Sonderforschungsbereich (SFB) 531 : [249]

The field of Computational Intelligence (CI) covers all sorts of techniques for subsymbolic (numerical) knowledge processing, such as the well known Fuzzy Logic (FL), Neural Networks (NN), and Evolutionary Algorithms (EA) as well as other approaches with lesser dissemination. Although CI techniques are widely in use, there still exists a large gap between theory and application. To close this gap the Collaborative Research Center (SFB) 531 has been founded at the University of Dortmund in 1997 as an interdisciplinary research institute. It is financially supported by the Deutsche Forschungsgemeinschaft (DFG). The scientific goals of the SFB are the investigation and improvement of the foundations, applications, as well as combinations of CI methods.

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Collection's Items (Sorted by Submit Date in Descending order): 41 to 60 of 249
Issue DateTitleAuthor(s)
2006-11Ant colony optimization and the minimum spanning tree problemNeumann, Frank; Witt, Carsten
2006-11When the plus strategy performs better than the comma strategy - and when notJägersküpper, Jens; Storch, Tobias
2006-09Pareto-, aggregation-, and indicator-based methods in many-objective optimizationBeume, Nicola; Naujoks, Boris; Wagner, Tobias
2006-07Faster S-metric calculation by considering dominated hypervolume as Klee s measure problemBeume, Nicola; Rudolph, Günter
2006-07Neyman-Pearson theory of testing and Mayo s extensions applied to evolutionary computingBartz-Beielstein, Thomas
2006-06On advantages of scheduling using genetic fuzzy systemsFranke, Carsten; Lepping, Joachim; Schwiegelshohn, Uwe
2006-06A library of multiobjective functions with corresponding graphsMehnen, Jörn
2006-06Evolutionary support vector machines and their application for classificationDumitrescu, D.; Preuss, Mike; Stoean, Catalin; Stoean, Ruxandra
2006-06Finding large cliques in sparse semi-random graphs by simple randomized search heuristicsStorch, Tobias
2006-06Why comma selection can help with the escape from local optimaJägersküpper, Jens; Storch, Tobias
2006-06Controlled model assisted evolution strategy with adaptive preselectionHoffmann, Frank; Hölemann, Sebastian
2006-06Local search in memetic algorithmsSudholt, Dirk
2006-05Visual servoing with moments of SIFT featuresHoffmann, Frank; Nierobisch, Thomas; Rudolph, Günter; Seyffarth, Thorsten
2006-05Takeover time in parallel populations with migrationRudolph, Günter
2006-05Pareto set and EMOA behavior for simple multimodal multiobjective functionsNaujoks, Boris; Preuss, Mike; Rudolph, Günter
2006-05Evolutionary Optimization of Dynamic Multiobjective FunctionsMehnen, Jörn; Rudolph, Günter; Wagner, Tobias
2006-03how randomized search heuristics find maximum cliques in planar graphsStorch, Tobias
2007-06-04T16:20:03ZOn the effect of populations in evolutionary multi-objective optimizationGiel, Oliver; Lehre, Per Kristian
2007-06-04T16:11:37ZOn the analysis of the (1+1) memetic algorithmSudholt, Dirk
2006-01-23T13:33:21ZQuadratische Optimierung unter Nebenbedingungen und Anwendungen in der KraftwerksführungHansen, W.; Kiendl, H.
Collection's Items (Sorted by Submit Date in Descending order): 41 to 60 of 249