17 Publikationen

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  • [17]
    2023 | Bielefelder E-Dissertation | PUB-ID: 2968265 OA
    Göpfert, C. (2023). Guiding Information: Supervised Models and their Relationship with Data. Bielefeld: Universität Bielefeld. https://doi.org/10.4119/unibi/2968265
    PUB | PDF | DOI
     
  • [16]
    2022 | Konferenzbeitrag | PUB-ID: 2979000
    Paaßen, B., Göpfert, C., & Pinkwart, N. (2022). Faster Confidence Intervals for Item Response Theory via an Approximate Likelihood. In A. I. Cristea, C. Brown, T. Mitrovic, & N. Bosch (Eds.), Proceedings of the 15th International Conference on Educational Data Mining (EDM 2022) (p. 555–559). https://doi.org/10.5281/zenodo.6852950
    PUB | DOI | Download (ext.)
     
  • [15]
    2021 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2957385
    Risse, N., Göpfert, C., & Göpfert, J. P. (2021). How to Compare Adversarial Robustness of Classifiers from a Global Perspective. In I. Farkaš, P. Masulli, S. Otte, & S. Wermter (Eds.), Lecture Notes in Computer Science: Vol. 12891. Artificial Neural Networks and Machine Learning – ICANN 2021. 30th International Conference on Artificial Neural Networks, Bratislava, Slovakia, September 14–17, 2021, Proceedings, Part I (pp. 29-41). Cham: Springer International Publishing. https://doi.org/10.1007/978-3-030-86362-3_3
    PUB | DOI
     
  • [14]
    2021 | Zeitschriftenaufsatz | E-Veröff. vor dem Druck | PUB-ID: 2955115
    Straat, M., Abadi, F., Kan, Z., Göpfert, C., Hammer, B., & Biehl, M. (2021). Supervised learning in the presence of concept drift: a modelling framework. Neural Computing and Applications. https://doi.org/10.1007/s00521-021-06035-1
    PUB | DOI | WoS
     
  • [13]
    2020 | Sammelwerksbeitrag | Veröffentlicht | PUB-ID: 2982081
    Biehl, M., Abadi, F., Göpfert, C., & Hammer, B. (2020). Prototype-Based Classifiers in the Presence of Concept Drift: A Modelling Framework. In A. Vellido, K. Gibert, C. Angulo, & J. D. Martín Guerrero (Eds.), Advances in Intelligent Systems and Computing. Advances in Self-Organizing Maps, Learning Vector Quantization, Clustering and Data Visualization. Proceedings of the 13th International Workshop, WSOM+ 2019, Barcelona, Spain, June 26-28, 2019 (pp. 210-221). Cham: Springer International Publishing. https://doi.org/10.1007/978-3-030-19642-4_21
    PUB | DOI
     
  • [12]
    2019 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2935925 OA
    Göpfert, C., Ben-David, S., Bousquet, O., Gelly, S., Tolstikhin, I., & Urner, R. (2019). When can unlabeled data improve the learning rate? Conference on Learning Theory (COLT)
    PUB | PDF | arXiv
     
  • [11]
    2019 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2935456 OA
    Pfannschmidt, L., Göpfert, C., Neumann, U., Heider, D., & Hammer, B. (2019). FRI - Feature Relevance Intervals for Interpretable and Interactive Data Exploration. Presented at the 16th IEEE International Conference on Computational Intelligence in Bioinformatics and Computational Biology, Certosa di Pontignano, Siena - Tuscany, Italy. doi:10.1109/CIBCB.2019.8791489
    PUB | PDF | DOI | arXiv
     
  • [10]
    2019 | Zeitschriftenaufsatz | E-Veröff. vor dem Druck | PUB-ID: 2933715 OA
    Brinkrolf, J., Göpfert, C., & Hammer, B. (2019). Differential privacy for learning vector quantization. Neurocomputing, 342, 125-136. doi:10.1016/j.neucom.2018.11.095
    PUB | PDF | DOI | WoS
     
  • [9]
    2018 | Zeitschriftenaufsatz | Veröffentlicht | PUB-ID: 2932412
    Straat, M., Abadi, F., Göpfert, C., Hammer, B., & Biehl, M. (2018). Statistical Mechanics of On-Line Learning Under Concept Drift. ENTROPY, 20(10), 775. doi:10.3390/e20100775
    PUB | DOI | WoS | PubMed | Europe PMC
     
  • [8]
    2018 | Zeitschriftenaufsatz | Veröffentlicht | PUB-ID: 2911900
    Paaßen, B., Göpfert, C., & Hammer, B. (2018). Time Series Prediction for Graphs in Kernel and Dissimilarity Spaces. Neural Processing Letters, 48(2), 669-689. doi:10.1007/s11063-017-9684-5
    PUB | DOI | Download (ext.) | WoS | arXiv
     
  • [7]
    2018 | Zeitschriftenaufsatz | Veröffentlicht | PUB-ID: 2915273 OA
    Göpfert, C., Pfannschmidt, L., Göpfert, J. P., & Hammer, B. (2018). Interpretation of Linear Classifiers by Means of Feature Relevance Bounds. Neurocomputing, 298, 69-79. doi:10.1016/j.neucom.2017.11.074
    PUB | PDF | DOI | WoS
     
  • [6]
    2017 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2908201 OA
    Göpfert, C., Pfannschmidt, L., & Hammer, B. (2017). Feature Relevance Bounds for Linear Classification. In M. Verleysen (Ed.), Proceedings of the ESANN, 24th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning (pp. 187--192). Louvain-la-Neuve: Ciaco - i6doc.com.
    PUB | Dateien verfügbar | Download (ext.)
     
  • [5]
    2017 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2913752 OA
    Göpfert, J. P., Göpfert, C., Botsch, M., & Hammer, B. (2017). Effects of Variability in Synthetic Training Data on Convolutional Neural Networks for 3D Head Reconstruction. 2017 SSCI Proceedings. 2017 IEEE Symposium Series on Computational Intelligence (SSCI) Piscataway, NJ: IEEE. doi:10.1109/SSCI.2017.8285305
    PUB | PDF | DOI
     
  • [4]
    2017 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2915274 OA
    Göpfert, C., Göpfert, J. P., & Hammer, B. (2017). Analyzing Feature Relevance for Linear Reject Option SVM using Relevance Intervals. Proceedings of the 2017 NIPS workshop on Transparent and Interpretable Machine Learning in Safety Critical Environments
    PUB | PDF
     
  • [3]
    2016 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2909367
    Kummert, J., Paaßen, B., Jensen, J., Göpfert, C., & Hammer, B. (2016). Local Reject Option for Deterministic Multi-class SVM. In A. E.P. Villa, P. Masulli, & A. J. Pons Rivero (Eds.), Lecture Notes in Computer Science: Vol. 9887. Artificial Neural Networks and Machine Learning - ICANN 2016 - 25th International Conference on Artificial Neural Networks, Barcelona, Spain, September 6-9, 2016, Proceedings, Part II (pp. 251--258). Cham: Springer Nature. doi:10.1007/978-3-319-44781-0_30
    PUB | DOI
     
  • [2]
    2016 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2900676 OA
    Paaßen, B., Göpfert, C., & Hammer, B. (2016). Gaussian process prediction for time series of structured data. In M. Verleysen (Ed.), Proceedings of the ESANN, 24th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning (pp. 41--46). Louvain-la-Neuve: Ciaco - i6doc.com.
    PUB | PDF
     
  • [1]
    2016 | Konferenzbeitrag | Veröffentlicht | PUB-ID: 2905729 OA
    Göpfert, C., Paaßen, B., & Hammer, B. (2016). Convergence of Multi-pass Large Margin Nearest Neighbor Metric Learning. In A. E.P. Villa, P. Masulli, & A. J. Pons Rivero (Eds.), Lecture Notes in Computer Science: Vol. 9887. Artificial Neural Networks and Machine Learning – ICANN 2016: 25th International Conference on Artificial Neural Networks, Barcelona, Spain, September 6-9, 2016, Proceedings, Part II (pp. 510-517). Cham: Springer Nature. doi:10.1007/978-3-319-44778-0_60
    PUB | PDF | DOI
     

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