasks like drug design by quantifying similarity between graphs.

The purpose of this review is to introduce the reader to graph kernels and the corresponding literature, with an emphasis on those with direct application to chemoinformatics. Graph kernels are functions that allow for the inference of properties of molecules and compounds, which can help with tasks such as finding suitable compounds in drug design. The use of kernel methods is but one particular way two quantify similarity between graphs. We restrict our discussion to this one method, although popular alternatives have emerged in recent years, most notably graph neural networks.

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