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Non-Parametric Estimation - Pattern Recognition - Lecture Slides

Slides, Mehanics and Mechanical Engineering

Category
Engineering
Typology
Slides
University
The key points are: Non-Parametric Estimation, Density Functions, Kernel-Density Estimate, Parzen Window, Unit Hypercube, Data Points Falling, Kind of Generalization, Erecting Bins, D-Dimensional Gaussian Density, Gaussian Kernel

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