tetthetsskattning
Tetthetsskattning, also known as density estimation, is a statistical technique used to estimate the probability density function of a random variable. It is a fundamental tool in various fields, including machine learning, data analysis, and signal processing. The primary goal of density estimation is to infer the underlying distribution of a dataset from which the samples are drawn.
There are several methods for performing tetthetsskattning, each with its own strengths and weaknesses. Parametric methods
Kernel density estimation is one of the most widely used non-parametric techniques. It involves placing a kernel,
Tetthetsskattning is crucial in various applications, such as anomaly detection, clustering, and generative modeling. It provides