Sensitivity analysis beyond linearity

12/20/2018
by   Manuele Leonelli, et al.
0

A wide array of graphical models can be parametrised to have atomic probabilities represented by monomial functions. Such monomial structure has proven very useful when studying robustness under the assumption of a multilinear model where all monomial have either zero or one exponents. Robustness in probabilistic graphical models is usually investigated by varying some of the input probabilities and observing the effects of these on output probabilities of interest. Here the assumption of multilinearity is relaxed and a general approach for sensitivity analysis in non-multilinear models is presented. It is shown that in non-multilinear models sensitivity functions have a polynomial form, conversely to multilinear models where these are simply linear. The form of various divergences and distances under different covariation schemes is also formally derived. Proportional covariation is proven to be optimal in non-multilinear models under some specific choices of varied parameters. The methodology is illustrated throughout by an educational application.

READ FULL TEXT
research
12/18/2018

A geometric characterisation of sensitivity analysis in monomial models

Sensitivity analysis in probabilistic discrete graphical models is usual...
research
09/27/2018

Model-Preserving Sensitivity Analysis for Families of Gaussian Distributions

The accuracy of probability distributions inferred using machine-learnin...
research
09/25/2013

Stratified Graphical Models - Context-Specific Independence in Graphical Models

Theory of graphical models has matured over more than three decades to p...
research
07/11/2012

Variational Chernoff Bounds for Graphical Models

Recent research has made significant progress on the problem of bounding...
research
06/13/2012

Inference for Multiplicative Models

The paper introduces a generalization for known probabilistic models suc...
research
10/26/2021

Global sensitivity analysis of rare event probabilities

By their very nature, rare event probabilities are expensive to compute;...

Please sign up or login with your details

Forgot password? Click here to reset