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Girschick, T, Rückert, U, and Kramer, S (accepted). Adapted Transfer of Distance Measures for Quantitative Structure-Activity Relationships and Data-Driven Selection of Source Datasets The Computer Journal.
Rückert, U, Girschick, T, Buchwald, F, and Kramer, S (2010). Adapted Transfer of Distance Measures for Quantitative Structure-Activity Relationships In: Proceedings of the 13th International Conference on Discovery Science, ed. by B. Pfahringer, G. Holmes, A. Hoffman, vol. 6332, pp. 341-355, Springer. LNCS/LNAI.
Rückert, U (2008). A Statistical Approach to Rule Learning PhD Thesis, Technische Universität München.
Rückert, U and De Raedt, L (2008). An Experimental Evaluation of Simplicity in Rule Learning Artificial Intelligence, 172(1):19-28.
Rückert, U and Kramer, S (2008). Kernel-Based Inductive Transfer In: Machine Learning and Knowledge Discovery in Databases, European Conference, ECML/PKDD 2008, Antwerp, Belgium, September 15-19, 2008, Proceedings, Part II, ed. by Walter Daelemans, Bart Goethals, Katharina Morik, pp. 220-233, Springer. Lecture Notes in Computer Science.
Rückert, U and Kramer, S (2007). Optimizing Feature Sets for Structured Data In: Machine Learning: ECML 2007, 18th European Conference on Machine Learning, ed. by Joost N. Kok, Jacek Koronacki, Ramon Lopez de Mantaras, Stan Matwin, Dunja Mladenic, Andrzej Skowron, pp. 716-723, Berlin, Springer. Lecture Notes in Computer Science Vol. 4701.
Rückert, U and Kramer, S (2007). Margin-Based First-Order Rule Learning Machine Learning, 70(2-3):189-206.
Rückert, U and Kramer, S (2007). Towards a Framework for Relational Learning and Propositionalization In: Proceedings of the 6th Workshop on Multi-Relational Data Mining at the 18th European Conference on Machine Learning, ed. by D. Malerba, A. Appice, M. Ceci.
Friedel, C, Rückert, U, and Kramer, S (2006). Cost Curves for Abstaining Classifiers In: Proc. of the ICML 2006 workshop on ROC Analysis in Machine Learning, Pittsburgh, PA.
Richter, L, Rückert, U, and Kramer, S (2006). Learning a Predictive Model for Growth Inhibition from the NCI DTP Human Tumor Cell Line Screening Data: Does Gene Expression Make a Difference? In: Pacific Symposium on Biocomputing, vol. 11, pp. 596-607.