Pinkwart, Niels
Show me the numbers! -- Student-facing Interventions in Adaptive Learning Environments for German Spelling
Rzepka, Nathalie, Simbeck, Katharina, Mueller, Hans-Georg, Bueltemann, Marlene, Pinkwart, Niels
Since adaptive learning comes in many shapes and sizes, it is crucial to find out which adaptations can be meaningful for which areas of learning. Our work presents the result of an experiment conducted on an online platform for the acquisition of German spelling skills. We compared the traditional online learning platform to three different adaptive versions of the platform that implement machine learning-based student-facing interventions that show the personalized solution probability. We evaluate the different interventions with regard to the error rate, the number of early dropouts, and the users competency. Our results show that the number of mistakes decreased in comparison to the control group. Additionally, an increasing number of dropouts was found. We did not find any significant effects on the users competency. We conclude that student-facing adaptive learning environments are effective in improving a persons error rate and should be chosen wisely to have a motivating impact.
Challenges in Designing Teacher Robots with Motivation Based Gestures
Yun, Hae Seon, Taliaronak, Volha, Kirtay, Murat, Chevelère, Johann, Hübert, Heiko, Hafner, Verena V., Pinkwart, Niels, Lazarides, Rebecca
Humanoid robots are increasingly being integrated into learning contexts to assist teaching and learning. However, challenges remain how to design and incorporate such robots in an educational context. As an important part of teaching includes monitoring the motivational and emotional state of the learner and adapting the interaction style and learning content accordingly, in this paper, we discuss the role of gestures displayed by a humanoid robot (i.e., Pepper robot) in a learning and teaching context and present our ongoing research on designing and developing a teacher robot.
Automatic Creativity Measurement in Scratch Programs Across Modalities
Kovalkov, Anastasia, Paaßen, Benjamin, Segal, Avi, Pinkwart, Niels, Gal, Kobi
Promoting creativity is considered an important goal of education, but creativity is notoriously hard to measure.In this paper, we make the journey fromdefining a formal measure of creativity that is efficientlycomputable to applying the measure in a practical domain. The measure is general and relies on coretheoretical concepts in creativity theory, namely fluency, flexibility, and originality, integratingwith prior cognitive science literature. We adapted the general measure for projects in the popular visual programming language Scratch.We designed a machine learning model for predicting the creativity of Scratch projects, trained and evaluated on human expert creativity assessments in an extensive user study. Our results show that opinions about creativity in Scratch varied widely across experts. The automatic creativity assessment aligned with the assessment of the human experts more than the experts agreed with each other. This is a first step in providing computational models for measuring creativity that can be applied to educational technologies, and to scale up the benefit of creativity education in schools.
The Continuous Hint Factory - Providing Hints in Vast and Sparsely Populated Edit Distance Spaces
Paaßen, Benjamin, Hammer, Barbara, Price, Thomas William, Barnes, Tiffany, Gross, Sebastian, Pinkwart, Niels
Intelligent tutoring systems can support students in solving multi-step tasks by providing hints regarding what to do next. However, engineering such next-step hints manually or via an expert model becomes infeasible if the space of possible states is too large. Therefore, several approaches have emerged to infer next-step hints automatically, relying on past students' data. In particular, the Hint Factory (Barnes & Stamper, 2008) recommends edits that are most likely to guide students from their current state towards a correct solution, based on what successful students in the past have done in the same situation. Still, the Hint Factory relies on student data being available for any state a student might visit while solving the task, which is not the case for some learning tasks, such as open-ended programming tasks. In this contribution we provide a mathematical framework for edit-based hint policies and, based on this theory, propose a novel hint policy to provide edit hints in vast and sparsely populated state spaces. In particular, we extend the Hint Factory by considering data of past students in all states which are similar to the student's current state and creating hints approximating the weighted average of all these reference states. Because the space of possible weighted averages is continuous, we call this approach the Continuous Hint Factory. In our experimental evaluation, we demonstrate that the Continuous Hint Factory can predict more accurately what capable students would do compared to existing prediction schemes on two learning tasks, especially in an open-ended programming task, and that the Continuous Hint Factory is comparable to existing hint policies at reproducing tutor hints on a simple UML diagram task.
Special Track on Ontologies and Social Semantic Web for Intelligent Educational Systems
Dicheva, Darina (Winston-Salem State University) | Mizoguchi, Riichiro (University of Osaka) | Nkambou, Roger (University of Quebec at Montreal) | Pinkwart, Niels (Clausthal University of Technology)
This allows for supporting more adequate and accurate representations of learners, their learning goals, learning material and contexts of its use, as well as more efficient access and navigation through learning resources. The goal is to advance intelligent educational systems, so as to achieve improved e-learning efficiency, flexibility and adaptation for single users and communities of users (learners, instructors, courseware authors, and others). The special track follows the workshop series Ontologies and Semantic Web for e-Learning, which was conducted successfully from 2002-2009 at a number of different conferences. The goals of this track are to discuss the current state-of-the-art in using ontologies and semantic web technologies in e-learning applications; and to attract the interest of the related research communities to the problems in the educational social semantic web and serve as an international platform for knowledge exchange and cooperation between researchers. This special track will be of interest to researchers interested in using ontologies, semantic web and social semantic web technologies in web-based educational systems, distributed hypermedia and open hypermedia systems, as well as in web intelligence and semantic web and social semantic web engineering.
Computational Argument as a Diagnostic Tool: The role of reliability.
Lynch, Collin F. (University of Pittsburgh) | Ashley, Kevin D. (University of Pittsburgh) | Pinkwart, Niels (Clausthal University of Technology) | Aleven, Vincent (Carnegie Mellon University)
Formal and computational models of argument are ideally suited for education in ill-defined domains such as law, public policy, and science. Open-ended arguments play a central role in these areas but students of the domains may not have been taught an explicit model of argument. Computational models of argument may be ideally suited to act as argument tutors guiding students in the formation of arguments and argument analysis according to an explicit model. In order to achieve this it is important to establish that the models can be understood and evaluated reliably, an empirical question. In this paper we report ongoing work on the diagnostic utility of argument diagrams produced in the LARGO tutoring system.