@article{48013, author = {{Liu, Ping and Schumann, Nils and Abele, Fabian and Ren, Fazheng and Hanke, Marcel and Xin, Yang and Hartmann, Andreas and Schlierf, Michael and Keller, Adrian and Lin, Weilin and Zhang, Yixin}}, issn = {{2574-0970}}, journal = {{ACS Applied Nano Materials}}, keywords = {{General Materials Science}}, publisher = {{American Chemical Society (ACS)}}, title = {{{Thermophoretic Analysis of Biomolecules across the Nanoscales in Self-Assembled Polymeric Matrices}}}, doi = {{10.1021/acsanm.3c03623}}, year = {{2023}}, } @inbook{48025, author = {{Schuster, Britt-Marie and Haaf, Susanne}}, booktitle = {{Historische Textmuster im Wandel. Neue Wege zu Ihrer Erschließung}}, editor = {{Haaf, Susanne and Schuster, Britt-Marie}}, publisher = {{De Gruyter}}, title = {{{Fünf Thesen zur Untersuchung des Textsortenwandels}}}, volume = {{331}}, year = {{2023}}, } @inbook{48029, author = {{Schuster, Britt-Marie and Thielert, Frauke and Haaf, Susanne}}, booktitle = {{Historische Textmuster im Wandel. Neue Wege zu ihrer Erschließung}}, editor = {{Haaf, Susanne and Schuster, Britt-Marie}}, publisher = {{De Gruyter}}, title = {{{Fragen stellen in Pressetextsorten}}}, year = {{2023}}, } @inbook{46561, author = {{Schuster, Britt-Marie}}, booktitle = {{Kommunikative Praktiken im Nationalsozialismus}}, editor = {{Markewitz, Friedrich and Scholl, Stefan and Schubert, Katrin and Wilk, Nicole M.}}, isbn = {{9783847116127}}, keywords = {{Kommunikationsgeschichte}}, pages = {{143–171}}, publisher = {{V&R unipress}}, title = {{{»Das dankst du deinem Führer« – Adressierungspraktiken in der Widerstandskommunikation gegen den Nationalsozialismus}}}, doi = {{10.14220/9783737016124}}, volume = {{3}}, year = {{2023}}, } @inbook{48042, author = {{Biehler, Rolf and Frischemeier, Daniel and Gould, Ronald and Pfannkuch, Maxine}}, booktitle = {{Handbook of Digital Resources in Mathematics Education}}, editor = {{Pepin, Birgit and Gueudet, Ghislaine and Choppin, Jeffrey}}, publisher = {{Springer International Publishing}}, title = {{{Impacts of Digitalization on Content and Goals of Statistics Education}}}, year = {{2023}}, } @book{48043, editor = {{Schuster, Britt-Marie and Markewitz, Friedrich and Wilk, Nicole M.}}, title = {{{Widerstandshandeln. Sprachliche Praktiken des Sich-Widersetzens zwischen 1933 und 1945}}}, volume = {{4}}, year = {{2023}}, } @article{48047, abstract = {{ZusammenfassungDieser Beitrag widmet sich dem Zusammenhang von geistesgeschichtlicher Literaturgeschichtsschreibung und dem Konzept der ›deutschen Bewegung‹. Er rekonstruiert vor allem dessen germanistische Adaption und Weiterentwicklung durch Paul Kluckhohn sowie seinen polyvalenten Einsatz zum heft- und jahrgangsübergreifenden Erzählen einer fortgesetzten nationalen Geistesgeschichte in der Deutschen Vierteljahrsschrift.}}, author = {{Gretz, Daniela}}, issn = {{0012-0936}}, journal = {{Deutsche Vierteljahrsschrift für Literaturwissenschaft und Geistesgeschichte}}, keywords = {{Literature and Literary Theory, Philosophy, Cultural Studies}}, number = {{3}}, pages = {{655--678}}, publisher = {{Springer Science and Business Media LLC}}, title = {{{»Viele alte Aufgaben wurden damit in einem neuen Lichte gesehen«}}}, doi = {{10.1007/s41245-023-00201-0}}, volume = {{97}}, year = {{2023}}, } @article{48051, author = {{Humpert, Lynn and Wäschle, Moritz and Horstmeyer, Sarah and Anacker, Harald and Dumitrescu, Roman and Albers, Albert}}, issn = {{2212-8271}}, journal = {{Procedia CIRP}}, keywords = {{General Medicine}}, pages = {{693--698}}, publisher = {{Elsevier BV}}, title = {{{Stakeholder-oriented Elaboration of Artificial Intelligence use cases using the example of Special-Purpose engineering}}}, doi = {{10.1016/j.procir.2023.02.160}}, volume = {{119}}, year = {{2023}}, } @article{48063, abstract = {{Brainwaves have demonstrated to be unique enough across individuals to be useful as biometrics. They also provide promising advantages over traditional means of authentication, such as resistance to external observability, revocability, and intrinsic liveness detection. However, most of the research so far has been conducted with expensive, bulky, medical-grade helmets, which offer limited applicability for everyday usage. With the aim to bring brainwave authentication and its benefits closer to real world deployment, we investigate brain biometrics with consumer devices. We conduct a comprehensive measurement experiment and user study that compare five authentication tasks on a user sample up to 10 times larger than those from previous studies, introducing three novel techniques based on cognitive semantic processing. Furthermore, we apply our analysis on high-quality open brainwave data obtained with a medical-grade headset, to assess the differences. We investigate both the performance, security, and usability of the different options and use this evidence to elicit design and research recommendations. Our results show that it is possible to achieve Equal Error Rates as low as 7.2% (a reduction between 68–72% with respect to existing approaches) based on brain responses to images with current inexpensive technology. We show that the common practice of testing authentication systems only with known attacker data is unrealistic and may lead to overly optimistic evaluations. With regard to adoption, users call for simpler devices, faster authentication, and better privacy. }}, author = {{Arias-Cabarcos, Patricia and Fallahi, Matin and Habrich, Thilo and Schulze, Karen and Becker, Christian and Strufe, Thorsten}}, issn = {{2471-2566}}, journal = {{ACM Transactions on Privacy and Security}}, keywords = {{Safety, Risk, Reliability and Quality, General Computer Science}}, number = {{3}}, pages = {{1--36}}, publisher = {{Association for Computing Machinery (ACM)}}, title = {{{Performance and Usability Evaluation of Brainwave Authentication Techniques with Consumer Devices}}}, doi = {{10.1145/3579356}}, volume = {{26}}, year = {{2023}}, } @article{48061, abstract = {{Data collection and aggregation by online services happens to an extent that is often beyond awareness and comprehension of its users. Transparency tools become crucial to inform people, though it is unclear how well they work. To investigate this matter, we conducted a user study focusing on Facebook, which has recently released the 'Off-Facebook Activity' transparency dashboard that informs about personal data collection from third parties. We exposed a group of n = 100 participants to the dashboard and surveyed their level of awareness and reactions to understand how transparency impacts users' privacy attitudes and intended behavior. Our participants were surprised about the massive amount of collected data, became significantly less comfortable with data collection, and more likely to take protective measures. Collaterally, we observed that current consent schemes are inadequate. Based on the survey findings, we make recommendations for more usable transparency and highlight the need to raise awareness about transparency tools and to provide easily actionable privacy controls.}}, author = {{Arias-Cabarcos, Patricia and Khalili, Saina and Strufe, Thorsten}}, issn = {{2299-0984}}, journal = {{Proceedings on Privacy Enhancing Technologies}}, keywords = {{General Medicine}}, number = {{1}}, pages = {{384--399}}, publisher = {{Privacy Enhancing Technologies Symposium Advisory Board}}, title = {{{'Surprised, Shocked, Worried'}: User Reactions to Facebook Data Collection from Third Parties}}}, doi = {{10.56553/popets-2023-0023}}, volume = {{2023}}, year = {{2023}}, } @article{48059, author = {{Winkel, Fabian and Wallscheid, Oliver and Scholz, Peter and Böcker, Joachim}}, issn = {{2644-1284}}, journal = {{IEEE Open Journal of the Industrial Electronics Society}}, keywords = {{Electrical and Electronic Engineering, Industrial and Manufacturing Engineering, Control and Systems Engineering}}, pages = {{1--14}}, publisher = {{Institute of Electrical and Electronics Engineers (IEEE)}}, title = {{{Pseudo-Labeling Machine Learning Algorithm for Predictive Maintenance of Relays}}}, doi = {{10.1109/ojies.2023.3323870}}, year = {{2023}}, } @article{48058, author = {{Winkel, Fabian and Deuse-Kleinsteuber, Johannes and Böcker, Joachim}}, issn = {{0018-9529}}, journal = {{IEEE Transactions on Reliability}}, keywords = {{Electrical and Electronic Engineering, Safety, Risk, Reliability and Quality}}, pages = {{1--14}}, publisher = {{Institute of Electrical and Electronics Engineers (IEEE)}}, title = {{{Run-to-Failure Relay Dataset for Predictive Maintenance Research With Machine Learning}}}, doi = {{10.1109/tr.2023.3255786}}, year = {{2023}}, } @inproceedings{48060, author = {{Röse, Markus and Kablo, Emiram and Arias Cabarcos, Patricia}}, booktitle = {{Proceedings of the 2023 European Symposium on Usable Security}}, publisher = {{ACM}}, title = {{{Overcoming Theory: Designing Brainwave Authentication for the Real World}}}, doi = {{10.1145/3617072.3617120}}, year = {{2023}}, } @inproceedings{48062, author = {{Fallahi, Matin and Strufe, Thorsten and Arias-Cabarcos, Patricia}}, booktitle = {{2023 IEEE International Conference on Pervasive Computing and Communications (PerCom)}}, publisher = {{IEEE}}, title = {{{BrainNet: Improving Brainwave-based Biometric Recognition with Siamese Networks}}}, doi = {{10.1109/percom56429.2023.10099367}}, year = {{2023}}, } @inproceedings{47522, abstract = {{Artificial benchmark functions are commonly used in optimization research because of their ability to rapidly evaluate potential solutions, making them a preferred substitute for real-world problems. However, these benchmark functions have faced criticism for their limited resemblance to real-world problems. In response, recent research has focused on automatically generating new benchmark functions for areas where established test suites are inadequate. These approaches have limitations, such as the difficulty of generating new benchmark functions that exhibit exploratory landscape analysis (ELA) features beyond those of existing benchmarks.The objective of this work is to develop a method for generating benchmark functions for single-objective continuous optimization with user-specified structural properties. Specifically, we aim to demonstrate a proof of concept for a method that uses an ELA feature vector to specify these properties in advance. To achieve this, we begin by generating a random sample of decision space variables and objective values. We then adjust the objective values using CMA-ES until the corresponding features of our new problem match the predefined ELA features within a specified threshold. By iteratively transforming the landscape in this way, we ensure that the resulting function exhibits the desired properties. To create the final function, we use the resulting point cloud as training data for a simple neural network that produces a function exhibiting the target ELA features. We demonstrate the effectiveness of this approach by replicating the existing functions of the well-known BBOB suite and creating new functions with ELA feature values that are not present in BBOB.}}, author = {{Prager, Raphael Patrick and Dietrich, Konstantin and Schneider, Lennart and Schäpermeier, Lennart and Bischl, Bernd and Kerschke, Pascal and Trautmann, Heike and Mersmann, Olaf}}, booktitle = {{Proceedings of the 17th ACM/SIGEVO Conference on Foundations of Genetic Algorithms}}, isbn = {{9798400702020}}, keywords = {{Benchmarking, Instance Generator, Black-Box Continuous Optimization, Exploratory Landscape Analysis, Neural Networks}}, pages = {{129–139}}, publisher = {{Association for Computing Machinery}}, title = {{{Neural Networks as Black-Box Benchmark Functions Optimized for Exploratory Landscape Features}}}, doi = {{10.1145/3594805.3607136}}, year = {{2023}}, } @inproceedings{46297, abstract = {{Exploratory landscape analysis (ELA) in single-objective black-box optimization relies on a comprehensive and large set of numerical features characterizing problem instances. Those foster problem understanding and serve as basis for constructing automated algorithm selection models choosing the best suited algorithm for a problem at hand based on the aforementioned features computed prior to optimization. This work specifically points to the sensitivity of a substantial proportion of these features to absolute objective values, i.e., we observe a lack of shift and scale invariance. We show that this unfortunately induces bias within automated algorithm selection models, an overfitting to specific benchmark problem sets used for training and thereby hinders generalization capabilities to unseen problems. We tackle these issues by presenting an appropriate objective normalization to be used prior to ELA feature computation and empirically illustrate the respective effectiveness focusing on the BBOB benchmark set.}}, author = {{Prager, Raphael Patrick and Trautmann, Heike}}, booktitle = {{Applications of Evolutionary Computation}}, editor = {{Correia, João and Smith, Stephen and Qaddoura, Raneem}}, isbn = {{978-3-031-30229-9}}, pages = {{411–425}}, publisher = {{Springer Nature Switzerland}}, title = {{{Nullifying the Inherent Bias of Non-invariant Exploratory Landscape Analysis Features}}}, year = {{2023}}, } @inproceedings{46298, abstract = {{The design and choice of benchmark suites are ongoing topics of discussion in the multi-objective optimization community. Some suites provide a good understanding of their Pareto sets and fronts, such as the well-known DTLZ and ZDT problems. However, they lack diversity in their landscape properties and do not provide a mechanism for creating multiple distinct problem instances. Other suites, like bi-objective BBOB, possess diverse and challenging landscape properties, but their optima are not well understood and can only be approximated empirically without any guarantees.}}, author = {{Schäpermeier, Lennart and Kerschke, Pascal and Grimme, Christian and Trautmann, Heike}}, booktitle = {{Evolutionary Multi-Criterion Optimization}}, editor = {{Emmerich, Michael and Deutz, André and Wang, Hao and Kononova, Anna V. and Naujoks, Boris and Li, Ke and Miettinen, Kaisa and Yevseyeva, Iryna}}, isbn = {{978-3-031-27250-9}}, pages = {{291–304}}, publisher = {{Springer Nature Switzerland}}, title = {{{Peak-A-Boo! Generating Multi-objective Multiple Peaks Benchmark Problems with Precise Pareto Sets}}}, year = {{2023}}, } @article{46299, abstract = {{The herein proposed Python package pflacco provides a set of numerical features to characterize single-objective continuous and constrained optimization problems. Thereby, pflacco addresses two major challenges in the area optimization. Firstly, it provides the means to develop an understanding of a given problem instance, which is crucial for designing, selecting, or configuring optimization algorithms in general. Secondly, these numerical features can be utilized in the research streams of automated algorithm selection and configuration. While the majority of these landscape features is already available in the R package flacco, our Python implementation offers these tools to an even wider audience and thereby promotes research interests and novel avenues in the area of optimization.}}, author = {{Prager, Raphael Patrick and Trautmann, Heike}}, issn = {{1063-6560}}, journal = {{Evolutionary Computation}}, pages = {{1–25}}, title = {{{Pflacco: Feature-Based Landscape Analysis of Continuous and Constrained Optimization Problems in Python}}}, doi = {{10.1162/evco_a_00341}}, year = {{2023}}, } @inproceedings{48100, author = {{Wilkerson, Michelle and Ben-Zvi, Dani and Dvir, Michal and Matuk, Camilla and Podworny, Susanne and Stephens, Amy and Zapata-Cardona, Lucia}}, booktitle = {{General Proceedings of the ISLS Annual Meeting: Building Knowledge and Sustaining our Community}}, editor = {{Slotta, J.D. and Charles, E.S.}}, pages = {{76--79}}, publisher = {{ISLS}}, title = {{{K-12 Data Science Education: Outcomes of a National Workshop; International Perspectives; and Next Steps for the Learning Sciences}}}, year = {{2023}}, } @inbook{48099, author = {{Podworny, Susanne}}, booktitle = {{Advances in Mathematics Education}}, isbn = {{9783031294587}}, issn = {{1869-4918}}, publisher = {{Springer International Publishing}}, title = {{{Statistics and Probability Education in Germany}}}, doi = {{10.1007/978-3-031-29459-4_4}}, year = {{2023}}, }