merliseclyde / sta701-F23

STA 701S Fall 2023
https://merliseclyde.github.io/sta701-F23/
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Title & Abstract #14

Closed jdnweltz closed 10 months ago

jdnweltz commented 10 months ago

title: "Experimental Designs for Heteroskedastic Variance"

author: "Justin Weltz"

date: "Sep 11, 2023"


Abstract

Most linear experimental design problems assume homogeneous variance although heteroskedastic noise is present in many realistic settings. Let a learner have access to a finite set of measurement vectors $\mathcal{X}\subset \mathbb{R}^d$ that can be probed to receive noisy linear responses of the form $y=x^{\top}\theta^{\ast}+\eta$. Here $\theta^{\ast}\in \mathbb{R}^d$ is an unknown parameter vector, and $\eta$ is independent mean-zero $\sigma_x^2$-sub-Gaussian noise defined by a flexible heteroskedastic variance model, $\sigma_x^2 = x^{\top}\Sigma^{\ast}x$. Assuming that $\Sigma^{\ast}\in \mathbb{R}^{d\times d}$ is an unknown matrix, we propose, analyze and empirically evaluate a novel design for uniformly bounding estimation error of the variance parameters, $\sigma_x^2$. We demonstrate the benefits of this method with two adaptive experimental design problems under heteroskedastic noise, fixed confidence transductive best-arm identification and level-set identification and prove the first instance-dependent lower bounds in these settings. Lastly, we construct near-optimal algorithms and demonstrate the large improvements in sample complexity gained from accounting for heteroskedastic variance in these designs empirically.

Advisor(s)

Alexander Volfovsky and Eric Laber

merliseclyde commented 10 months ago

Thanks - updated on the website. I'm looking forward to the talk!