Optimal designs for discrete choice models via graph Laplacians

08/18/2022
by   Frank Röttger, et al.
0

In discrete choice experiments, the information matrix depends on the model parameters. Therefore, D-optimal designs are only locally optimal in the parameter space. This dependence renders the optimization problem very difficult, as standard theory encodes D-optimality in systems of highly nonlinear equations and inequalities. In this work, we connect design theory for discrete choice experiments with Laplacian matrices of connected graphs. We rewrite the D-optimality criterion in terms of Laplacians via Kirchhoff's matrix tree theorem, and show that its dual has a simple description via the Cayley–Menger determinant of the Farris transform of the Laplacian matrix. This results in a drastic reduction of complexity and allows us to implement a gradient descent algorithm to find locally D-optimal designs. For the subclass of Bradley–Terry paired comparison models, we find a direct link to maximum likelihood estimation for Laplacian-constrained Gaussian graphical models. This implies that every locally D-optimal design is a rational function in the parameter when the design is supported on a chordal graph. Finally, we study the performance of our algorithm and demonstrate its application on real and simulated data.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/24/2020

Optimal Design for Probit Choice Models with Dependent Utilities

In this paper we derive locally D-optimal designs for discrete choice ex...
research
01/08/2019

The semi-algebraic geometry of optimal designs for the Bradley-Terry model

Optimal design theory for nonlinear regression studies local optimality ...
research
09/03/2022

Discontinuities of the Integrated Density of States for Laplacians Associated with Penrose and Ammann-Beenker Tilings

Aperiodic substitution tilings provide popular models for quasicrystals,...
research
06/26/2020

Does the ℓ_1-norm Learn a Sparse Graph under Laplacian Constrained Graphical Models?

We consider the problem of learning a sparse graph under Laplacian const...
research
08/03/2021

Bayesian I-optimal designs for choice experiments with mixtures

Discrete choice experiments are frequently used to quantify consumer pre...
research
08/13/2020

Bilinear matrix equation characterizes Laplacian and distance matrices of weighted trees

It is known from the algebraic graph theory that if L is the Laplacian m...
research
12/20/2022

On the local metric property in multivariate extremes

Many multivariate data sets exhibit a form of positive dependence, which...

Please sign up or login with your details

Forgot password? Click here to reset