Regression with Linear Factored Functions

12/19/2014
by   Wendelin Böhmer, et al.
0

Many applications that use empirically estimated functions face a curse of dimensionality, because the integrals over most function classes must be approximated by sampling. This paper introduces a novel regression-algorithm that learns linear factored functions (LFF). This class of functions has structural properties that allow to analytically solve certain integrals and to calculate point-wise products. Applications like belief propagation and reinforcement learning can exploit these properties to break the curse and speed up computation. We derive a regularized greedy optimization scheme, that learns factored basis functions during training. The novel regression algorithm performs competitively to Gaussian processes on benchmark tasks, and the learned LFF functions are with 4-9 factored basis functions on average very compact.

READ FULL TEXT

page 7

page 9

research
12/16/2022

Cox processes driven by transformed Gaussian processes on linear networks

There is a lack of point process models on linear networks. For an arbit...
research
06/17/2022

On Integrating Prior Knowledge into Gaussian Processes for Prognostic Health Monitoring

Gaussian process regression is a powerful method for predicting states b...
research
09/28/2021

Efficient Fourier representations of families of Gaussian processes

We introduce a class of algorithms for constructing Fourier representati...
research
10/31/2017

Tensor Regression Meets Gaussian Processes

Low-rank tensor regression, a new model class that learns high-order cor...
research
04/04/2019

Meta-Learning Acquisition Functions for Bayesian Optimization

Many practical applications of machine learning require data-efficient b...
research
03/05/2020

SLEIPNIR: Deterministic and Provably Accurate Feature Expansion for Gaussian Process Regression with Derivatives

Gaussian processes are an important regression tool with excellent analy...

Please sign up or login with your details

Forgot password? Click here to reset