Özöğür Akyüz, S.Üstünkar, GürkanWeber, G. W.2016-06-292016-06-292016-051793-6381http://hdl.handle.net/10679/4077https://doi.org/10.1142/S0218001416510046Due to copyright restrictions, the access to the full text of this article is only available via subscription.The interplay of machine learning (ML) and optimization methods is an emerging field of artificial intelligence. Both ML and optimization are concerned with modeling of systems related to real-world problems. Parameter selection for classification models is an important task for ML algorithms. In statistical learning theory, cross-validation (CV) which is the most well-known model selection method can be very time consuming for large data sets. One of the recent model selection techniques developed for support vector machines (SVMs) is based on the observed test point margins. In this study, observed margin strategy is integrated into our novel infinite kernel learning (IKL) algorithm together with multi-local procedure (MLP) which is an optimization technique to find global solution. The experimental results show improvements in accuracy and speed when comparing with multiple kernel learning (MKL) and semi-infinite linear programming (SILP) with CV.engrestrictedAccessAdapted infinite kernel learning by multi-local algorithmarticle30400037509260000310.1142/S0218001416510046Infinite kernel learningSupport vector machinesOptimizationMulti-local procedureMultiple kernel learningSimmulated annealing2-s2.0-84960352327