On the Convergence of the Concave-Convex Procedure
–Neural Information Processing Systems
The concave-convex procedure (CCCP) is a majorization-minimization algorithm that solves d.c. In machine learning, CCCP is extensively used in many learning algorithms like sparse support vector machines (SVMs), transductive SVMs, sparse principal component analysis, etc. Though widely used in many applications, the convergence behavior of CCCP has not gotten a lot of specific attention. Yuille and Rangarajan analyzed its convergence in their original paper, however, we believe the analysis is not complete. Although the convergence of CCCP can be derived from the convergence of the d.c.
Neural Information Processing Systems
Apr-6-2023, 13:57:05 GMT
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