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Titlebook: Evolutionary Computation, Machine Learning and Data Mining in Bioinformatics; 11th European Confer Leonardo Vanneschi,William S. Bush,Mario

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Inferring Human Phenotype Networks from Genome-Wide Genetic Associationsease classes. However, we are able to classify phenotypes according to shared biology, and not arbitrary disease classes. We present a collection of documented clinical connections supported by the network. Furthermore, we highlight phenotypes modules and links that may underlie yet undiscovered gen
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Supervising Random Forest Using Attribute Interaction Networks that of RF and observed that the variables identified by the two methods overlap with differences. To integrate advantages of MIN into RF, we proposed a hybrid algorithm, MIN-guided RF (MINGRF), which overlays the neighborhood structure of MIN onto the growth of trees. After comparing MINGRF to the
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Hybrid Genetic Algorithms for Stress Recognition in Readingss features, select a type of classifier and optimize the classifier’s parameters for stress recognition. The classification models used were artificial neural networks (ANNs) and support vector machines (SVMs). Stress recognition rates obtained from an ANN and a SVM without a GA were 68% and 67% re
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Optimal Use of Biological Expert Knowledge from Literature Mining in Ant Colony Optimization for Anaractions produced by a literature mining platform, Pathway Studio. We show that the linear distribution function of expert knowledge is the most appropriate to weigh our scores when expert knowledge from literature mining is used. We find that ACO parameters significantly affect the power of the met
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