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Titlebook: Machine Learning and Knowledge Discovery in Databases, Part II; European Conference, Dimitrios Gunopulos,Thomas Hofmann,Michalis Vazirg Con

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楼主: tricuspid-valve
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Mining Research Topic-Related Influence between Academia and Industrymple additive model, weighted additive model and clustering-based additive model) to evaluate how influential a researcher is to a company. Finally, we illustrate the effectiveness of these three models on real large data set as well as on simulated data set.
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Eigenvector Sensitive Feature Selection for Spectral Clustering Laplacian corresponding to the k smallest positive eigenvalues, with respect to the feature’s perturbation. Extensive experiments on several high-dimensional multi-class datasets demonstrate the good performance of our method compared with some state-of-the-art unsupervised feature selection methods.
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Fourier-Information Duality in the Identity Management Problemse an algorithm for converting between the two forms, allowing for a . approach that draws on the strengths of both representations. We show experimental evidence that there are situations where hybrid algorithms are favorable.
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Gaussian Logic for Predictive Classificationamework for the prediction of DNA-binding propensity of proteins. Next, we show how the Gaussian Logic framework can be used to find motifs describing highly correlated gene groups in gene-expression data which are then used in a set-level-based classification method.
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Online Structure Learning for Markov Logic Networks online structure and parameter learning for MLNs. Experimental results on two real-world datasets for natural-language field segmentation show that OSL outperforms systems that cannot revise structure.
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Restricted Deep Belief Networks for Multi-view Learningidden nodes follow inter-layer connections without restrictions as in standard DBNs. RDBN is trained using layer-wise contrastive divergence learning. Numerical experiments on synthetic and real-world datasets demonstrate the useful behavior of the RDBN, compared to the multi-wing harmonium (MWH) which is a two-layer undirected model.
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Smooth Receiver Operating Characteristics (,) Curvesll it the Smooth ROC (.) curve, and we demonstrate how it can be used to visualize the performance of learning models. We report experimental results to show that the . is appropriate for measuring performance similarities and differences between learning models, and is more sensitive to performance characteristics than the standard ROC curve.
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