Revisiting the Sample Complexity of Sparse Spectrum Approximation of Gaussian Processes

11/17/2020
by   Quang Minh Hoang, et al.
0

We introduce a new scalable approximation for Gaussian processes with provable guarantees which hold simultaneously over its entire parameter space. Our approximation is obtained from an improved sample complexity analysis for sparse spectrum Gaussian processes (SSGPs). In particular, our analysis shows that under a certain data disentangling condition, an SSGP's prediction and model evidence (for training) can well-approximate those of a full GP with low sample complexity. We also develop a new auto-encoding algorithm that finds a latent space to disentangle latent input coordinates into well-separated clusters, which is amenable to our sample complexity analysis. We validate our proposed method on several benchmarks with promising results supporting our theoretical analysis.

READ FULL TEXT
research
01/31/2012

Gaussian Processes for Sample Efficient Reinforcement Learning with RMAX-like Exploration

We present an implementation of model-based online reinforcement learnin...
research
10/26/2020

The sample complexity of level set approximation

We study the problem of approximating the level set of an unknown functi...
research
12/07/2020

Deep Gaussian Processes for geophysical parameter retrieval

This paper introduces deep Gaussian processes (DGPs) for geophysical par...
research
12/21/2022

A Theoretical Study of The Effects of Adversarial Attacks on Sparse Regression

This paper analyzes ℓ_1 regularized linear regression under the challeng...
research
05/28/2019

Sample Complexity of Sample Average Approximation for Conditional Stochastic Optimization

In this paper, we study a class of stochastic optimization problems, ref...
research
07/18/2022

On the Study of Sample Complexity for Polynomial Neural Networks

As a general type of machine learning approach, artificial neural networ...
research
05/10/2021

SigGPDE: Scaling Sparse Gaussian Processes on Sequential Data

Making predictions and quantifying their uncertainty when the input data...

Please sign up or login with your details

Forgot password? Click here to reset