TY - JOUR A1 - Sonnenberg, Christoph A1 - Bannert, Maria T1 - Discovering the Effects of Metacognitive Prompts on the Sequential Structure of SRL-Processes Using Process Mining Techniques JF - Journal of Learning Analystics N2 - According to research examining self‐regulated learning (SRL), we regard individual regulation as a specific sequence of regulatory activities. Ideally, students perform various learning activities, such as analyzing, monitoring, and evaluating cognitive and motivational aspects during learning. Metacognitive prompts can foster SRL by inducing regulatory activities, which, in turn, improve the learning outcome. However, the specific effects of metacognitive support on the dynamic characteristics of SRL are not understood. Therefore, the aim of our study was to analyze the effects of metacognitive prompts on learning processes and outcomes during a computer‐based learning task. Participants of the experimental group (EG, n=35) were supported by metacognitive prompts, whereas participants of the control group (CG, n=35) received no support. Data regarding learning processes were obtained by concurrent think‐aloud protocols. The EG exhibited significantly more metacognitive learning events than did the CG. Furthermore, these regulatory activities correspond positively with learning outcomes. Process mining techniques were used to analyze sequential patterns. Our findings indicate differences in the process models of the EG and CG and demonstrate the added value of taking the order of learning activities into account by discovering regulatory patterns. KW - HeuristicsMiner algorithm KW - self‐regulated learning KW - metacognitive prompting KW - process analysis KW - process mining KW - think‐aloud data Y1 - 2015 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-152362 UR - http://learning-analytics.info/journals/index.php/JLA/article/view/4090 SN - 1929‐7750 N1 - Dieser Artikel ist auch Bestandteil der Dissertation: Sonnenberg, Christoph: Analyzing Technology-Enhanced Learning Processes: What Can Process Mining Techniques Contribute to the Evaluation of Instructional Support?. - Würzburg, Univ., Diss., 2017. - [online]. URN: urn:nbn:de:bvb:20-opus-152354 VL - 2 IS - 1 ER - TY - JOUR A1 - Sonnenberg, Christoph A1 - Bannert, Maria T1 - Evaluating the Impact of Instructional Support Using Data Mining and Process Mining: A Micro-Level Analysis of the Effectiveness of Metacognitive Prompts JF - Journal of Educational Data Mining N2 - In computer-supported learning environments, the deployment of self-regulatory skills represents an essential prerequisite for successful learning. Metacognitive prompts are a promising type of instructional support to activate students’ strategic learning activities. However, despite positive effects in previous studies, there are still a large number of students who do not benefit from provided support. Therefore, it may be necessary to consider explicitly the conditions under which a prompt is beneficial for a student, i.e., so-called adaptive scaffolding. The current study aims to (i) classify the effectiveness of prompts on regulatory behavior, (ii) investigate the correspondence of the classification with learning outcome, and (iii) discover the conditions under which prompts induce regulatory activities (i.e., the proper temporal positioning of prompts). The think-aloud data of an experiment in which metacognitive prompts supported the experimental group (n = 35) was used to distinguish between effective and non-effective prompts. Students’ activities preceding the prompt presentation were analyzed using data mining and process mining techniques. The results indicate that approximately half of the presented prompts induced metacognitive learning activities as expected. Moreover, the number of induced monitoring activities correlates positively with transfer performance. Finally, the occurrence of orientation and monitoring activities, which are not well-embedded in the course of learning, increases the effectiveness of a presented prompt. In general, our findings demonstrate the benefits of investigating metacognitive support using process data, which can provide implications for the design of effective instructional support. KW - process mining KW - think-aloud data KW - metacognitive prompting KW - micro-level analysis KW - instructional support KW - self-regulated learning Y1 - 2016 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-152375 UR - http://www.educationaldatamining.org/JEDM/index.php/JEDM/article/view/JEDM2016-8-2-3 N1 - Dieser Artikel ist auch Bestandteil der Dissertation: Sonnenberg, Christoph: Analyzing Technology-Enhanced Learning Processes: What Can Process Mining Techniques Contribute to the Evaluation of Instructional Support?. - Würzburg, Univ., Diss., 2017. - [online]. URN: urn:nbn:de:bvb:20-opus-152354 VL - 8 IS - 2 ER - TY - JOUR A1 - Oberdorf, Felix A1 - Schaschek, Myriam A1 - Weinzierl, Sven A1 - Stein, Nikolai A1 - Matzner, Martin A1 - Flath, Christoph M. T1 - Predictive end-to-end enterprise process network monitoring JF - Business & Information Systems Engineering N2 - Ever-growing data availability combined with rapid progress in analytics has laid the foundation for the emergence of business process analytics. Organizations strive to leverage predictive process analytics to obtain insights. However, current implementations are designed to deal with homogeneous data. Consequently, there is limited practical use in an organization with heterogeneous data sources. The paper proposes a method for predictive end-to-end enterprise process network monitoring leveraging multi-headed deep neural networks to overcome this limitation. A case study performed with a medium-sized German manufacturing company highlights the method’s utility for organizations. KW - predictive process analytics KW - predictive process monitoring KW - deep learning KW - machine learning KW - neural network KW - business process anagement KW - process mining Y1 - 2023 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:bvb:20-opus-323814 SN - 2363-7005 VL - 65 IS - 1 ER -