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Dokumenttyp:
Masterarbeit
Autor(en):
Onur İskenderoğlu
Titel:
Uncertainty Quantification for Sampled Neural Networks
Abstract:
We present our study of uncertainty quantification for SWIM networks through a Gaussian-process lens. We treat an ensemble’s hidden features as inducing an empirical feature kernel and ask how closely that kernel matches the target kernel. Two complementary targets are selected for this: kernel-family targets (RBF, Linear and Polynomial) and function targets, where the targets are rank-1 kernels from deterministic signals(e.g., cos 4πx, x2 ). On a shared subsample of inputs, we produce correlat...     »
Aufgabensteller:
Felix Dietrich
Betreuer:
Iryna Burak
Jahr:
2025
Hochschule / Universität:
Technical University of Munich
Fakultät:
TUM School of Computation, Information and Technology
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