Multi-view kernel construction

作者:Virginia R. de Sa, Patrick W. Gallagher, Joshua M. Lewis, Vicente L. Malave

摘要

In many problem domains data may come from multiple sources (or views), such as video and audio from a camera or text on and links to a web page. These multiple views of the data are often not directly comparable to one another, and thus a principled method for their integration is warranted. In this paper we develop a new algorithm to leverage information from multiple views for unsupervised clustering by constructing a custom kernel. We generate a multipartite graph (with the number of parts given by the number of views) that induces a kernel we then use for spectral clustering. Our algorithm can be seen as a generalization of co-clustering and spectral clustering and a relative of Kernel Canonical Correlation Analysis. We demonstrate the algorithm on four data sets: an illustrative artificial data set, synthetic fMRI data, voxels from an fMRI study, and a collection of web pages. Finally, we compare its performance to common alternatives.

论文关键词:Spectral clustering, Minimizing-disagreement, Multi-view, fMRI analysis, Kernel, Canonical correlation analysis, CCA, Co-clustering

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论文官网地址:https://doi.org/10.1007/s10994-009-5157-z