Large scale tensor regression using kernels and variational inference
We outline an inherent flaw of tensor factorization models when latent factors are expressed as a function of side information and propose a novel method to mitigate this. We coin our methodology Kernel Fried Tensor (KFT) and present it as a large-scale prediction and forecasting tool for high dimen...
Hauptverfasser: | Hu, R, Nicholls, GK, Sejdinovic, D |
---|---|
Format: | Journal article |
Sprache: | English |
Veröffentlicht: |
Springer Nature
2021
|
Ähnliche Einträge
-
Large-scale kernel methods for independence testing
von: Zhang, Q, et al.
Veröffentlicht: (2017) -
Large scale methods for kernels, causal inference and survival modelling
von: Hu, R
Veröffentlicht: (2022) -
Causal inference via Kernel deviance measures
von: Mitrovic, J, et al.
Veröffentlicht: (2018) -
Optimal kernel choice for large-scale two-sample tests
von: Gretton, A, et al.
Veröffentlicht: (2012) -
DR-ABC: Approximate Bayesian computation with kernel-based distribution regression
von: Mitrovic, J, et al.
Veröffentlicht: (2016)