A tutorial on kernel density estimation and recent advances
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Abstract
This tutorial provides a gentle introduction to kernel density estimation (KDE) and recent advances regarding confidence bands and geometric/topological features. We begin with a discussion of basic properties of KDE: the convergence rate under various metrics, density derivative estimation, and bandwidth selection. Then, we introduce common approaches to the construction of confidence intervals/bands, and we discuss how to handle bias. Next, we talk about recent advances in the inference of geometric and topological features of a density function using KDE. Finally, we illustrate how one can use KDE to estimate a cumulative distribution function and a receiver operating characteristic curve. We provide R…
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771
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1Topics & keywords
Topics
Keywords
- Kernel density estimation
- Computer science
- Cumulative distribution function
- Density estimation
- Probability density function
- Inference
- Kernel (algebra)
- Bandwidth (computing)
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