sekamalli
Sekamalli is a Finnish term used to describe statistical models that represent data as arising from a mixture of several underlying subpopulations. In a sekamalli, the overall distribution of the observed data is expressed as a weighted sum of component distributions, with each component having its own parameters. A latent (unobserved) variable indicates which component generated each observation. This framework allows modeling heterogeneity in the data without requiring explicit knowledge of subpopulation membership.
Commonly used components are Gaussian, yielding a Gaussian mixture model, but other families such as Poisson,
Estimation and inference in sekamallit typically rely on iterative algorithms. The expectation–maximization (EM) algorithm is widely
Applications of sekamallit are broad, including clustering, density estimation, anomaly detection, image and speech processing, and