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Titlebook: Applications of Evolutionary Computation; EvoApplications 2011 Cecilia Chio,Stefano Cagnoni,Georgios N. Yannakaki Conference proceedings 20

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Transparent, Online Image Pattern Classification Using a Learning Classifier System is needed in domains applicable to offline, supervised learning to achieve benchmark accuracy, but the promising initial results auger well for domains, such as mobile robotics, where compact, accurate and general rules learnt in a graceful manner are required.
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Absolute Space in Natural Philosophye characterization of the elements of self-*, highly dynamic ULS systems. Moreover, we recall the Adaptive Evolutionary Framework (AEF), for the implementation of distributed evolutionary strategies. Finally, we describe an example scenario of large peer-to-peer network under targeted attacks, showing the benefits of the NAM-AEF design.
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Alchemy, Chemistry, and Metallurgythis approach makes it possible to design a network which enables the robot to accomplish a task that requires the capability of navigating the space using a light stimulus, as well as the formation and use of an internal memory.
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Advanced Computer Human Interactionsmal parameter set. The fitness of the algorithm has been derived from the segmentation error obtained comparing the automatic segmentation with a manual one. Results indicate that using the GA-optimized parameters, the average segmentation error decreases from 5.75% obtained by manual tuning to 1.5% with GA-optimized parameters.
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https://doi.org/10.1007/978-3-030-10576-1re compared directly with image histograms. Hybrid PSO-DE is also compared with standard PSO on these models. The experimental results show that the hybrid PSO-DE approach to image segmentation is effective and efficient.
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