TLDRai.com Too Long; Didn't Read AI TLDWai.com Too Long; Didn't Watch AI
Manaova famintinana tsy misy fetra miaraka amin'ny AI!
Havaozina ho PRO US$ 7.0/m
Tsy misy fiasa voafetra

Introduction to Machine Learning: Module 6.9 GMM-EM hyper-parameter tuning

The speaker is discussing the use of Bayesian Information Criterion (BIC) in Gaussian Mixture Model Expectation-Maximization (GMM-EM) clustering. The BIC measures how well a model fits the data, and it helps determine the number of clusters in a dataset. GMM-EM can capture differences in probability among clusters, which can impact the choice of the number of clusters. In contrast, K-means assumes equally likely clusters, while GMM-EM can encode probabilities of belonging to different clusters. The lecture highlights similarities and differences between these two clustering algorithms.
Ny mpampiasa PRO dia mahazo famintinana kalitao avo lenta
Havaozina ho PRO US$ 7.0/m
Tsy misy fiasa voafetra
Fintino ny horonan-tsary eo an-toerana Fintino ny video an-tserasera

Mahazoa vokatra tsara kokoa miaraka amin'ny endri-javatra maro kokoa

Lasa PRO


Famintinana mifandraika