Nonlinear eigenproblems in data analysis: Balanced graph cuts and the RatioDCA-Prox

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Abstract

It has been recently shown that a large class of balanced graph cuts allows for an exact relaxation into a nonlinear eigenproblem. We review briefly some of these results and propose a family of algorithms to compute nonlinear eigenvectors which encompasses previous work as special cases. We provide a detailed analysis of the properties and the convergence behavior of these algorithms and then discuss their application in the area of balanced graph cuts.

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Jost, L., Setzer, S., & Hein, M. (2014). Nonlinear eigenproblems in data analysis: Balanced graph cuts and the RatioDCA-Prox. Lecture Notes in Computational Science and Engineering, 102, 263–279. https://doi.org/10.1007/978-3-319-08159-5_13

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