Generalization Bounds on Multi-Kernel Learning with Mixed Datasets

Abstract
This paper presents novel generalization bounds for the multi-kernel learning problem. Motivated by applications in sensor networks and spatial-temporal models, we assume that the dataset is mixed where each sample is taken from a finite pool of Markov chains. Our bounds for learning kernels admit dependency on the number of base kernels and dependency on the number of training samples. However, some terms are added to compensate for the dependency among samples compared with existing generalization bounds for multi-kernel learning with i.i.d. datasets.
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