TY - THES A1 - Staubitz, Thomas T1 - Gradable team assignments in large scale learning environments BT - collaborative learning, teamwork, and peer assessment in MOOCs BT - Kollaboratives Lernen, Teamarbeit und Peer Assessment in MOOCs N2 - Lifelong learning plays an increasingly important role in many societies. Technology is changing faster than ever and what has been important to learn today, may be obsolete tomorrow. The role of informal programs is becoming increasingly important. Particularly, Massive Open Online Courses have become popular among learners and instructors. In 2008, a group of Canadian education enthusiasts started the first Massive Open Online Courses or MOOCs to prove their cognitive theory of Connectivism. Around 2012, a variety of American start-ups redefined the concept of MOOCs. Instead of following the connectivist doctrine they returned to a more traditional approach. They focussed on video lecturing and combined this with a course forum that allowed the participants to discuss with each other and the teaching team. While this new version of the concept was enormously successful in terms of massiveness—hundreds of thousands of participants from all over the world joined the first of these courses—many educators criticized the re-lapse to the cognitivist model. In the early days, the evolving platforms often did not have more features than a video player, simple multiple-choice quizzes, and the course forum. It soon became a major interest of research to allow the scaling of more modern approaches of learning and teaching for the massiveness of these courses. Hands-on exercises, alternative forms of assessment, collaboration, and teamwork are some of the topics on the agenda. The insights provided by cognitive and pedagogical theories, however, do not necessarily always run in sync with the needs and the preferences of the majority of participants. While the former promote action-learning, hands-on-learning, competence-based-learning, project-based-learning, team-based-learning as the holy grail, many of the latter often rather prefer a more laid-back style of learning, sometimes referred to as edutainment. Obviously, given the large numbers of participants in these courses, there is not just one type of learners. Participants are not a homogeneous mass but a potpourri of individuals with a wildly heterogeneous mix of backgrounds, previous knowledge, familial and professional circumstances, countries of origin, gender, age, and so on. For the majority of participants, a full-time job and/or a family often just does not leave enough room for more time intensive tasks, such as practical exercises or teamwork. Others, however, particularly enjoy these hands-on or collaborative aspects of MOOCs. Furthermore, many subjects particularly require these possibilities and simply cannot be taught or learned in courses that lack collaborative or hands-on features. In this context, the thesis discusses how team assignments have been implemented on the HPI MOOC platform. During the recent years, several experiments have been conducted and a great amount of experience has been gained by employing team assignments in courses in areas, such as Object-Oriented Programming, Design Thinking, and Business Innovation on various instances of this platform: openHPI, openSAP, and mooc.house N2 - In einer Zeit stetigen Wandels und immer schneller wechselnder Technologien nimmt das lebenslange Lernen einen immer höheren Stellenwert ein. Massive Open Online Courses (MOOCs) sind ein hervorragendes Werkzeug, um in kurzer Zeit und mit vergleichsweise wenig Aufwand breite Teile der Bevölkerung zu erreichen. Das HPI leistet mit der eigenen Plattform openHPI und den für diverse Partner betriebenen Plattformen openSAP, OpenWHO und mooc.house sowohl im deutschsprachigen Raum als auch international einen wichtigen Beitrag zu digitalen Aufklärung. In vielen Bereichen ist die Plattform State of the Art und ist den international bekannteren Plattformen zumindest ebenbürtig. Gerade bei der Entwicklung und Anwendung von neuen Lehr- und Lernmethoden und deren technischer Unterstützung ist openHPI auch international richtungsweisend. Die vorliegende Dissertation befasst sich mit den Möglichkeiten der technischen und didaktischen Unterstützung von bewertbaren Aufgabenstellungen in MOOCs, die im Team zu bearbeiten sind. Durch die Größe der Kurse—in der Regel steht hier ein kleines Teaching Team mehreren tausend Teilnehmern gegenüber—ist eine manuelle Bewertung der Teilnehmenden durch die Lehrenden nicht möglich. Hier wird eine der alternativen Möglichkeiten zur Bewertung von Aufgaben, das sogenannte Peer Assessment, eingesetzt und für die speziellen Gegebenheiten der Bearbeitung von Aufgaben im Team angepasst. In den vergangenen fünf Jahren wurde eine iterative Langzeitstudie durchgeführt, bei der verschiedene qualitative und quantitative Methoden der Auswertung eingesetzt wurden. Das Ergebnis dieser Forschungsarbeit ist eine tiefgehende Einsicht in die Mechanismen der Teamarbeit in skalierenden digitalen Lernplattformen sowie eine Reihe von Empfehlungen zur weiteren Verbesserung der kollaborativen Eigenschaften der HPI-Plattformen, die zum Teil bereits umgesetzt wurden bzw. gerade umgesetzt werden. T2 - Benotete Teamaufgaben in skalierenden E-Learning-Systemen KW - massive open online courses KW - MOOC KW - collaborative learning KW - online learning KW - teamwork KW - peer assessment KW - digital learning KW - eLearning KW - collaborative work KW - kollaboratives Lernen KW - kollaboratives Arbeiten KW - digitales Lernen KW - MOOC KW - Massive Open Online Courses KW - Online-Lernen KW - Peer Assessment KW - Teamarbeit KW - eLearning Y1 - 2020 U6 - http://nbn-resolving.de/urn/resolver.pl?urn:nbn:de:kobv:517-opus4-471830 ER - TY - JOUR A1 - Laskov, Pavel A1 - Gehl, Christian A1 - Krüger, Stefan A1 - Müller, Klaus-Robert T1 - Incremental support vector learning: analysis, implementation and applications JF - Journal of machine learning research N2 - Incremental Support Vector Machines (SVM) are instrumental in practical applications of online learning. This work focuses on the design and analysis of efficient incremental SVM learning, with the aim of providing a fast, numerically stable and robust implementation. A detailed analysis of convergence and of algorithmic complexity of incremental SVM learning is carried out. Based on this analysis, a new design of storage and numerical operations is proposed, which speeds up the training of an incremental SVM by a factor of 5 to 20. The performance of the new algorithm is demonstrated in two scenarios: learning with limited resources and active learning. Various applications of the algorithm, such as in drug discovery, online monitoring of industrial devices and and surveillance of network traffic, can be foreseen. KW - incremental SVM KW - online learning KW - drug discovery KW - intrusion detection Y1 - 2006 SN - 1532-4435 VL - 7 SP - 1909 EP - 1936 PB - MIT Press CY - Cambridge, Mass. ER - TY - JOUR A1 - Chen, Junchao A1 - Lange, Thomas A1 - Andjelkovic, Marko A1 - Simevski, Aleksandar A1 - Lu, Li A1 - Krstic, Milos T1 - Solar particle event and single event upset prediction from SRAM-based monitor and supervised machine learning JF - IEEE transactions on emerging topics in computing / IEEE Computer Society, Institute of Electrical and Electronics Engineers N2 - The intensity of cosmic radiation may differ over five orders of magnitude within a few hours or days during the Solar Particle Events (SPEs), thus increasing for several orders of magnitude the probability of Single Event Upsets (SEUs) in space-borne electronic systems. Therefore, it is vital to enable the early detection of the SEU rate changes in order to ensure timely activation of dynamic radiation hardening measures. In this paper, an embedded approach for the prediction of SPEs and SRAM SEU rate is presented. The proposed solution combines the real-time SRAM-based SEU monitor, the offline-trained machine learning model and online learning algorithm for the prediction. With respect to the state-of-the-art, our solution brings the following benefits: (1) Use of existing on-chip data storage SRAM as a particle detector, thus minimizing the hardware and power overhead, (2) Prediction of SRAM SEU rate one hour in advance, with the fine-grained hourly tracking of SEU variations during SPEs as well as under normal conditions, (3) Online optimization of the prediction model for enhancing the prediction accuracy during run-time, (4) Negligible cost of hardware accelerator design for the implementation of selected machine learning model and online learning algorithm. The proposed design is intended for a highly dependable and self-adaptive multiprocessing system employed in space applications, allowing to trigger the radiation mitigation mechanisms before the onset of high radiation levels. KW - Machine learning KW - Single event upsets KW - Random access memory KW - monitoring KW - machine learning algorithms KW - predictive models KW - space missions KW - solar particle event KW - single event upset KW - machine learning KW - online learning KW - hardware accelerator KW - reliability KW - self-adaptive multiprocessing system Y1 - 2022 U6 - https://doi.org/10.1109/TETC.2022.3147376 SN - 2168-6750 VL - 10 IS - 2 SP - 564 EP - 580 PB - Institute of Electrical and Electronics Engineers CY - [New York, NY] ER -