ISSN: 1314-3344
+44-77-2385-9429
Multiple kernel learning algorithms typically optimize kernel alignment, structural risk minimization, and Bayesian functions. However, they have limitations, including inapplicability to multi-class classification, high time complexity, and no analytic solution. Analyzing clustering and classification similarities, we propose a novel Clustering-Based Multiple Kernel Learning (CBMKL) algorithm for multi-class classification. This algorithm transforms input space to high-dimension feature space using multiple kernel mapping functions. It estimates base kernel function weights and constructs the decision function using clustering objectives. This CBMKL algorithm has several advantages.
• It handles multi-class problems directly.
• This algorithm has an analytical solution, avoiding approximate solutions from sampling methods.
• It also has polynomial time complexity. Experiments on two datasets illustrate these advantages.
Published Date: 2024-09-12; Received Date: 2024-08-10