P185
Compliance monitoring in business processes: Functionalities, application, and tool-support.Interacting agents through a web-based health serviceflow management system.A pattern-based analysis of clinical computer-interpretable guideline modeling languages.Process mining techniques: an application to stroke care.Dealing with concept drifts in process mining.Process mining: a two-step approach to balance between underfitting and overfittingScalable process discovery and conformance checking.Analyzing inter-organizational business processesAssessing Process Discovery Scalability in Data Intensive EnvironmentsBISE and the Engineering SciencesBuilding instance graphs for highly variable processesConnecting Databases with Process Mining: A Meta Model and ToolsetDecision Mining Revisited - Discovering Overlapping RulesDetecting Deviating Behaviors Without ModelsDisciplinary Pluralism, Flagship Conferences, and Journal SubmissionsDiscovering and Exploring State-Based Models for Multi-perspective ProcessesDiscovering Queues from Event Logs with Varying Levels of InformationEnabling process mining on sensor data from smart productsFrom Low-Level Events to Activities - A Pattern-Based ApproachHandling Duplicated Tasks in Process Discovery by Refining Event LabelsMeasuring the Precision of Multi-perspective Process ModelsOntology-Driven Extraction of Event Logs from Relational DatabasesProcess MiningUsing Life Cycle Information in Process DiscoveryA general process mining framework for correlating, predicting and clustering dynamic behavior based on event logsA recommendation system for predicting risks across multiple business process instancesAn alignment-based framework to check the conformance of declarative process models and to preprocess event-log dataAvoiding Over-Fitting in ILP-Based Process DiscoveryBalanced multi-perspective checking of process conformanceBig software on the run: in vivo software analytics based on process mining (keynote)Business Process Simulation Survival GuideChange Point Detection and Dealing with Gradual and Multi-order Dynamics in Process MiningChange your history: Learning from event logs to improve processesComparative Process Mining in Education: An Approach Based on Process CubesConfiguring Configurable Process Models Made Easier: An Automated ApproachConformance Checking Based on Partially Ordered Event DataDeclarative process mining in healthcareDecomposed Process Mining: The ILP CaseDiscovery of Frequent Episodes in Event LogsEvent interval analysis: Why do processes take time?
P50
Q36087992-29A0F662-333C-4ED0-B79C-29FA1F212324Q38441973-56283DC3-1045-4D2E-936B-7441ACE9158CQ41835255-E374BD16-0A03-4116-82DA-62768FD29CDBQ44867115-53e05f9d-418c-5e3b-5822-884b971091f5Q45365765-CB551045-DE5F-4027-AA34-0691AE221FE3Q54957362-af711c89-4ba6-3832-a83e-0a9b173f5e79Q55198557-146C62CD-EA19-4FF2-BFFE-F97BA4CD9596Q57004553-FF667D77-0ADD-458E-8CB0-DDE3E8C6795DQ57004560-6AD1A3DF-9AA2-4BCC-8D13-EB221DA541ABQ57004564-7B129150-ACA0-4BDD-9FFE-83B0F08E6E66Q57004571-D85EBD78-3A06-4665-ACF3-BFC24BB0A848Q57004576-1914DCB4-BF98-4365-9F55-4F7416FCCD46Q57004582-7A08678C-7E98-4B6E-B290-F8D03D7C278CQ57004588-B535CAC7-5792-4305-8D9E-095B0968454AQ57004591-CF104338-6F2B-41F9-866B-F43A7905A9CFQ57004598-4EFDE04E-2062-4889-ADAA-C01C21F98057Q57004603-1FC212C5-7762-4844-8069-22B4F0DD74CCQ57004608-D2AD1798-DD83-494E-86BE-F0560325B8E6Q57004617-43E35A14-6B50-40B3-A538-7150D8F6F547Q57004622-95CADA82-D0FC-497C-B1CC-E7F496849043Q57004626-88B0A268-1DF9-4E41-AF2A-B2115282641AQ57004634-919934EA-30E4-4BBE-B948-C78ABD0EEAEAQ57004639-8EBEA4FA-D0A7-411A-9174-EEAE47AF4331Q57004650-D3E295AB-FE09-4CED-AEEE-1B779B04326EQ57004653-4EF776D9-F959-4DBB-B553-7B156D6BDF02Q57004659-4D9A92A6-EBA4-4948-BB81-8EDEFCFDA05FQ57004665-58F6AEE8-BC6C-4A29-86D3-256174EACC1AQ57004671-A3AECE41-08D7-4F1C-99B4-1618610E2686Q57004677-57DC9818-4F1F-408A-9104-AB4812DED9C1Q57004681-01639D45-0169-44D9-9724-F1A327FA4374Q57004689-793D8744-2389-44AD-B0E2-5BD19863C3DCQ57004690-96D32557-9EF8-486B-9ABA-0DA58B4C5B96Q57004694-4D761254-28FB-47E4-942C-86304FA8B23EQ57004698-4F9BABA3-5496-46F5-9915-836D2CE4C8AAQ57004703-7658FDE5-2022-4362-A25D-7FAC3CAFE6BFQ57004710-C77A8F40-D44B-4EEC-B588-538F391F276DQ57004713-02939F68-DB7C-4C6A-85B6-CA2E9DDBC19BQ57004716-A0209933-93D1-4954-9BBB-D4BB2B7C6580Q57004721-73623170-53AA-4333-B6D2-598C2E006B9BQ57004730-AC6CA657-0CD9-4416-A4A5-645508724BBE
P50
description
Dutch computer scientist and professor
@en
Nederlands informaticus
@nl
niederländischer Informatiker
@de
name
Wil van der Aalst
@ast
Wil van der Aalst
@ca
Wil van der Aalst
@de
Wil van der Aalst
@en
Wil van der Aalst
@es
Wil van der Aalst
@fr
Wil van der Aalst
@nl
Wil van der Aalst
@pt
Wil van der Aalst
@sl
type
label
Wil van der Aalst
@ast
Wil van der Aalst
@ca
Wil van der Aalst
@de
Wil van der Aalst
@en
Wil van der Aalst
@es
Wil van der Aalst
@fr
Wil van der Aalst
@nl
Wil van der Aalst
@pt
Wil van der Aalst
@sl
altLabel
W. van der Aalst
@nl
Wil M. P. van der Aalst
@de
Wil M. P. van der Aalst
@en
Willibrordus Martinus Pancratius van der Aalst
@en
prefLabel
Wil van der Aalst
@ast
Wil van der Aalst
@ca
Wil van der Aalst
@de
Wil van der Aalst
@en
Wil van der Aalst
@es
Wil van der Aalst
@fr
Wil van der Aalst
@nl
Wil van der Aalst
@pt
Wil van der Aalst
@sl