A neuro-symbolic approach to computing alignments in Causal Nets

Abstract
In the process mining, one of the computationally expensive tasks is computing alignments, i.e., mapping a trace representing the execution of a business process to a model of the business process. This is especially pronounced when using Causal Nets, an expressive model representation requiring making multiple decisions that are not directly reflected in a trace. The goal of the thesis would be to extend an exact approach (e.g., the A* algorithm) with a learned heuristic to efficiently prioritize the algorithm so it performs well in real-world scenarios.
Keywords
process mining
machine learning
neuro-symbolic learning
deep learning
ERC sector(s)
PE Physical Sciences and Engineering
Fields of study
Name supervisor
Jedrzej Potoniec
E-mail
jedrzej.potoniec@put.poznan.pl
Name of Department/Faculty/School
Faculty of Computing and Telecommunications
Name of the host University
Poznan University of Technology (PUT)
EUNICE partner e-mail of destination Research
anna.jaskolska@put.poznan.pl
Country
Poland
Thesis level
Master
Minimal language knowledge requisite
English B2
Thesis mode
Remote
Start date
Length of the research internship
Other
Financial support available (other than E+)
No mobility is required