<?xml version="1.0" encoding="UTF-8"?><rdf:RDF xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#" xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:dcq="http://purl.org/dc/terms/"><records count="1" morepages="false" start="1" end="1"><record rownumber="1"><dc:product_type>Conference Paper</dc:product_type><dc:title>Improving Process Discovery Results by Filtering Out Outliers from Event Logs with Hidden Markov Models</dc:title><dc:creator>Zhang, Zhenyu; Hildebrant, Ryan; Asgarinejad, Fatemeh; Venkatasubramanian, Nalini; Ren, Shangping</dc:creator><dc:corporate_author/><dc:editor/><dc:description>Process Mining is a technique for extracting process models
from event logs. Event logs contain abundant explicit information related
to events, such as the timestamp and the actions that trigger the
event. Much of the existing process mining research has focused on
discovering the process models behind these event logs. However, Process
Mining relies on the assumption that these event logs contain accurate
representations of an ideal set of processes. These ideal sets of processes
imply that the information contained within the log represents what
is really happening in a given environment. However, many of these
event logs might contain noisy, infrequent, missing, or false process
information that is generally classified as outliers. Extending beyond
process discovery, there are many research efforts towards cleaning the
event logs to deal with these outliers. In this paper, we present an
approach that uses hidden Markov models to filter out outliers from event
logs prior to applying any process discovery algorithms. Our proposed
filtering approach can detect outlier behavior, and consequently, help
process discovery algorithms return models that better reflect the real
processes within an organization. Furthermore, we show that this filtering
method outperforms two commonly used filtering approaches, namely the
Matrix Filter approach and the Anomaly Free Automation approach for
both artificial event logs and real-life event logs.</dc:description><dc:publisher/><dc:date>2021-09-01</dc:date><dc:nsf_par_id>10311278</dc:nsf_par_id><dc:journal_name>2021 IEEE 23rd Conference on Business Informatics (CBI)</dc:journal_name><dc:journal_volume/><dc:journal_issue/><dc:page_range_or_elocation/><dc:issn/><dc:isbn/><dc:doi>https://doi.org/10.1109/CBI52690.2021.00028</dc:doi><dcq:identifierAwardId>1952247; 1952225</dcq:identifierAwardId><dc:subject/><dc:version_number/><dc:location/><dc:rights/><dc:institution/><dc:sponsoring_org>National Science Foundation</dc:sponsoring_org></record></records></rdf:RDF>