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Main Authors: Vana, Laura, Visconti, Ennio, Nenzi, Laura, Cadonna, Annalisa, Kastner, Gregor
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2110.01360
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author Vana, Laura
Visconti, Ennio
Nenzi, Laura
Cadonna, Annalisa
Kastner, Gregor
author_facet Vana, Laura
Visconti, Ennio
Nenzi, Laura
Cadonna, Annalisa
Kastner, Gregor
contents We propose an interdisciplinary framework that combines Bayesian predictive inference, a well-established tool in Machine Learning, with Formal Methods rooted in the computer science community. Bayesian predictive inference allows for coherently incorporating uncertainty about unknown quantities by making use of methods or models that produce predictive distributions, which in turn inform decision problems. By formalizing these decision problems into properties with the help of spatio-temporal logic, we can formulate and predict how likely such properties are to be satisfied in the future at a certain location. Moreover, we can leverage our methodology to evaluate and compare models directly on their ability to predict the satisfaction of application-driven properties. The approach is illustrated in an urban mobility application, where the crowdedness in the center of Milan is proxied by aggregated mobile phone traffic data. We specify several desirable spatio-temporal properties related to city crowdedness such as a fault-tolerant network or the reachability of hospitals. After verifying these properties on draws from the posterior predictive distributions, we compare several spatio-temporal Bayesian models based on their overall and property-based predictive performance.
format Preprint
id arxiv_https___arxiv_org_abs_2110_01360
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Bayesian Machine Learning meets Formal Methods: An application to spatio-temporal data
Vana, Laura
Visconti, Ennio
Nenzi, Laura
Cadonna, Annalisa
Kastner, Gregor
Computation
Logic in Computer Science
We propose an interdisciplinary framework that combines Bayesian predictive inference, a well-established tool in Machine Learning, with Formal Methods rooted in the computer science community. Bayesian predictive inference allows for coherently incorporating uncertainty about unknown quantities by making use of methods or models that produce predictive distributions, which in turn inform decision problems. By formalizing these decision problems into properties with the help of spatio-temporal logic, we can formulate and predict how likely such properties are to be satisfied in the future at a certain location. Moreover, we can leverage our methodology to evaluate and compare models directly on their ability to predict the satisfaction of application-driven properties. The approach is illustrated in an urban mobility application, where the crowdedness in the center of Milan is proxied by aggregated mobile phone traffic data. We specify several desirable spatio-temporal properties related to city crowdedness such as a fault-tolerant network or the reachability of hospitals. After verifying these properties on draws from the posterior predictive distributions, we compare several spatio-temporal Bayesian models based on their overall and property-based predictive performance.
title Bayesian Machine Learning meets Formal Methods: An application to spatio-temporal data
topic Computation
Logic in Computer Science
url https://arxiv.org/abs/2110.01360