5 research outputs found

    Comparative analysis of clustering-based remaining-time predictive process monitoring approaches

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    Predictive process monitoring aims to accurately predict a variable of interest (e.g. remaining time) or the future state of the process instance (e.g. outcome or next step). Various studies have been explored to develop models with greater predictive power. However, comparing the various studies is difficult as different datasets, parameters and evaluation measures have been used. This paper seeks to address this problem with a focus on studies that adopt a clustering-based approach to predict the remaining time to the end of the process instance. A systematic literature review is undertaken to identify existing studies that adopt a clustering-based remaining-time predictive process monitoring approach and performs a comparative analysis to compare and benchmark the output of the identified studies using five real-life event logs

    A Literature Review on Predictive Monitoring of Business Processes

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    Oleme läbi vaadanud mitmesuguseid ennetava jälgimise meetodeid äriprotsessides. Prognoositavate seirete eesmärk on aidata ettevõtetel oma eesmärke saavutada, aidata neil valida õige ärimudel, prognoosida tulemusi ja aega ning muuta äriprotsessid riskantsemaks. Antud väitekirjaga oleme hoolikalt kogunud ja üksikasjalikult läbi vaadanud selle väitekirja teemal oleva kirjanduse. Kirjandusuuringu tulemustest ja tähelepanekutest lähtuvalt oleme hoolikalt kavandanud ennetava jälgimisraamistiku. Raamistik on juhendiks ettevõtetele ja teadlastele, teadustöötajatele, kes uurivad selles valdkonnas ja ettevõtetele, kes soovivad neid tehnikaid oma valdkonnas rakendada.The goal of predictive monitoring is to help the business achieve their goals, help them take the right business path, predict outcomes, estimate delivery time, and make business processes risk aware. In this thesis, we have carefully collected and reviewed in detail all literature which falls in this process mining category. The objective of the thesis is to design a Predictive Monitoring Framework and classify the different predictive monitoring techniques. The framework acts as a guide for researchers and businesses. Researchers who are investigating in this field and businesses who want to apply these techniques in their respective field

    Leveraging Multi-Perspective A priori Knowledge in Predictive Business Process Monitoring

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    Äriprotsesside ennestusseire on valdkond, mis on pühendunud käimasolevate äriprotsesside tuleviku ennustamisele kasutades selleks minevikus sooritatud äriprotsesside kohta käivaid andmeid. Valdav osa uurimustööst selles valdkonnas keskendub ainult seda tüüpi andmetele, jättes tähelepanuta täiendavad teadmised (a priori teadmised) protsessi teostumise kohta tulevikus. Hiljuti pakuti välja lähenemine, mis võimaldab a priori teadmisi kasutada LTL-reeglite näol. Kuid tõsiasjana on antud tehnika limiteeritud äriprotsessi kontroll-voole, jättes välja võimaluse väljendada a priori teadmisi, mis puudutavad lisaks kontrollvoole ka informatsiooni protsessis leiduvate atribuutide kohta (multiperspektiivsed a priori teadmised). Me pakume välja lahenduse, mis võimaldab seda tüüpi teadmiste kasutuse, tehes multiperspektiivseid ennustusi käimasoleva äriprotsessi kohta. Tulemused, milleni jõuti rakendades väljapakutud tehnikat 20-le tehisärilogile ning ühele elulisele ärilogile, näitavad, et meie lähenemine suudab pakkuda konkurentsivõimelisi ennustusi.Predictive business process monitoring is an area dedicated to exploiting past process execution data in order to predict the future unfolding of a currently executed business process instance. Most of the research done in this domain focuses on exploiting the past process execution data only, leaving neglected additional a priori knowledge that might become available at runtime. Recently, an approach was proposed, which allows to leverage a priori knowledge on the control flow in the form of LTL-rules. However, cases exist in which more granular a priori knowledge becomes available about perspectives that go be-yond the pure control flow like data, time and resources (multiperspective a priori knowledge). In this thesis, we propose a technique that enables to leverage multi-perspective a priori knowledge when making predictions of complex sequences, i.e., sequences of events with a subset of the data attributes attached to them. The results, obtained by applying the proposed technique to 20 synthetic logs and 1 real life log, show that the proposed technique is able to overcome state-of-the-art approaches by successfully leveraging multiperspective a priori knowledge
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