Search Results - "density estimation"
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An introduction to nonparametric statistics /
Published 2020Table of Contents: “…BackgroundOne-Sample Nonparametric InferenceTwo-Sample TestingMethods for Three or More GroupsGroup Differences with BlockingBivariate MethodsMultivariate AnalysisDensity EstimationRegression Function EstimatesResampling TechniquesAppendices…”
Taylor & Francis
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Electronic eBook -
5
Statistical pattern recognition
Published 2011An electronic book accessible through the World Wide Web; click to view
Electronic eBook -
6
Computer Intensive Methods in Statistics
Published 2019Table of Contents: “…4.3.1 F-Backward and F-Forward Procedures4.3.2 FSR-Forward Procedure; 4.3.3 SimSel; 4.4 Problems; 5. Density Estimation; 5.1 Background; 5.2 Histogram; 5.3 Kernel Density Estimator; 5.3.1 Statistical Properties; 5.3.2 Bandwidth Selection in Practice; 5.4 Nearest Neighbor Estimator; 5.5 Orthogonal Series Estimator; 5.6 Minimax Convergence Rate; 5.7 Problems; 6. …”
Taylor & Francis
OCLC metadata license agreement
Electronic eBook -
7
Practical AI for Cybersecurity
Published 2021Table of Contents: “…Understanding Probability -- The Bayesian Theorem -- The Probability Distributions for Machine Learning -- The Normal Distribution -- Supervised Learning -- The Decision Tree -- The Problem of Overfitting the Decision Tree -- The Random Forest -- Bagging -- The Naïve Bayes Method -- The KNN Algorithm -- Unsupervised Learning -- Generative Models -- Data Compression -- Association -- The Density Estimation -- The Kernel Density Function -- Latent Variables -- Gaussian Mixture Models -- The Perceptron -- Training a Perceptron -- The Boolean Functions -- The Multiple Layer Perceptrons…”
Taylor & Francis
OCLC metadata license agreement
Electronic eBook