Multi-way Interacting Regression via Factorization Machines

09/27/2017
by   Mikhail Yurochkin, et al.
0

We propose a Bayesian regression method that accounts for multi-way interactions of arbitrary orders among the predictor variables. Our model makes use of a factorization mechanism for representing the regression coefficients of interactions among the predictors, while the interaction selection is guided by a prior distribution on random hypergraphs, a construction which generalizes the Finite Feature Model. We present a posterior inference algorithm based on Gibbs sampling, and establish posterior consistency of our regression model. Our method is evaluated with extensive experiments on simulated data and demonstrated to be able to identify meaningful interactions in applications in genetics and retail demand forecasting.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/24/2019

Gibbs posterior convergence and the thermodynamic formalism

In this paper we consider a Bayesian framework for making inferences abo...
research
06/13/2020

Model Based Screening Embedded Bayesian Variable Selection for Ultra-high Dimensional Settings

We develop a Bayesian variable selection method, called SVEN, based on a...
research
06/22/2022

Bayesian nonparametric scalar-on-image regression via Potts-Gibbs random partition models

Scalar-on-image regression aims to investigate changes in a scalar respo...
research
08/31/2016

The Bayesian SLOPE

The SLOPE estimates regression coefficients by minimizing a regularized ...
research
08/17/2021

Memory-Efficient Factorization Machines via Binarizing both Data and Model Coefficients

Factorization Machines (FM), a general predictor that can efficiently mo...
research
01/04/2017

Tensor-on-tensor regression

We propose a framework for the linear prediction of a multi-way array (i...
research
08/11/2022

Identifying microbial drivers in biological phenotypes with a Bayesian Network Regression model

In Bayesian Network Regression models, networks are considered the predi...

Please sign up or login with your details

Forgot password? Click here to reset