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Laplace Approximation for Bayesian Tensor Network Kernel Machines

About

Uncertainty estimation is essential for robust decision-making in the presence of ambiguous or out-of-distribution inputs. Gaussian Processes (GPs) are classical kernel-based models that offer principled uncertainty quantification and perform well on small- to medium-scale datasets. Alternatively, formulating the weight space learning problem under tensor network assumptions yields scalable tensor network kernel machines. However, these assumptions break Gaussianity, complicating standard probabilistic inference. This raises a fundamental question: how can tensor network kernel machines provide principled uncertainty estimates? We propose a novel Bayesian Tensor Network Kernel Machine (LA-TNKM) that employs a (linearized) Laplace approximation for Bayesian inference. A comprehensive set of numerical experiments shows that the proposed method consistently matches or surpasses Gaussian Processes and Bayesian Neural Networks (BNNs) across diverse UCI regression benchmarks, highlighting both its effectiveness and practical relevance.

Albert Saiapin, Kim Batselier• 2026

Related benchmarks

TaskDatasetResultRank
RegressionUCI NAVAL (test)
Negative Log Likelihood-1.16
42
RegressionEnergy UCI (test)
RMSE0.05
37
RegressionBoston UCI (test)
RMSE0.63
36
RegressionUCI KIN8NM (test)--
25
RegressionUCI Energy 10% (test)
NLL-1.4
9
RegressionUCI Yacht (10% test)
NLL-0.52
9
RegressionUCI Concrete 10% (test)
NLL0.82
9
RegressionUCI Red Wine 10% (test)
NLL1.24
9
RegressionUCI Power 10% (test)
NLL-0.01
8
RegressionUCI Protein 10% (test)
NLL1.06
8
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