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Titlebook: Big and Complex Data Analysis; Methodologies and Ap S. Ejaz Ahmed Book 2017 Springer International Publishing AG 2017 big data analysis.com

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High Dimensional Data Analysis: Integrating Submodelsf two selected submodels. Such a pretest and shrinkage strategy is constructed by shrinking an overfitted model estimator in the direction of an underfitted model estimator. The numerical studies indicate that our post-selection pretest and shrinkage strategy improved the prediction performance of selected submodels.
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High-Dimensional Classification for Brain Decodings perspective, and we incorporate the features into a classifier based on symmetric multinomial logistic regression with elastic net regularization. The approaches are illustrated in an application where the task is to infer, from brain activity measured with magnetoencephalography (MEG), the type of video stimulus shown to a subject.
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Pamela Hussey,Margaret Ann Kennedyoduce some basic SPC charts and some of their modifications, and describe how these charts can be used for monitoring different types of processes. Among many potential applications, dynamic disease screening and profile/image monitoring will be discussed in some detail.
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Defining Information Management Requirementshe number of parameters used in the test grows with .. An analysis of wine quality illustrates how the methods detect heterogeneity of association between chemical properties of the wine, which are attributable to a mix of different cultivars.
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https://doi.org/10.1007/978-1-4757-3095-1asymptotically) optimal under mean squared error loss in each model. Simulation study is conducted to compare the performance of the proposed methods with existing shrinkage estimators. We also apply the method to real data and obtain encouraging and interesting results.
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https://doi.org/10.1007/978-1-4757-3095-1RIM) under normality which facilitates the theoretical studies to follow. Using basic geometrical arguments, we then demonstrate how the Principal Components rotation of the predictor space alone can in fact generate improved mode estimators. Simulation results are used to illustrate our findings.
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