Savaşlı, Ahmet ÇağatayTütüncü, DamlaNdigande, Alain PatrickÖzer, Sedat2023-11-062023-11-062023http://hdl.handle.net/10679/8933https://doi.org/10.1109/SIU59756.2023.10224015Meta-learning aims to apply existing models on new tasks where the goal is 'learning to learn' so that learning from a limited amount of labeled data or learning in a short amount of time is possible. Deep Kernel Transfer (DKT) is a recently proposed meta-learning approach based on Bayesian framework. DKT's performance depends on the used kernel functions and it has two implementations, namely DKT and GPNet. In this paper, we use a large set of kernel functions on both DKT and GPNet implementations for two regression tasks to study their performances and train them under different optimizers. Furthermore, we compare the training time of both implementations to clarify the ambiguity in terms of which algorithm runs faster for the regression based tasks.engrestrictedAccessPerformance analysis of meta-learning based bayesian deep kernel transfer methods for regression tasksconferenceObject00106257100022510.1109/SIU59756.2023.10224015Deep kernel transferFew-shot learningKernel learningMeta-learningRegression2-s2.0-85173554810