An Ensemble-based p2p Framework for the Detection of Deviant Business Process Instances
Conference Paper
Publication Date:
2018
abstract:
The problem of discriminating "deviant" traces
(i.e., traces diverging from normal/desired outcomes, such as
frauds, faults, SLA violations) in the execution log of a business
process can be faced by extracting a classification model for
the traces, after mapping them onto some suitable feature
space. An ensemble-learning approach was recently proposed
that trains multiple base learners on different vector-space views
of the given log, and a probabilistic meta-model that combines
the predictions of the discovered base classifiers. However, the
sequential centralised implementation of this learning approach
makes it unsuitable for real applications, where large volumes
of traces are produced continuously, while both deviant and
normal behaviours tend to change over the time. We here
propose an online deviance detection framework that leverages a
novel incremental learning scheme, which extracts different base
models from different chunks of a trace stream, and dynamically
combines them in an ensemble model. Notably, the system is based
upon a P2P architecture that allows it to distribute the entire
learning procedure among multiple nodes. Preliminary tests on
a real-life log confirmed the validity of the approach, in terms of
both effectiveness and efficiency.
Iris type:
04.01 Contributo in Atti di convegno
Keywords:
Business process intelligence; Ensemble-based Classification; Deviance detection; Peer-to-peer architectures.
List of contributors: