Adaptive diffusion kernel learning from biological networks for protein function prediction |
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Authors: | Liang Sun Shuiwang Ji Jieping Ye |
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Affiliation: | (1) Center for Evolutionary Functional Genomics, The Biodesign Institute, Arizona State University, Tempe, AZ, USA;(2) Department of Computer Science and Engineering, Arizona, State University, Tempe, AZ, USA |
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Abstract: | Background Machine-learning tools have gained considerable attention during the last few years for analyzing biological networks for protein function prediction. Kernel methods are suitable for learning from graph-based data such as biological networks, as they only require the abstraction of the similarities between objects into the kernel matrix. One key issue in kernel methods is the selection of a good kernel function. Diffusion kernels, the discretization of the familiar Gaussian kernel of Euclidean space, are commonly used for graph-based data. |
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