Projekteja vuodessa
Abstrakti
The Hilbert–space Gaussian Process (hgp) approach offers a hyperparameter-independent
basis function approximation for speeding up Gaussian Process (gp) inference by projecting
the gp onto M basis functions. These properties result in a favorable data-independent O(M 3) computational complexity during hyperparameter optimization but require a dominating one-time precomputation of the precision matrix costing O(N M 2) operations. In this paper, we lower this dominating computational complexity to O(N M ) with no additional approximations. We can do this because we realize that the precision matrix can be split into a sum of Hankel–Toeplitz matrices, each having O(M ) unique entries. Based on this realization we propose computing only these unique entries at O(N M ) costs. Further, we develop two theorems that prescribe sufficient conditions for the complexity reduction to hold generally for a wide range of other approximate gp models, such as the Variational Fourier Feature (vff) approach. The two theorems do this with no assumptions on the data and no additional approximations of the gp models themselves. Thus, our contribution provides a pure speed-up of several existing, widely used, gp approximations, without further approximations.
basis function approximation for speeding up Gaussian Process (gp) inference by projecting
the gp onto M basis functions. These properties result in a favorable data-independent O(M 3) computational complexity during hyperparameter optimization but require a dominating one-time precomputation of the precision matrix costing O(N M 2) operations. In this paper, we lower this dominating computational complexity to O(N M ) with no additional approximations. We can do this because we realize that the precision matrix can be split into a sum of Hankel–Toeplitz matrices, each having O(M ) unique entries. Based on this realization we propose computing only these unique entries at O(N M ) costs. Further, we develop two theorems that prescribe sufficient conditions for the complexity reduction to hold generally for a wide range of other approximate gp models, such as the Variational Fourier Feature (vff) approach. The two theorems do this with no assumptions on the data and no additional approximations of the gp models themselves. Thus, our contribution provides a pure speed-up of several existing, widely used, gp approximations, without further approximations.
Alkuperäiskieli | Englanti |
---|---|
Sivumäärä | 21 |
Julkaisu | Transactions on Machine Learning Research |
Tila | Sähköinen julkaisu (e-pub) ennen painettua julkistusta - heinäk. 2024 |
OKM-julkaisutyyppi | A1 Alkuperäisartikkeli tieteellisessä aikakauslehdessä |
Sormenjälki
Sukella tutkimusaiheisiin 'Exploiting Hankel-Toeplitz Structures for Fast Computation of Kernel Precision Matrices'. Ne muodostavat yhdessä ainutlaatuisen sormenjäljen.Projektit
- 1 Aktiivinen
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Solin Arno /AoF Fellow Salary: Probabilistic principles for latent space exploration in deep learning
Solin, A. (Vastuullinen tutkija) & Mereu, R. (Projektin jäsen)
01/09/2021 → 31/08/2026
Projekti: Academy of Finland: Other research funding