Title
Online Structure Learning for Traffic Management.
Abstract
Most event recognition approaches in sensor environments are based on manually constructed patterns for detecting events, and lack the ability to learn relational structures in the presence of uncertainty. We describe the application of (mathtt {OSL}alpha ), an online structure learner for Markov Logic Networks that exploits Event Calculus axiomatizations, to event recognition for traffic management. Our empirical evaluation is based on large volumes of real sensor data, as well as synthetic data generated by a professional traffic micro-simulator. The experimental results demonstrate that (mathtt {OSL}alpha ) can effectively learn traffic congestion definitions and, in some cases, outperform rules constructed by human experts.
Year
Venue
Field
2016
ILP
Event calculus,Computer science,Structure learning,Markov chain,Exploit,Synthetic data,Artificial intelligence,Traffic congestion,Machine learning,Event recognition
DocType
Citations 
PageRank 
Conference
0
0.34
References 
Authors
0
3
Name
Order
Citations
PageRank
Evangelos Michelioudakis100.34
Alexander Artikis2114282.51
Georgios Paliouras31510120.93